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You searched for `subject:(high dimensional data)`

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267 total matches.

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- 2017 – 2021 (114)
- 2012 – 2016 (125)
- 2007 – 2011 (34)

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- Statistics (36)
- Biostatistics (20)

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- PhD (129)
- Docteur es (16)
- MS (10)

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1. Freyaldenhoven, Simon. Essays on Factor Models and Latent Variables in Economics.

Degree: Department of Economics, 2018, Brown University

URL: https://repository.library.brown.edu/studio/item/bdr:792643/

► This dissertation examines the modeling of latent variables in economics in a variety of settings. The first two chapters contribute to the growing body of…
(more)

Subjects/Keywords: high dimensional data

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APA · Chicago · MLA · Vancouver · CSE | Export to Zotero / EndNote / Reference Manager

APA (6^{th} Edition):

Freyaldenhoven, S. (2018). Essays on Factor Models and Latent Variables in Economics. (Thesis). Brown University. Retrieved from https://repository.library.brown.edu/studio/item/bdr:792643/

Note: this citation may be lacking information needed for this citation format:

Not specified: Masters Thesis or Doctoral Dissertation

Chicago Manual of Style (16^{th} Edition):

Freyaldenhoven, Simon. “Essays on Factor Models and Latent Variables in Economics.” 2018. Thesis, Brown University. Accessed April 18, 2021. https://repository.library.brown.edu/studio/item/bdr:792643/.

Note: this citation may be lacking information needed for this citation format:

Not specified: Masters Thesis or Doctoral Dissertation

MLA Handbook (7^{th} Edition):

Freyaldenhoven, Simon. “Essays on Factor Models and Latent Variables in Economics.” 2018. Web. 18 Apr 2021.

Vancouver:

Freyaldenhoven S. Essays on Factor Models and Latent Variables in Economics. [Internet] [Thesis]. Brown University; 2018. [cited 2021 Apr 18]. Available from: https://repository.library.brown.edu/studio/item/bdr:792643/.

Note: this citation may be lacking information needed for this citation format:

Not specified: Masters Thesis or Doctoral Dissertation

Council of Science Editors:

Freyaldenhoven S. Essays on Factor Models and Latent Variables in Economics. [Thesis]. Brown University; 2018. Available from: https://repository.library.brown.edu/studio/item/bdr:792643/

Not specified: Masters Thesis or Doctoral Dissertation

University of Illinois – Urbana-Champaign

2.
Wang, Runmin.
Statistical inference for *high*-*dimensional* *data* via U-statistcs.

Degree: PhD, Statistics, 2020, University of Illinois – Urbana-Champaign

URL: http://hdl.handle.net/2142/108476

► Owing to the advances in the science and technology, there is a surge of interest in *high*-*dimensional* *data*. Many methods developed in low or fixed…
(more)

Subjects/Keywords: High-dimensional data; U-statistics

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APA (6^{th} Edition):

Wang, R. (2020). Statistical inference for high-dimensional data via U-statistcs. (Doctoral Dissertation). University of Illinois – Urbana-Champaign. Retrieved from http://hdl.handle.net/2142/108476

Chicago Manual of Style (16^{th} Edition):

Wang, Runmin. “Statistical inference for high-dimensional data via U-statistcs.” 2020. Doctoral Dissertation, University of Illinois – Urbana-Champaign. Accessed April 18, 2021. http://hdl.handle.net/2142/108476.

MLA Handbook (7^{th} Edition):

Wang, Runmin. “Statistical inference for high-dimensional data via U-statistcs.” 2020. Web. 18 Apr 2021.

Vancouver:

Wang R. Statistical inference for high-dimensional data via U-statistcs. [Internet] [Doctoral dissertation]. University of Illinois – Urbana-Champaign; 2020. [cited 2021 Apr 18]. Available from: http://hdl.handle.net/2142/108476.

Council of Science Editors:

Wang R. Statistical inference for high-dimensional data via U-statistcs. [Doctoral Dissertation]. University of Illinois – Urbana-Champaign; 2020. Available from: http://hdl.handle.net/2142/108476

University of Alberta

3. Fedoruk, John P. Dimensionality Reduction via the Johnson and Lindenstrauss Lemma: Mathematical and Computational Improvements.

Degree: MS, Department of Mathematical and Statistical Sciences, 2016, University of Alberta

URL: https://era.library.ualberta.ca/files/cm039k5065

► In an increasingly *data*-driven society, there is a growing need to simplify *high*-*dimensional* *data* sets. Over the course of the past three decades, the Johnson…
(more)

Subjects/Keywords: Dimensionality Reduction; High Dimensional Data; Johnson Lindenstrauss

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APA (6^{th} Edition):

Fedoruk, J. P. (2016). Dimensionality Reduction via the Johnson and Lindenstrauss Lemma: Mathematical and Computational Improvements. (Masters Thesis). University of Alberta. Retrieved from https://era.library.ualberta.ca/files/cm039k5065

Chicago Manual of Style (16^{th} Edition):

Fedoruk, John P. “Dimensionality Reduction via the Johnson and Lindenstrauss Lemma: Mathematical and Computational Improvements.” 2016. Masters Thesis, University of Alberta. Accessed April 18, 2021. https://era.library.ualberta.ca/files/cm039k5065.

MLA Handbook (7^{th} Edition):

Fedoruk, John P. “Dimensionality Reduction via the Johnson and Lindenstrauss Lemma: Mathematical and Computational Improvements.” 2016. Web. 18 Apr 2021.

Vancouver:

Fedoruk JP. Dimensionality Reduction via the Johnson and Lindenstrauss Lemma: Mathematical and Computational Improvements. [Internet] [Masters thesis]. University of Alberta; 2016. [cited 2021 Apr 18]. Available from: https://era.library.ualberta.ca/files/cm039k5065.

Council of Science Editors:

Fedoruk JP. Dimensionality Reduction via the Johnson and Lindenstrauss Lemma: Mathematical and Computational Improvements. [Masters Thesis]. University of Alberta; 2016. Available from: https://era.library.ualberta.ca/files/cm039k5065

University of Michigan

4.
Qian, Cheng.
Some Advances on Modeling *High*-*Dimensional* *Data* with Complex Structures.

Degree: PhD, Statistics, 2017, University of Michigan

URL: http://hdl.handle.net/2027.42/140828

► Recent advances in technology have created an abundance of *high*-*dimensional* *data* and made its analysis possible. These *data* require new, computationally efficient methodology and new…
(more)

Subjects/Keywords: High-Dimensional; Statistics and Numeric Data; Science

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APA (6^{th} Edition):

Qian, C. (2017). Some Advances on Modeling High-Dimensional Data with Complex Structures. (Doctoral Dissertation). University of Michigan. Retrieved from http://hdl.handle.net/2027.42/140828

Chicago Manual of Style (16^{th} Edition):

Qian, Cheng. “Some Advances on Modeling High-Dimensional Data with Complex Structures.” 2017. Doctoral Dissertation, University of Michigan. Accessed April 18, 2021. http://hdl.handle.net/2027.42/140828.

MLA Handbook (7^{th} Edition):

Qian, Cheng. “Some Advances on Modeling High-Dimensional Data with Complex Structures.” 2017. Web. 18 Apr 2021.

Vancouver:

Qian C. Some Advances on Modeling High-Dimensional Data with Complex Structures. [Internet] [Doctoral dissertation]. University of Michigan; 2017. [cited 2021 Apr 18]. Available from: http://hdl.handle.net/2027.42/140828.

Council of Science Editors:

Qian C. Some Advances on Modeling High-Dimensional Data with Complex Structures. [Doctoral Dissertation]. University of Michigan; 2017. Available from: http://hdl.handle.net/2027.42/140828

Delft University of Technology

5.
Grisel, Bastiaan (author).
The analysis of three-*dimensional* embeddings in Virtual Reality.

Degree: 2018, Delft University of Technology

URL: http://resolver.tudelft.nl/uuid:afad36f5-64c7-4969-9615-93d89b43e65f

►

Dimensionality reduction algorithms transform *high*-*dimensional* datasets with many attributes per observation into lower-*dimensional* representations (called embeddings) such that the structure of the dataset is maintained…
(more)

Subjects/Keywords: virtual; reality; embedding; visualisation; data; high-dimensional

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APA · Chicago · MLA · Vancouver · CSE | Export to Zotero / EndNote / Reference Manager

APA (6^{th} Edition):

Grisel, B. (. (2018). The analysis of three-dimensional embeddings in Virtual Reality. (Masters Thesis). Delft University of Technology. Retrieved from http://resolver.tudelft.nl/uuid:afad36f5-64c7-4969-9615-93d89b43e65f

Chicago Manual of Style (16^{th} Edition):

Grisel, Bastiaan (author). “The analysis of three-dimensional embeddings in Virtual Reality.” 2018. Masters Thesis, Delft University of Technology. Accessed April 18, 2021. http://resolver.tudelft.nl/uuid:afad36f5-64c7-4969-9615-93d89b43e65f.

MLA Handbook (7^{th} Edition):

Grisel, Bastiaan (author). “The analysis of three-dimensional embeddings in Virtual Reality.” 2018. Web. 18 Apr 2021.

Vancouver:

Grisel B(. The analysis of three-dimensional embeddings in Virtual Reality. [Internet] [Masters thesis]. Delft University of Technology; 2018. [cited 2021 Apr 18]. Available from: http://resolver.tudelft.nl/uuid:afad36f5-64c7-4969-9615-93d89b43e65f.

Council of Science Editors:

Grisel B(. The analysis of three-dimensional embeddings in Virtual Reality. [Masters Thesis]. Delft University of Technology; 2018. Available from: http://resolver.tudelft.nl/uuid:afad36f5-64c7-4969-9615-93d89b43e65f

University of Minnesota

6. Ye, Changqing. Network selection, information filtering and scalable computation.

Degree: PhD, Statistics, 2014, University of Minnesota

URL: http://hdl.handle.net/11299/172631

► This dissertation explores two application scenarios of sparsity pursuit method on large scale *data* sets. The first scenario is classification and regression in analyzing *high*…
(more)

Subjects/Keywords: High dimensional data; Machine learning; Recommendation; Statistics

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APA · Chicago · MLA · Vancouver · CSE | Export to Zotero / EndNote / Reference Manager

APA (6^{th} Edition):

Ye, C. (2014). Network selection, information filtering and scalable computation. (Doctoral Dissertation). University of Minnesota. Retrieved from http://hdl.handle.net/11299/172631

Chicago Manual of Style (16^{th} Edition):

Ye, Changqing. “Network selection, information filtering and scalable computation.” 2014. Doctoral Dissertation, University of Minnesota. Accessed April 18, 2021. http://hdl.handle.net/11299/172631.

MLA Handbook (7^{th} Edition):

Ye, Changqing. “Network selection, information filtering and scalable computation.” 2014. Web. 18 Apr 2021.

Vancouver:

Ye C. Network selection, information filtering and scalable computation. [Internet] [Doctoral dissertation]. University of Minnesota; 2014. [cited 2021 Apr 18]. Available from: http://hdl.handle.net/11299/172631.

Council of Science Editors:

Ye C. Network selection, information filtering and scalable computation. [Doctoral Dissertation]. University of Minnesota; 2014. Available from: http://hdl.handle.net/11299/172631

Massey University

7.
Ullah, Insha.
Contributions to *high*-*dimensional* *data* analysis : some applications of the regularized covariance matrices : a thesis submitted in partial fulfilment of the requirements for the degree of Doctor of Philosophy in Statistics at Massey University, Albany, New Zealand
.

Degree: 2015, Massey University

URL: http://hdl.handle.net/10179/6608

► *High*-*dimensional* *data* sets, particularly those where the number of variables exceeds the number of observations, are now common in many *subject* areas including genetics, ecology,…
(more)

Subjects/Keywords: Multivariate analysis; High-dimensional data; Covariance

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APA · Chicago · MLA · Vancouver · CSE | Export to Zotero / EndNote / Reference Manager

APA (6^{th} Edition):

Ullah, I. (2015). Contributions to high-dimensional data analysis : some applications of the regularized covariance matrices : a thesis submitted in partial fulfilment of the requirements for the degree of Doctor of Philosophy in Statistics at Massey University, Albany, New Zealand . (Thesis). Massey University. Retrieved from http://hdl.handle.net/10179/6608

Not specified: Masters Thesis or Doctoral Dissertation

Chicago Manual of Style (16^{th} Edition):

Ullah, Insha. “Contributions to high-dimensional data analysis : some applications of the regularized covariance matrices : a thesis submitted in partial fulfilment of the requirements for the degree of Doctor of Philosophy in Statistics at Massey University, Albany, New Zealand .” 2015. Thesis, Massey University. Accessed April 18, 2021. http://hdl.handle.net/10179/6608.

Not specified: Masters Thesis or Doctoral Dissertation

MLA Handbook (7^{th} Edition):

Ullah, Insha. “Contributions to high-dimensional data analysis : some applications of the regularized covariance matrices : a thesis submitted in partial fulfilment of the requirements for the degree of Doctor of Philosophy in Statistics at Massey University, Albany, New Zealand .” 2015. Web. 18 Apr 2021.

Vancouver:

Ullah I. Contributions to high-dimensional data analysis : some applications of the regularized covariance matrices : a thesis submitted in partial fulfilment of the requirements for the degree of Doctor of Philosophy in Statistics at Massey University, Albany, New Zealand . [Internet] [Thesis]. Massey University; 2015. [cited 2021 Apr 18]. Available from: http://hdl.handle.net/10179/6608.

Not specified: Masters Thesis or Doctoral Dissertation

Council of Science Editors:

Ullah I. Contributions to high-dimensional data analysis : some applications of the regularized covariance matrices : a thesis submitted in partial fulfilment of the requirements for the degree of Doctor of Philosophy in Statistics at Massey University, Albany, New Zealand . [Thesis]. Massey University; 2015. Available from: http://hdl.handle.net/10179/6608

Not specified: Masters Thesis or Doctoral Dissertation

Virginia Tech

8.
Blake, Patrick Michael.
Biclustering and Visualization of *High* *Dimensional* *Data* using VIsual Statistical *Data* Analyzer.

Degree: MS, Electrical Engineering, 2019, Virginia Tech

URL: http://hdl.handle.net/10919/87392

► Many *data* sets have too many features for conventional pattern recognition techniques to work properly. This thesis investigates techniques that alleviate these difficulties. One such…
(more)

Subjects/Keywords: high-dimensional data; biclustering; VISDA; VISDApy

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APA · Chicago · MLA · Vancouver · CSE | Export to Zotero / EndNote / Reference Manager

APA (6^{th} Edition):

Blake, P. M. (2019). Biclustering and Visualization of High Dimensional Data using VIsual Statistical Data Analyzer. (Masters Thesis). Virginia Tech. Retrieved from http://hdl.handle.net/10919/87392

Chicago Manual of Style (16^{th} Edition):

Blake, Patrick Michael. “Biclustering and Visualization of High Dimensional Data using VIsual Statistical Data Analyzer.” 2019. Masters Thesis, Virginia Tech. Accessed April 18, 2021. http://hdl.handle.net/10919/87392.

MLA Handbook (7^{th} Edition):

Blake, Patrick Michael. “Biclustering and Visualization of High Dimensional Data using VIsual Statistical Data Analyzer.” 2019. Web. 18 Apr 2021.

Vancouver:

Blake PM. Biclustering and Visualization of High Dimensional Data using VIsual Statistical Data Analyzer. [Internet] [Masters thesis]. Virginia Tech; 2019. [cited 2021 Apr 18]. Available from: http://hdl.handle.net/10919/87392.

Council of Science Editors:

Blake PM. Biclustering and Visualization of High Dimensional Data using VIsual Statistical Data Analyzer. [Masters Thesis]. Virginia Tech; 2019. Available from: http://hdl.handle.net/10919/87392

University of Minnesota

9. Datta, Abhirup. Statistical Methods for Large Complex Datasets.

Degree: PhD, Biostatistics, 2016, University of Minnesota

URL: http://hdl.handle.net/11299/199089

► Modern technological advancements have enabled massive-scale collection, processing and storage of information triggering the onset of the `big *data*' era where in every two days…
(more)

Subjects/Keywords: Big data; High dimensional data; Large spatial data

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APA · Chicago · MLA · Vancouver · CSE | Export to Zotero / EndNote / Reference Manager

APA (6^{th} Edition):

Datta, A. (2016). Statistical Methods for Large Complex Datasets. (Doctoral Dissertation). University of Minnesota. Retrieved from http://hdl.handle.net/11299/199089

Chicago Manual of Style (16^{th} Edition):

Datta, Abhirup. “Statistical Methods for Large Complex Datasets.” 2016. Doctoral Dissertation, University of Minnesota. Accessed April 18, 2021. http://hdl.handle.net/11299/199089.

MLA Handbook (7^{th} Edition):

Datta, Abhirup. “Statistical Methods for Large Complex Datasets.” 2016. Web. 18 Apr 2021.

Vancouver:

Datta A. Statistical Methods for Large Complex Datasets. [Internet] [Doctoral dissertation]. University of Minnesota; 2016. [cited 2021 Apr 18]. Available from: http://hdl.handle.net/11299/199089.

Council of Science Editors:

Datta A. Statistical Methods for Large Complex Datasets. [Doctoral Dissertation]. University of Minnesota; 2016. Available from: http://hdl.handle.net/11299/199089

University of Arizona

10.
Washburn, Ammon.
* High*-Confidence Learning from Uncertain

Degree: 2018, University of Arizona

URL: http://hdl.handle.net/10150/631476

► Some of the most challenging issues in big *data* are size, scalability and reliability. Big *data*, such as pictures, videos, and text, have innate structure…
(more)

Subjects/Keywords: data classification; data uncertainty; high dimensional data; machine learning; optimization

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APA · Chicago · MLA · Vancouver · CSE | Export to Zotero / EndNote / Reference Manager

APA (6^{th} Edition):

Washburn, A. (2018). High-Confidence Learning from Uncertain Data with High Dimensionality . (Doctoral Dissertation). University of Arizona. Retrieved from http://hdl.handle.net/10150/631476

Chicago Manual of Style (16^{th} Edition):

Washburn, Ammon. “High-Confidence Learning from Uncertain Data with High Dimensionality .” 2018. Doctoral Dissertation, University of Arizona. Accessed April 18, 2021. http://hdl.handle.net/10150/631476.

MLA Handbook (7^{th} Edition):

Washburn, Ammon. “High-Confidence Learning from Uncertain Data with High Dimensionality .” 2018. Web. 18 Apr 2021.

Vancouver:

Washburn A. High-Confidence Learning from Uncertain Data with High Dimensionality . [Internet] [Doctoral dissertation]. University of Arizona; 2018. [cited 2021 Apr 18]. Available from: http://hdl.handle.net/10150/631476.

Council of Science Editors:

Washburn A. High-Confidence Learning from Uncertain Data with High Dimensionality . [Doctoral Dissertation]. University of Arizona; 2018. Available from: http://hdl.handle.net/10150/631476

University of California – Riverside

11.
Zakaria, Jesin.
Developing Efficient Algorithms for *Data* Mining Large Scale *High* *Dimensional* * Data*.

Degree: Computer Science, 2013, University of California – Riverside

URL: http://www.escholarship.org/uc/item/660316zp

► *Data* mining and knowledge discovery has attracted a great deal of attention in information technology in recent years. The rapid progress of computer hardware technology…
(more)

Subjects/Keywords: Computer science; Clustering; Data Mining; High Dimensional Data; Scalable; Time Series

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APA (6^{th} Edition):

Zakaria, J. (2013). Developing Efficient Algorithms for Data Mining Large Scale High Dimensional Data. (Thesis). University of California – Riverside. Retrieved from http://www.escholarship.org/uc/item/660316zp

Not specified: Masters Thesis or Doctoral Dissertation

Chicago Manual of Style (16^{th} Edition):

Zakaria, Jesin. “Developing Efficient Algorithms for Data Mining Large Scale High Dimensional Data.” 2013. Thesis, University of California – Riverside. Accessed April 18, 2021. http://www.escholarship.org/uc/item/660316zp.

Not specified: Masters Thesis or Doctoral Dissertation

MLA Handbook (7^{th} Edition):

Zakaria, Jesin. “Developing Efficient Algorithms for Data Mining Large Scale High Dimensional Data.” 2013. Web. 18 Apr 2021.

Vancouver:

Zakaria J. Developing Efficient Algorithms for Data Mining Large Scale High Dimensional Data. [Internet] [Thesis]. University of California – Riverside; 2013. [cited 2021 Apr 18]. Available from: http://www.escholarship.org/uc/item/660316zp.

Not specified: Masters Thesis or Doctoral Dissertation

Council of Science Editors:

Zakaria J. Developing Efficient Algorithms for Data Mining Large Scale High Dimensional Data. [Thesis]. University of California – Riverside; 2013. Available from: http://www.escholarship.org/uc/item/660316zp

Not specified: Masters Thesis or Doctoral Dissertation

Tulane University

12.
Qu, Zhe.
* High*-

Degree: 2019, Tulane University

URL: https://digitallibrary.tulane.edu/islandora/object/tulane:106916

►

Modern biomedical studies often collect multiple types of *high*-*dimensional* *data* on a common set of objects. A representative model for the integrative analysis of…
(more)

Subjects/Keywords: High-dimensional data analysis; Data integration; Canonical correlation analysis

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APA · Chicago · MLA · Vancouver · CSE | Export to Zotero / EndNote / Reference Manager

APA (6^{th} Edition):

Qu, Z. (2019). High-dimensional statistical data integration. (Thesis). Tulane University. Retrieved from https://digitallibrary.tulane.edu/islandora/object/tulane:106916

Not specified: Masters Thesis or Doctoral Dissertation

Chicago Manual of Style (16^{th} Edition):

Qu, Zhe. “High-dimensional statistical data integration.” 2019. Thesis, Tulane University. Accessed April 18, 2021. https://digitallibrary.tulane.edu/islandora/object/tulane:106916.

Not specified: Masters Thesis or Doctoral Dissertation

MLA Handbook (7^{th} Edition):

Qu, Zhe. “High-dimensional statistical data integration.” 2019. Web. 18 Apr 2021.

Vancouver:

Qu Z. High-dimensional statistical data integration. [Internet] [Thesis]. Tulane University; 2019. [cited 2021 Apr 18]. Available from: https://digitallibrary.tulane.edu/islandora/object/tulane:106916.

Not specified: Masters Thesis or Doctoral Dissertation

Council of Science Editors:

Qu Z. High-dimensional statistical data integration. [Thesis]. Tulane University; 2019. Available from: https://digitallibrary.tulane.edu/islandora/object/tulane:106916

Not specified: Masters Thesis or Doctoral Dissertation

University of Adelaide

13.
Conway, Annie.
Clustering of proteomics imaging mass spectrometry * data*.

Degree: 2016, University of Adelaide

URL: http://hdl.handle.net/2440/112036

► This thesis presents a toolbox for the exploratory analysis of multivariate *data*, in particular proteomics imaging mass spectrometry *data*. Typically such *data* consist of 15000…
(more)

Subjects/Keywords: clustering; proteomics; multivariate data analysis; high-dimensional data analysis; machine learning

Record Details Similar Records

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APA · Chicago · MLA · Vancouver · CSE | Export to Zotero / EndNote / Reference Manager

APA (6^{th} Edition):

Conway, A. (2016). Clustering of proteomics imaging mass spectrometry data. (Thesis). University of Adelaide. Retrieved from http://hdl.handle.net/2440/112036

Not specified: Masters Thesis or Doctoral Dissertation

Chicago Manual of Style (16^{th} Edition):

Conway, Annie. “Clustering of proteomics imaging mass spectrometry data.” 2016. Thesis, University of Adelaide. Accessed April 18, 2021. http://hdl.handle.net/2440/112036.

Not specified: Masters Thesis or Doctoral Dissertation

MLA Handbook (7^{th} Edition):

Conway, Annie. “Clustering of proteomics imaging mass spectrometry data.” 2016. Web. 18 Apr 2021.

Vancouver:

Conway A. Clustering of proteomics imaging mass spectrometry data. [Internet] [Thesis]. University of Adelaide; 2016. [cited 2021 Apr 18]. Available from: http://hdl.handle.net/2440/112036.

Not specified: Masters Thesis or Doctoral Dissertation

Council of Science Editors:

Conway A. Clustering of proteomics imaging mass spectrometry data. [Thesis]. University of Adelaide; 2016. Available from: http://hdl.handle.net/2440/112036

Not specified: Masters Thesis or Doctoral Dissertation

University of Minnesota

14.
O'Connell, Michael.
Integrative Analyses for Multi-source *Data* with Multiple Shared Dimensions.

Degree: PhD, Biostatistics, 2018, University of Minnesota

URL: http://hdl.handle.net/11299/200286

► *High* *dimensional* *data* consists of matrices with a large number of features and is common across many fields of study, including genetics, imaging, and toxicology.…
(more)

Subjects/Keywords: data integration; high-dimensional data; matrix decomposition; multi-source

Record Details Similar Records

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APA · Chicago · MLA · Vancouver · CSE | Export to Zotero / EndNote / Reference Manager

APA (6^{th} Edition):

O'Connell, M. (2018). Integrative Analyses for Multi-source Data with Multiple Shared Dimensions. (Doctoral Dissertation). University of Minnesota. Retrieved from http://hdl.handle.net/11299/200286

Chicago Manual of Style (16^{th} Edition):

O'Connell, Michael. “Integrative Analyses for Multi-source Data with Multiple Shared Dimensions.” 2018. Doctoral Dissertation, University of Minnesota. Accessed April 18, 2021. http://hdl.handle.net/11299/200286.

MLA Handbook (7^{th} Edition):

O'Connell, Michael. “Integrative Analyses for Multi-source Data with Multiple Shared Dimensions.” 2018. Web. 18 Apr 2021.

Vancouver:

O'Connell M. Integrative Analyses for Multi-source Data with Multiple Shared Dimensions. [Internet] [Doctoral dissertation]. University of Minnesota; 2018. [cited 2021 Apr 18]. Available from: http://hdl.handle.net/11299/200286.

Council of Science Editors:

O'Connell M. Integrative Analyses for Multi-source Data with Multiple Shared Dimensions. [Doctoral Dissertation]. University of Minnesota; 2018. Available from: http://hdl.handle.net/11299/200286

University of Southern California

15.
Ren, Jie.
Robust feature selection with penalized regression in
imbalanced *high* *dimensional* * data*.

Degree: PhD, Statistical Genetics and Genetic Epidemiology, 2014, University of Southern California

URL: http://digitallibrary.usc.edu/cdm/compoundobject/collection/p15799coll3/id/443080/rec/5620

► This work is motivated by an ongoing USC/Illumina study of prostate cancer recurrence after radical prostatectomy. The study generated gene expression *data* for nearly thirty…
(more)

Subjects/Keywords: feature selection; penalized regression; imbalanced data; high dimensional data; stability selection

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APA · Chicago · MLA · Vancouver · CSE | Export to Zotero / EndNote / Reference Manager

APA (6^{th} Edition):

Ren, J. (2014). Robust feature selection with penalized regression in imbalanced high dimensional data. (Doctoral Dissertation). University of Southern California. Retrieved from http://digitallibrary.usc.edu/cdm/compoundobject/collection/p15799coll3/id/443080/rec/5620

Chicago Manual of Style (16^{th} Edition):

Ren, Jie. “Robust feature selection with penalized regression in imbalanced high dimensional data.” 2014. Doctoral Dissertation, University of Southern California. Accessed April 18, 2021. http://digitallibrary.usc.edu/cdm/compoundobject/collection/p15799coll3/id/443080/rec/5620.

MLA Handbook (7^{th} Edition):

Ren, Jie. “Robust feature selection with penalized regression in imbalanced high dimensional data.” 2014. Web. 18 Apr 2021.

Vancouver:

Ren J. Robust feature selection with penalized regression in imbalanced high dimensional data. [Internet] [Doctoral dissertation]. University of Southern California; 2014. [cited 2021 Apr 18]. Available from: http://digitallibrary.usc.edu/cdm/compoundobject/collection/p15799coll3/id/443080/rec/5620.

Council of Science Editors:

Ren J. Robust feature selection with penalized regression in imbalanced high dimensional data. [Doctoral Dissertation]. University of Southern California; 2014. Available from: http://digitallibrary.usc.edu/cdm/compoundobject/collection/p15799coll3/id/443080/rec/5620

16.
Waddell, Adrian.
Interactive Visualization and Exploration of *High*-*Dimensional* * Data*.

Degree: 2016, University of Waterloo

URL: http://hdl.handle.net/10012/10188

► Visualizing *data* is an essential part of good statistical practice. Plots are useful for revealing structure in the *data*, checking model assumptions, detecting outliers and…
(more)

Subjects/Keywords: Interactive Data Visualization; High-dimensional Data; Statistical Visualization

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APA · Chicago · MLA · Vancouver · CSE | Export to Zotero / EndNote / Reference Manager

APA (6^{th} Edition):

Waddell, A. (2016). Interactive Visualization and Exploration of High-Dimensional Data. (Thesis). University of Waterloo. Retrieved from http://hdl.handle.net/10012/10188

Not specified: Masters Thesis or Doctoral Dissertation

Chicago Manual of Style (16^{th} Edition):

Waddell, Adrian. “Interactive Visualization and Exploration of High-Dimensional Data.” 2016. Thesis, University of Waterloo. Accessed April 18, 2021. http://hdl.handle.net/10012/10188.

Not specified: Masters Thesis or Doctoral Dissertation

MLA Handbook (7^{th} Edition):

Waddell, Adrian. “Interactive Visualization and Exploration of High-Dimensional Data.” 2016. Web. 18 Apr 2021.

Vancouver:

Waddell A. Interactive Visualization and Exploration of High-Dimensional Data. [Internet] [Thesis]. University of Waterloo; 2016. [cited 2021 Apr 18]. Available from: http://hdl.handle.net/10012/10188.

Not specified: Masters Thesis or Doctoral Dissertation

Council of Science Editors:

Waddell A. Interactive Visualization and Exploration of High-Dimensional Data. [Thesis]. University of Waterloo; 2016. Available from: http://hdl.handle.net/10012/10188

Not specified: Masters Thesis or Doctoral Dissertation

Temple University

17.
Lou, Qiang.
LEARNING FROM INCOMPLETE *HIGH*-*DIMENSIONAL* * DATA*.

Degree: PhD, 2013, Temple University

URL: http://digital.library.temple.edu/u?/p245801coll10,214785

►

Computer and Information Science

*Data* sets with irrelevant and redundant features and large fraction of missing values are common in the real life application. Learning…
(more)

Subjects/Keywords: Computer science; data mining; feature selection; high dimensional data; incomplete data; machine learning

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APA · Chicago · MLA · Vancouver · CSE | Export to Zotero / EndNote / Reference Manager

APA (6^{th} Edition):

Lou, Q. (2013). LEARNING FROM INCOMPLETE HIGH-DIMENSIONAL DATA. (Doctoral Dissertation). Temple University. Retrieved from http://digital.library.temple.edu/u?/p245801coll10,214785

Chicago Manual of Style (16^{th} Edition):

Lou, Qiang. “LEARNING FROM INCOMPLETE HIGH-DIMENSIONAL DATA.” 2013. Doctoral Dissertation, Temple University. Accessed April 18, 2021. http://digital.library.temple.edu/u?/p245801coll10,214785.

MLA Handbook (7^{th} Edition):

Lou, Qiang. “LEARNING FROM INCOMPLETE HIGH-DIMENSIONAL DATA.” 2013. Web. 18 Apr 2021.

Vancouver:

Lou Q. LEARNING FROM INCOMPLETE HIGH-DIMENSIONAL DATA. [Internet] [Doctoral dissertation]. Temple University; 2013. [cited 2021 Apr 18]. Available from: http://digital.library.temple.edu/u?/p245801coll10,214785.

Council of Science Editors:

Lou Q. LEARNING FROM INCOMPLETE HIGH-DIMENSIONAL DATA. [Doctoral Dissertation]. Temple University; 2013. Available from: http://digital.library.temple.edu/u?/p245801coll10,214785

18.
Shou, Haochang.
Statistical Methods for Structured Multilevel Functional *Data*: Estimation and Reliability.

Degree: 2014, Johns Hopkins University

URL: http://jhir.library.jhu.edu/handle/1774.2/37867

► The thesis investigates a specific type of functional *data* with multilevel structures induced by complex experimental designs. Novel statistical methods based on principal component analysis…
(more)

Subjects/Keywords: functional data analysis; multilevel and structured data; high-dimensional data; imaging reproducibility; shrinkage estimation

Record Details Similar Records

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APA · Chicago · MLA · Vancouver · CSE | Export to Zotero / EndNote / Reference Manager

APA (6^{th} Edition):

Shou, H. (2014). Statistical Methods for Structured Multilevel Functional Data: Estimation and Reliability. (Thesis). Johns Hopkins University. Retrieved from http://jhir.library.jhu.edu/handle/1774.2/37867

Not specified: Masters Thesis or Doctoral Dissertation

Chicago Manual of Style (16^{th} Edition):

Shou, Haochang. “Statistical Methods for Structured Multilevel Functional Data: Estimation and Reliability.” 2014. Thesis, Johns Hopkins University. Accessed April 18, 2021. http://jhir.library.jhu.edu/handle/1774.2/37867.

Not specified: Masters Thesis or Doctoral Dissertation

MLA Handbook (7^{th} Edition):

Shou, Haochang. “Statistical Methods for Structured Multilevel Functional Data: Estimation and Reliability.” 2014. Web. 18 Apr 2021.

Vancouver:

Shou H. Statistical Methods for Structured Multilevel Functional Data: Estimation and Reliability. [Internet] [Thesis]. Johns Hopkins University; 2014. [cited 2021 Apr 18]. Available from: http://jhir.library.jhu.edu/handle/1774.2/37867.

Not specified: Masters Thesis or Doctoral Dissertation

Council of Science Editors:

Shou H. Statistical Methods for Structured Multilevel Functional Data: Estimation and Reliability. [Thesis]. Johns Hopkins University; 2014. Available from: http://jhir.library.jhu.edu/handle/1774.2/37867

Not specified: Masters Thesis or Doctoral Dissertation

NSYSU

19.
Tai, Chiech-an.
An Automatic *Data* Clustering Algorithm based on Differential Evolution.

Degree: Master, Computer Science and Engineering, 2013, NSYSU

URL: http://etd.lib.nsysu.edu.tw/ETD-db/ETD-search/view_etd?URN=etd-0730113-152814

► As one of the traditional optimization problems, clustering still plays a vital role for the re-searches both theoretically and practically nowadays. Although many successful clustering…
(more)

Subjects/Keywords: automatic clustering; data clustering; high-dimensional dataset; histogram analysis; differential evolution

Record Details Similar Records

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APA · Chicago · MLA · Vancouver · CSE | Export to Zotero / EndNote / Reference Manager

APA (6^{th} Edition):

Tai, C. (2013). An Automatic Data Clustering Algorithm based on Differential Evolution. (Thesis). NSYSU. Retrieved from http://etd.lib.nsysu.edu.tw/ETD-db/ETD-search/view_etd?URN=etd-0730113-152814

Not specified: Masters Thesis or Doctoral Dissertation

Chicago Manual of Style (16^{th} Edition):

Tai, Chiech-an. “An Automatic Data Clustering Algorithm based on Differential Evolution.” 2013. Thesis, NSYSU. Accessed April 18, 2021. http://etd.lib.nsysu.edu.tw/ETD-db/ETD-search/view_etd?URN=etd-0730113-152814.

Not specified: Masters Thesis or Doctoral Dissertation

MLA Handbook (7^{th} Edition):

Tai, Chiech-an. “An Automatic Data Clustering Algorithm based on Differential Evolution.” 2013. Web. 18 Apr 2021.

Vancouver:

Tai C. An Automatic Data Clustering Algorithm based on Differential Evolution. [Internet] [Thesis]. NSYSU; 2013. [cited 2021 Apr 18]. Available from: http://etd.lib.nsysu.edu.tw/ETD-db/ETD-search/view_etd?URN=etd-0730113-152814.

Not specified: Masters Thesis or Doctoral Dissertation

Council of Science Editors:

Tai C. An Automatic Data Clustering Algorithm based on Differential Evolution. [Thesis]. NSYSU; 2013. Available from: http://etd.lib.nsysu.edu.tw/ETD-db/ETD-search/view_etd?URN=etd-0730113-152814

Not specified: Masters Thesis or Doctoral Dissertation

Tulane University

20.
Xu, Chao.
Hypothesis Testing for *High*-*Dimensional* Regression Under Extreme Phenotype Sampling of Continuous Traits.

Degree: 2018, Tulane University

URL: https://digitallibrary.tulane.edu/islandora/object/tulane:78817

►

Extreme phenotype sampling (EPS) is a broadly-used design to identify candidate genetic factors contributing to the variation of quantitative traits. By enriching the signals in… (more)

Subjects/Keywords: extreme sampling; high-dimensional regression; genetic data analysis

Record Details Similar Records

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APA · Chicago · MLA · Vancouver · CSE | Export to Zotero / EndNote / Reference Manager

APA (6^{th} Edition):

Xu, C. (2018). Hypothesis Testing for High-Dimensional Regression Under Extreme Phenotype Sampling of Continuous Traits. (Thesis). Tulane University. Retrieved from https://digitallibrary.tulane.edu/islandora/object/tulane:78817

Not specified: Masters Thesis or Doctoral Dissertation

Chicago Manual of Style (16^{th} Edition):

Xu, Chao. “Hypothesis Testing for High-Dimensional Regression Under Extreme Phenotype Sampling of Continuous Traits.” 2018. Thesis, Tulane University. Accessed April 18, 2021. https://digitallibrary.tulane.edu/islandora/object/tulane:78817.

Not specified: Masters Thesis or Doctoral Dissertation

MLA Handbook (7^{th} Edition):

Xu, Chao. “Hypothesis Testing for High-Dimensional Regression Under Extreme Phenotype Sampling of Continuous Traits.” 2018. Web. 18 Apr 2021.

Vancouver:

Xu C. Hypothesis Testing for High-Dimensional Regression Under Extreme Phenotype Sampling of Continuous Traits. [Internet] [Thesis]. Tulane University; 2018. [cited 2021 Apr 18]. Available from: https://digitallibrary.tulane.edu/islandora/object/tulane:78817.

Not specified: Masters Thesis or Doctoral Dissertation

Council of Science Editors:

Xu C. Hypothesis Testing for High-Dimensional Regression Under Extreme Phenotype Sampling of Continuous Traits. [Thesis]. Tulane University; 2018. Available from: https://digitallibrary.tulane.edu/islandora/object/tulane:78817

Not specified: Masters Thesis or Doctoral Dissertation

21.
Hwang, Sung Jin.
Geometric Representations of *High* *Dimensional* Random *Data*.

Degree: PhD, Electrical Engineering-Systems, 2012, University of Michigan

URL: http://hdl.handle.net/2027.42/96097

► This thesis introduces geometric representations relevant to the analysis of datasets of random vectors in *high* dimension. These representations are used to study the behavior…
(more)

Subjects/Keywords: High Dimensional Data; Engineering

…foundation to analyze and understand the practice. When random *data*
from a *high* *dimensional* space… …representations for *high*-*dimensional* *data* are based on linear
models. For example, principal component… …and Alfred O. Hero III (2012). “Shortest path
for *high*-*dimensional* *data*… …*dimensional* structure in the *data*. This thesis explores *data*
representations using diﬀerential… …analysis extends the idea and assumes the
*data* lies in some curved non-flat lower *dimensional*…

Record Details Similar Records

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APA · Chicago · MLA · Vancouver · CSE | Export to Zotero / EndNote / Reference Manager

APA (6^{th} Edition):

Hwang, S. J. (2012). Geometric Representations of High Dimensional Random Data. (Doctoral Dissertation). University of Michigan. Retrieved from http://hdl.handle.net/2027.42/96097

Chicago Manual of Style (16^{th} Edition):

Hwang, Sung Jin. “Geometric Representations of High Dimensional Random Data.” 2012. Doctoral Dissertation, University of Michigan. Accessed April 18, 2021. http://hdl.handle.net/2027.42/96097.

MLA Handbook (7^{th} Edition):

Hwang, Sung Jin. “Geometric Representations of High Dimensional Random Data.” 2012. Web. 18 Apr 2021.

Vancouver:

Hwang SJ. Geometric Representations of High Dimensional Random Data. [Internet] [Doctoral dissertation]. University of Michigan; 2012. [cited 2021 Apr 18]. Available from: http://hdl.handle.net/2027.42/96097.

Council of Science Editors:

Hwang SJ. Geometric Representations of High Dimensional Random Data. [Doctoral Dissertation]. University of Michigan; 2012. Available from: http://hdl.handle.net/2027.42/96097

University of Illinois – Urbana-Champaign

22. Ouyang, Yunbo. Scalable sparsity structure learning using Bayesian methods.

Degree: PhD, Statistics, 2018, University of Illinois – Urbana-Champaign

URL: http://hdl.handle.net/2142/101264

► Learning sparsity pattern in *high* dimension is a great challenge in both implementation and theory. In this thesis we develop scalable Bayesian algorithms based on…
(more)

Subjects/Keywords: Bayesian statistics; high-dimensional data analysis; variable selection

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APA · Chicago · MLA · Vancouver · CSE | Export to Zotero / EndNote / Reference Manager

APA (6^{th} Edition):

Ouyang, Y. (2018). Scalable sparsity structure learning using Bayesian methods. (Doctoral Dissertation). University of Illinois – Urbana-Champaign. Retrieved from http://hdl.handle.net/2142/101264

Chicago Manual of Style (16^{th} Edition):

Ouyang, Yunbo. “Scalable sparsity structure learning using Bayesian methods.” 2018. Doctoral Dissertation, University of Illinois – Urbana-Champaign. Accessed April 18, 2021. http://hdl.handle.net/2142/101264.

MLA Handbook (7^{th} Edition):

Ouyang, Yunbo. “Scalable sparsity structure learning using Bayesian methods.” 2018. Web. 18 Apr 2021.

Vancouver:

Ouyang Y. Scalable sparsity structure learning using Bayesian methods. [Internet] [Doctoral dissertation]. University of Illinois – Urbana-Champaign; 2018. [cited 2021 Apr 18]. Available from: http://hdl.handle.net/2142/101264.

Council of Science Editors:

Ouyang Y. Scalable sparsity structure learning using Bayesian methods. [Doctoral Dissertation]. University of Illinois – Urbana-Champaign; 2018. Available from: http://hdl.handle.net/2142/101264

Texas A&M University

23.
Song, Qifan.
Variable Selection for Ultra *High* *Dimensional* * Data*.

Degree: PhD, Statistics, 2014, Texas A&M University

URL: http://hdl.handle.net/1969.1/153224

► Variable selection plays an important role for the *high* *dimensional* *data* analysis. In this work, we first propose a Bayesian variable selection approach for ultra-*high*…
(more)

Subjects/Keywords: High Dimensional Variable Selection; Big Data; Penalized Likelihood Approach; Posterior Consistency

Record Details Similar Records

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APA · Chicago · MLA · Vancouver · CSE | Export to Zotero / EndNote / Reference Manager

APA (6^{th} Edition):

Song, Q. (2014). Variable Selection for Ultra High Dimensional Data. (Doctoral Dissertation). Texas A&M University. Retrieved from http://hdl.handle.net/1969.1/153224

Chicago Manual of Style (16^{th} Edition):

Song, Qifan. “Variable Selection for Ultra High Dimensional Data.” 2014. Doctoral Dissertation, Texas A&M University. Accessed April 18, 2021. http://hdl.handle.net/1969.1/153224.

MLA Handbook (7^{th} Edition):

Song, Qifan. “Variable Selection for Ultra High Dimensional Data.” 2014. Web. 18 Apr 2021.

Vancouver:

Song Q. Variable Selection for Ultra High Dimensional Data. [Internet] [Doctoral dissertation]. Texas A&M University; 2014. [cited 2021 Apr 18]. Available from: http://hdl.handle.net/1969.1/153224.

Council of Science Editors:

Song Q. Variable Selection for Ultra High Dimensional Data. [Doctoral Dissertation]. Texas A&M University; 2014. Available from: http://hdl.handle.net/1969.1/153224

Penn State University

24.
Guha Thakurta, Abhradeep.
Differentially Private Convex Optimization For Empirical Risk Minimization And *High*-*dimensional* Regression.

Degree: 2012, Penn State University

URL: https://submit-etda.libraries.psu.edu/catalog/16390

► Learning systems are the backbone of most web-scale advertisement and recommendation systems. Such systems rely on past inputs from users to decide on a particular…
(more)

Subjects/Keywords: Data Privacy; Differential Privacy; Machine Learning; High-dimensional Statistics; Sparse Regression

Record Details Similar Records

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APA (6^{th} Edition):

Guha Thakurta, A. (2012). Differentially Private Convex Optimization For Empirical Risk Minimization And High-dimensional Regression. (Thesis). Penn State University. Retrieved from https://submit-etda.libraries.psu.edu/catalog/16390

Not specified: Masters Thesis or Doctoral Dissertation

Chicago Manual of Style (16^{th} Edition):

Guha Thakurta, Abhradeep. “Differentially Private Convex Optimization For Empirical Risk Minimization And High-dimensional Regression.” 2012. Thesis, Penn State University. Accessed April 18, 2021. https://submit-etda.libraries.psu.edu/catalog/16390.

Not specified: Masters Thesis or Doctoral Dissertation

MLA Handbook (7^{th} Edition):

Guha Thakurta, Abhradeep. “Differentially Private Convex Optimization For Empirical Risk Minimization And High-dimensional Regression.” 2012. Web. 18 Apr 2021.

Vancouver:

Guha Thakurta A. Differentially Private Convex Optimization For Empirical Risk Minimization And High-dimensional Regression. [Internet] [Thesis]. Penn State University; 2012. [cited 2021 Apr 18]. Available from: https://submit-etda.libraries.psu.edu/catalog/16390.

Not specified: Masters Thesis or Doctoral Dissertation

Council of Science Editors:

Guha Thakurta A. Differentially Private Convex Optimization For Empirical Risk Minimization And High-dimensional Regression. [Thesis]. Penn State University; 2012. Available from: https://submit-etda.libraries.psu.edu/catalog/16390

Not specified: Masters Thesis or Doctoral Dissertation

Penn State University

25.
Chu, Wanghuan.
Feature Screening For Ultra-*high* *Dimensional* Longitudinal * Data*.

Degree: 2016, Penn State University

URL: https://submit-etda.libraries.psu.edu/catalog/3197xm04j

► *High* and ultrahigh *dimensional* *data* analysis is now receiving more and more attention in many scientific fields. Various variable selection methods have been proposed for…
(more)

Subjects/Keywords: Feature screening; ultra-high dimensional data; longitudinal genetic study

Record Details Similar Records

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APA · Chicago · MLA · Vancouver · CSE | Export to Zotero / EndNote / Reference Manager

APA (6^{th} Edition):

Chu, W. (2016). Feature Screening For Ultra-high Dimensional Longitudinal Data. (Thesis). Penn State University. Retrieved from https://submit-etda.libraries.psu.edu/catalog/3197xm04j

Not specified: Masters Thesis or Doctoral Dissertation

Chicago Manual of Style (16^{th} Edition):

Chu, Wanghuan. “Feature Screening For Ultra-high Dimensional Longitudinal Data.” 2016. Thesis, Penn State University. Accessed April 18, 2021. https://submit-etda.libraries.psu.edu/catalog/3197xm04j.

Not specified: Masters Thesis or Doctoral Dissertation

MLA Handbook (7^{th} Edition):

Chu, Wanghuan. “Feature Screening For Ultra-high Dimensional Longitudinal Data.” 2016. Web. 18 Apr 2021.

Vancouver:

Chu W. Feature Screening For Ultra-high Dimensional Longitudinal Data. [Internet] [Thesis]. Penn State University; 2016. [cited 2021 Apr 18]. Available from: https://submit-etda.libraries.psu.edu/catalog/3197xm04j.

Not specified: Masters Thesis or Doctoral Dissertation

Council of Science Editors:

Chu W. Feature Screening For Ultra-high Dimensional Longitudinal Data. [Thesis]. Penn State University; 2016. Available from: https://submit-etda.libraries.psu.edu/catalog/3197xm04j

Not specified: Masters Thesis or Doctoral Dissertation

Penn State University

26. Li, Jiahan. THE BAYESIAN LASSO, BAYESIAN SCAD AND BAYESIAN GROUP LASSO WITH APPLICATIONS TO GENOME-WIDE ASSOCIATION STUDIES .

Degree: 2011, Penn State University

URL: https://submit-etda.libraries.psu.edu/catalog/12143

► Recently, genome-wide association studies (GWAS) have successfully identified genes that may affect complex traits or diseases. However, the standard statistical tests for each single-nucleotide polymorphism…
(more)

Subjects/Keywords: lasso; variable selection; Bayesian approach; high-dimensional data

Record Details Similar Records

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APA · Chicago · MLA · Vancouver · CSE | Export to Zotero / EndNote / Reference Manager

APA (6^{th} Edition):

Li, J. (2011). THE BAYESIAN LASSO, BAYESIAN SCAD AND BAYESIAN GROUP LASSO WITH APPLICATIONS TO GENOME-WIDE ASSOCIATION STUDIES . (Thesis). Penn State University. Retrieved from https://submit-etda.libraries.psu.edu/catalog/12143

Not specified: Masters Thesis or Doctoral Dissertation

Chicago Manual of Style (16^{th} Edition):

Li, Jiahan. “THE BAYESIAN LASSO, BAYESIAN SCAD AND BAYESIAN GROUP LASSO WITH APPLICATIONS TO GENOME-WIDE ASSOCIATION STUDIES .” 2011. Thesis, Penn State University. Accessed April 18, 2021. https://submit-etda.libraries.psu.edu/catalog/12143.

Not specified: Masters Thesis or Doctoral Dissertation

MLA Handbook (7^{th} Edition):

Li, Jiahan. “THE BAYESIAN LASSO, BAYESIAN SCAD AND BAYESIAN GROUP LASSO WITH APPLICATIONS TO GENOME-WIDE ASSOCIATION STUDIES .” 2011. Web. 18 Apr 2021.

Vancouver:

Li J. THE BAYESIAN LASSO, BAYESIAN SCAD AND BAYESIAN GROUP LASSO WITH APPLICATIONS TO GENOME-WIDE ASSOCIATION STUDIES . [Internet] [Thesis]. Penn State University; 2011. [cited 2021 Apr 18]. Available from: https://submit-etda.libraries.psu.edu/catalog/12143.

Not specified: Masters Thesis or Doctoral Dissertation

Council of Science Editors:

Li J. THE BAYESIAN LASSO, BAYESIAN SCAD AND BAYESIAN GROUP LASSO WITH APPLICATIONS TO GENOME-WIDE ASSOCIATION STUDIES . [Thesis]. Penn State University; 2011. Available from: https://submit-etda.libraries.psu.edu/catalog/12143

Not specified: Masters Thesis or Doctoral Dissertation

University of California – San Diego

27.
Hou, Jue.
Modern Statistical Methods for Complex Survival * Data*.

Degree: Mathematics, 2019, University of California – San Diego

URL: http://www.escholarship.org/uc/item/2qj8m7vs

► With the booming of big complex *data*, various Statistical methods and *Data* Science techniques have been developed to retrieve valuable information from them.The progress is…
(more)

Subjects/Keywords: Mathematics; Statistics; Average treatment effect; High-dimensional data; Inference; Left-truncation

Record Details Similar Records

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APA · Chicago · MLA · Vancouver · CSE | Export to Zotero / EndNote / Reference Manager

APA (6^{th} Edition):

Hou, J. (2019). Modern Statistical Methods for Complex Survival Data. (Thesis). University of California – San Diego. Retrieved from http://www.escholarship.org/uc/item/2qj8m7vs

Not specified: Masters Thesis or Doctoral Dissertation

Chicago Manual of Style (16^{th} Edition):

Hou, Jue. “Modern Statistical Methods for Complex Survival Data.” 2019. Thesis, University of California – San Diego. Accessed April 18, 2021. http://www.escholarship.org/uc/item/2qj8m7vs.

Not specified: Masters Thesis or Doctoral Dissertation

MLA Handbook (7^{th} Edition):

Hou, Jue. “Modern Statistical Methods for Complex Survival Data.” 2019. Web. 18 Apr 2021.

Vancouver:

Hou J. Modern Statistical Methods for Complex Survival Data. [Internet] [Thesis]. University of California – San Diego; 2019. [cited 2021 Apr 18]. Available from: http://www.escholarship.org/uc/item/2qj8m7vs.

Not specified: Masters Thesis or Doctoral Dissertation

Council of Science Editors:

Hou J. Modern Statistical Methods for Complex Survival Data. [Thesis]. University of California – San Diego; 2019. Available from: http://www.escholarship.org/uc/item/2qj8m7vs

Not specified: Masters Thesis or Doctoral Dissertation

Victoria University of Wellington

28.
Tran, Binh Ngan.
Evolutionary Computation for Feature Manipulation in Classification on *High*-*dimensional* * Data*.

Degree: 2018, Victoria University of Wellington

URL: http://hdl.handle.net/10063/7078

► More and more *high*-*dimensional* *data* appears in machine learning, especially in classification tasks. With thousands of features, these datasets bring challenges to learning algorithms not…
(more)

Subjects/Keywords: Evolutionary Computation; Feature selection; Feature construction; Classification; High-dimensional data

Record Details Similar Records

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APA · Chicago · MLA · Vancouver · CSE | Export to Zotero / EndNote / Reference Manager

APA (6^{th} Edition):

Tran, B. N. (2018). Evolutionary Computation for Feature Manipulation in Classification on High-dimensional Data. (Doctoral Dissertation). Victoria University of Wellington. Retrieved from http://hdl.handle.net/10063/7078

Chicago Manual of Style (16^{th} Edition):

Tran, Binh Ngan. “Evolutionary Computation for Feature Manipulation in Classification on High-dimensional Data.” 2018. Doctoral Dissertation, Victoria University of Wellington. Accessed April 18, 2021. http://hdl.handle.net/10063/7078.

MLA Handbook (7^{th} Edition):

Tran, Binh Ngan. “Evolutionary Computation for Feature Manipulation in Classification on High-dimensional Data.” 2018. Web. 18 Apr 2021.

Vancouver:

Tran BN. Evolutionary Computation for Feature Manipulation in Classification on High-dimensional Data. [Internet] [Doctoral dissertation]. Victoria University of Wellington; 2018. [cited 2021 Apr 18]. Available from: http://hdl.handle.net/10063/7078.

Council of Science Editors:

Tran BN. Evolutionary Computation for Feature Manipulation in Classification on High-dimensional Data. [Doctoral Dissertation]. Victoria University of Wellington; 2018. Available from: http://hdl.handle.net/10063/7078

Harvard University

29.
Minnier, Jessica.
Inference and Prediction for *High* *Dimensional* *Data* via Penalized Regression and Kernel Machine Methods.

Degree: PhD, Biostatistics, 2012, Harvard University

URL: http://nrs.harvard.edu/urn-3:HUL.InstRepos:9367010

► Analysis of *high* *dimensional* *data* often seeks to identify a subset of important features and assess their effects on the outcome. Furthermore, the ultimate goal…
(more)

Subjects/Keywords: biostatistics; high dimensional data; kernel machine learning; prediction; statistical genetics; statistics

Record Details Similar Records

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APA · Chicago · MLA · Vancouver · CSE | Export to Zotero / EndNote / Reference Manager

APA (6^{th} Edition):

Minnier, J. (2012). Inference and Prediction for High Dimensional Data via Penalized Regression and Kernel Machine Methods. (Doctoral Dissertation). Harvard University. Retrieved from http://nrs.harvard.edu/urn-3:HUL.InstRepos:9367010

Chicago Manual of Style (16^{th} Edition):

Minnier, Jessica. “Inference and Prediction for High Dimensional Data via Penalized Regression and Kernel Machine Methods.” 2012. Doctoral Dissertation, Harvard University. Accessed April 18, 2021. http://nrs.harvard.edu/urn-3:HUL.InstRepos:9367010.

MLA Handbook (7^{th} Edition):

Minnier, Jessica. “Inference and Prediction for High Dimensional Data via Penalized Regression and Kernel Machine Methods.” 2012. Web. 18 Apr 2021.

Vancouver:

Minnier J. Inference and Prediction for High Dimensional Data via Penalized Regression and Kernel Machine Methods. [Internet] [Doctoral dissertation]. Harvard University; 2012. [cited 2021 Apr 18]. Available from: http://nrs.harvard.edu/urn-3:HUL.InstRepos:9367010.

Council of Science Editors:

Minnier J. Inference and Prediction for High Dimensional Data via Penalized Regression and Kernel Machine Methods. [Doctoral Dissertation]. Harvard University; 2012. Available from: http://nrs.harvard.edu/urn-3:HUL.InstRepos:9367010

Harvard University

30.
Sinnott, Jennifer Anne.
Kernel Machine Methods for Risk Prediction with *High* *Dimensional* * Data*.

Degree: PhD, Biostatistics, 2012, Harvard University

URL: http://nrs.harvard.edu/urn-3:HUL.InstRepos:9793867

► Understanding the relationship between genomic markers and complex disease could have a profound impact on medicine, but the large number of potential markers can make…
(more)

Subjects/Keywords: high dimensional data; kernel machines; pathways; risk prediction; biostatistics

Record Details Similar Records

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APA · Chicago · MLA · Vancouver · CSE | Export to Zotero / EndNote / Reference Manager

APA (6^{th} Edition):

Sinnott, J. A. (2012). Kernel Machine Methods for Risk Prediction with High Dimensional Data. (Doctoral Dissertation). Harvard University. Retrieved from http://nrs.harvard.edu/urn-3:HUL.InstRepos:9793867

Chicago Manual of Style (16^{th} Edition):

Sinnott, Jennifer Anne. “Kernel Machine Methods for Risk Prediction with High Dimensional Data.” 2012. Doctoral Dissertation, Harvard University. Accessed April 18, 2021. http://nrs.harvard.edu/urn-3:HUL.InstRepos:9793867.

MLA Handbook (7^{th} Edition):

Sinnott, Jennifer Anne. “Kernel Machine Methods for Risk Prediction with High Dimensional Data.” 2012. Web. 18 Apr 2021.

Vancouver:

Sinnott JA. Kernel Machine Methods for Risk Prediction with High Dimensional Data. [Internet] [Doctoral dissertation]. Harvard University; 2012. [cited 2021 Apr 18]. Available from: http://nrs.harvard.edu/urn-3:HUL.InstRepos:9793867.

Council of Science Editors:

Sinnott JA. Kernel Machine Methods for Risk Prediction with High Dimensional Data. [Doctoral Dissertation]. Harvard University; 2012. Available from: http://nrs.harvard.edu/urn-3:HUL.InstRepos:9793867