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  4. Simultaneous variable and feature group selection in heterogeneous learning: optimization and applications
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Simultaneous variable and feature group selection in heterogeneous learning: optimization and applications

Full metadata

Description

Advances in data collection technologies have made it cost-effective to obtain heterogeneous data from multiple data sources. Very often, the data are of very high dimension and feature selection is preferred in order to reduce noise, save computational cost and learn interpretable models. Due to the multi-modality nature of heterogeneous data, it is interesting to design efficient machine learning models that are capable of performing variable selection and feature group (data source) selection simultaneously (a.k.a bi-level selection). In this thesis, I carry out research along this direction with a particular focus on designing efficient optimization algorithms. I start with a unified bi-level learning model that contains several existing feature selection models as special cases. Then the proposed model is further extended to tackle the block-wise missing data, one of the major challenges in the diagnosis of Alzheimer's Disease (AD). Moreover, I propose a novel interpretable sparse group feature selection model that greatly facilitates the procedure of parameter tuning and model selection. Last but not least, I show that by solving the sparse group hard thresholding problem directly, the sparse group feature selection model can be further improved in terms of both algorithmic complexity and efficiency. Promising results are demonstrated in the extensive evaluation on multiple real-world data sets.

Date Created
2014
Contributors
  • Xiang, Shuo (Author)
  • Ye, Jieping (Thesis advisor)
  • Mittelmann, Hans D (Committee member)
  • Davulcu, Hasan (Committee member)
  • He, Jingrui (Committee member)
  • Arizona State University (Publisher)
Topical Subject
  • Computer Science
  • block-wise missing data
  • Feature Selection
  • hard-thresholding
  • multi-source
  • Optimization
  • Machine Learning
  • Heterogeneous computing
Resource Type
Text
Genre
Doctoral Dissertation
Academic theses
Extent
xi, 108 p. : col. ill
Language
eng
Copyright Statement
In Copyright
Reuse Permissions
All Rights Reserved
Primary Member of
ASU Electronic Theses and Dissertations
Peer-reviewed
No
Open Access
No
Handle
https://hdl.handle.net/2286/R.I.26854
Statement of Responsibility
by Shuo Xiang
Description Source
Viewed on January 22, 2015
Level of coding
full
Note
Partial requirement for: Ph.D., Arizona State University, 2014
Note type
thesis
Includes bibliographical references (p. 84-90)
Note type
bibliography
Field of study: Computer science
System Created
  • 2014-12-01 07:02:30
System Modified
  • 2021-08-30 01:32:11
  •     
  • 10 months ago
Additional Formats
  • OAI Dublin Core
  • MODS XML

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