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Abstract

While state-of-the-art machine learning models are deep, large-scale, sequential and highly nonconvex, the backbone of modern learning algorithms are simple algorithms such as stochastic gradient descent, gradient descent with momentum or Q-learning (in the case of reinforcement learning tasks). A basic question endures---why do simple algorithms work so well even in these challenging settings?

To answer above question, this thesis focuses on four concrete and fundamental questions:

- In nonconvex optimization, can (stochastic) gradient descent or its variants escape saddle points efficiently?

- Is gradient descent with momentum provably faster than gradient descent in the general nonconvex setting?

- In nonconvex-nonconcave minmax optimization, what is a proper definition of local optima and is gradient descent ascent game-theoretically meaningful?

- In reinforcement learning, is Q-learning sample efficient?

This thesis provides the first line of provably positive answers to all above questions. In particular, this thesis will show that although the standard versions of these classical algorithms do not enjoy good theoretical properties in the worst case, simple modifications are sufficient to grant them desirable behaviors, which explain the underlying mechanisms behind their favorable performance in practice.

Details

Title
Machine Learning: Why Do Simple Algorithms Work So Well?
Author
Jin, Chi
Publication year
2019
Publisher
ProQuest Dissertations & Theses
ISBN
9781085792608
Source type
Dissertation or Thesis
Language of publication
English
ProQuest document ID
2307190858
Copyright
Database copyright ProQuest LLC; ProQuest does not claim copyright in the individual underlying works.