LGOCMLJun 17, 2019

A Survey of Optimization Methods from a Machine Learning Perspective

arXiv:1906.06821v2659 citations
Originality Synthesis-oriented
AI Analysis

It provides a systematic review for researchers in machine learning and optimization, but is incremental as it summarizes existing work.

This paper surveys optimization methods in machine learning, describing common problems, principles, and applications, and identifies challenges and open problems to guide future research.

Machine learning develops rapidly, which has made many theoretical breakthroughs and is widely applied in various fields. Optimization, as an important part of machine learning, has attracted much attention of researchers. With the exponential growth of data amount and the increase of model complexity, optimization methods in machine learning face more and more challenges. A lot of work on solving optimization problems or improving optimization methods in machine learning has been proposed successively. The systematic retrospect and summary of the optimization methods from the perspective of machine learning are of great significance, which can offer guidance for both developments of optimization and machine learning research. In this paper, we first describe the optimization problems in machine learning. Then, we introduce the principles and progresses of commonly used optimization methods. Next, we summarize the applications and developments of optimization methods in some popular machine learning fields. Finally, we explore and give some challenges and open problems for the optimization in machine learning.

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