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Library,Documentation and Information Science Division

“A research journal serves that narrow

borderland which separates the known from the unknown”

-P.C.Mahalanobis


Multi-View Correlation and Discriminant Analysis: (Record no. 436765)

MARC details
000 -LEADER
fixed length control field 05505nam a22003017a 4500
001 - CONTROL NUMBER
control field th621
003 - CONTROL NUMBER IDENTIFIER
control field ISI Library, Kolkata
005 - DATE AND TIME OF LATEST TRANSACTION
control field 20250220151705.0
008 - FIXED-LENGTH DATA ELEMENTS--GENERAL INFORMATION
fixed length control field 250220b |||||||| |||| 00| 0 eng d
040 ## - CATALOGING SOURCE
Original cataloging agency ISI Library
Language of cataloging English
082 04 - DEWEY DECIMAL CLASSIFICATION NUMBER
Edition number 23rd
Classification number 006.31
Item number M741
100 ## - MAIN ENTRY--PERSONAL NAME
Relator code Mondal, Sankar
Personal name author
245 10 - TITLE STATEMENT
Title Multi-View Correlation and Discriminant Analysis:
Remainder of title Structure Preservation, Sparsity to Multi-Task Learning/
Statement of responsibility, etc Sankar Mondal
260 ## - PUBLICATION, DISTRIBUTION, ETC. (IMPRINT)
Place of publication, distribution, etc Kolkata:
Name of publisher, distributor, etc Indian Statistical Institute,
Date of publication, distribution, etc 2024
300 ## - PHYSICAL DESCRIPTION
Extent xvi, 181 pages
Other physical details figs, tables
502 ## - DISSERTATION NOTE
Dissertation note Thesis ( Ph.D.) - Indian Statistical Institute, 2024
504 ## - BIBLIOGRAPHY, ETC. NOTE
Bibliography, etc Includes bibliography
505 ## - FORMATTED CONTENTS NOTE
Formatted contents note Introduction -- Survey on Multi-View Learning -- Class-Structure Preserving Multi-View Correlated Discriminant Analysis -- Supervised Graph Regularized Multi-View Canonical Correlation and Discrimination Analysis -- Multi-View Data Analysis in<br/>Imaging Genetics Studies -- Multi-Task Learning and Sparse Discriminant Canonical Correlation Analysis for Imaging Genetics Study -- Multi-View Multi-Task Sparse Canonical Correlation Analysis for Imaging Genetics Study -- Conclusion and Future Directions -- Description of Data Sets
508 ## - CREATION/PRODUCTION CREDITS NOTE
Creation/production credits note Guided by Prof. Pradipta Maji,
520 ## - SUMMARY, ETC.
Summary, etc Advancements in data acquisition make multiple data sources available to explain different perspectives of an object. In order to enhance the performance of a single-task learning such as classification, the multi-view learning (MVL) leverages the complementary and consistent information across multiple views. However, MVL has its own set of challenges. The major issues associated with MVL include selecting relevant and informative views while discarding the noisy and redundant views, integrating heterogeneous views while constructing discriminant subspaces, handling “high-dimension low-sample size” nature of different views, and finding the intrinsic non-linear class-geometry of the data across all the views. Moreover, applying MVL under a multi-task learning (MTL) framework, for learning multiple related tasks simultaneously to improve the performance of single-task MVL, is a major challenge. In this regard, the thesis introduces some supervised MVL algorithms, based on the theories of canonical correlation analysis (CCA). In order to construct the discriminative subspaces while preserving the non-linear class-geometry of the data, a novel supervised MVL method, termed as class-structure preserving multi-view correlated discriminant analysis (CSP-MVCDA), is proposed, which judiciously integrates the merits of multiset CCA (MCCA), linear discriminant analysis (LDA), and a locality preserving norm. The proposed method jointly optimizes the inter-set correlation across all the views and intra-set discrimination in each view to obtain a common discriminative latent space, where the shared and complementary information across multiple views is exploited. The locality preserving norm with prior class labels helps to preserve the local class-structure of the data, while both MCCA and LDA take care of its global class-structure across multiple views. A closed form solution, based on the generalized eigenvalue problem, makes the proposed method applicable for high-dimensional multi-omics data integration. In order to compute view relevance and inter-view dependency for a desired task, and to address the problem of “high-dimension low-sample size” nature of different views, a novel supervised MVL method, termed as supervised graph regularized multi-view canonical correlation and discrimination analysis (SGR-MCCDA), is next introduced based on the maximum variance formulation of MCCA. Incorporating the known geometry of source vectors encoded by the within-class and between-class graphs, the proposed method preserves the class-structure of the data, which facilitates multi-omics cancer stratification. In imaging genetics study, sparse models are effective to select diagnosis- or task- specific features for a comprehensive understanding of the underlying disease, and to find the genetic basis for the brain function and structure associated with the disease. In this regard, a new sparse multi-task two-view algorithm, termed as multi-task learning and sparse discriminant canonical correlation analysis (MTL-SDCCA), is proposed, judiciously integrating the theories of CCA and LDA under the MTL framework to find the association between an imaging and a genetic modality. It uses lasso and group lasso penalties to select the diagnosis-specific and diagnosis-consistent features from the large number of features to identify group-wise imaging genetic associations. In order to reduce the high complexity of existing algorithms, under multiple imaging and genetic modalities, a multi-task multi-view algorithm, termed as multi-view multi-task sparse canonical correlation analysis (MvMt-SCCA), is proposed, which learns multiple sparse CCA tasks together for identifying the group-wise imaging genetic association. Incorporating the lasso and fused lasso penalties, the proposed method is able to select the modality-wise, class-specific, and class- consistent features for large-scale imaging genetics studies.
650 #4 - SUBJECT ADDED ENTRY--TOPICAL TERM
Topical term or geographic name as entry element Computer Science
650 #4 - SUBJECT ADDED ENTRY--TOPICAL TERM
Topical term or geographic name as entry element Imaging Genetics
650 #4 - SUBJECT ADDED ENTRY--TOPICAL TERM
Topical term or geographic name as entry element Multi-omics Integration
650 #4 - SUBJECT ADDED ENTRY--TOPICAL TERM
Topical term or geographic name as entry element Canonical Correlation Analysis
650 #4 - SUBJECT ADDED ENTRY--TOPICAL TERM
Topical term or geographic name as entry element Generalized Lasso Problem
856 ## - ELECTRONIC LOCATION AND ACCESS
Uniform Resource Identifier <a href="http://hdl.handle.net/10263/7488">http://hdl.handle.net/10263/7488</a>
Link text Full text
942 ## - ADDED ENTRY ELEMENTS (KOHA)
Source of classification or shelving scheme Dewey Decimal Classification
Koha item type THESIS
Holdings
Lost status Not for loan Home library Current library Date acquired Full call number Accession Number Koha item type Public note
    ISI Library, Kolkata ISI Library, Kolkata 20/02/2025 006.31 M741 TH621 THESIS E-Thesis. Guided by Prof. Pradipta Maji
Library, Documentation and Information Science Division, Indian Statistical Institute, 203 B T Road, Kolkata 700108, INDIA
Phone no. 91-33-2575 2100, Fax no. 91-33-2578 1412, ksatpathy@isical.ac.in