Content area

Abstract

In recent years, machine learning (ML) has achieved remarkable success by training large-scale models on vast datasets. However, building these models involves multiple interdependent tasks-such as data selection, hyperparameter tuning, and model architecture search-that can lead to nested objectives when optimized jointly. These nested objectives arise because each task both influences and depends on the others. This dissertation aims to develop efficient algorithms to tackle these challenging nested problems in machine learning.

In the first part, we formalize nested ML problems as bilevel optimization tasks and presenting efficient algorithms with theoretical guarantees that solve them. Then, in the second part, we extend to the federated/distributed learning context, examining how algorithmic designs must be adapted to meet the challenges of that environment. Finally, in the third part, we cover challenges with hierarchies in the distributed learning setting including data cleaning, network pruning and constrained problems.

Details

1010268
Business indexing term
Title
New Efficient Algorithms for Nested Machine Learning Problems
Author
Number of pages
424
Publication year
2025
Degree date
2025
School code
0117
Source
DAI-A 86/12(E), Dissertation Abstracts International
ISBN
9798286437658
Advisor
Committee member
Li, Ang; Gao, Ruohan; Liu, Zhicheng; Bhattacharyya, Shura S.
University/institution
University of Maryland, College Park
Department
Computer Science
University location
United States -- Maryland
Degree
Ph.D.
Source type
Dissertation or Thesis
Language
English
Document type
Dissertation/Thesis
Dissertation/thesis number
31937273
ProQuest document ID
3224416040
Document URL
https://www.proquest.com/dissertations-theses/new-efficient-algorithms-nested-machine-learning/docview/3224416040/se-2?accountid=208611
Copyright
Database copyright ProQuest LLC; ProQuest does not claim copyright in the individual underlying works.
Database
ProQuest One Academic