Assessing the Justification for Integrating Deep Learning in Combinatorial Optimization

Written by heuristicsearch | Published 2024/04/12
Tech Story Tags: neural-networks | local-search-heuristics | deep-learning | algorithmic-generalization | deep-learning-architectures | heuristic-algorithms | optimization-algorithms | heuristics-evaluation

TLDR This summary highlights the importance of conducting thorough comparisons between deep learning-integrated heuristics and classical heuristics in combinatorial optimization. It emphasizes the need to articulate both strengths and weaknesses to guide research investments and justify the integration of deep learning architectures.via the TL;DR App

Authors:

(1) Ankur Nath, Department of Computer Science and Engineering, Texas A&M University;

(2) Alan Kuhnle, Department of Computer Science and Engineering, Texas A&M University.

Table of Links

Abstract & Introduction

Related work

Evaluation for Max-Cut

Evaluation for SAT

Summary and Outlook, References

Supplementary Materials

5 SUMMARY and OUTLOOK

Through our empirical evaluations, our goal is to promote an insightful comparison within the research focusing on the intersection of combinatorial optimization and machine learning. In order to provide the research community with valuable guidance, we believe it is imperative to communicate both the strengths and weaknesses of the proposed approaches. Poor instances and baseline selection may give the wrong impression about the performance of learned heuristics. Specifically, it is important to articulate the degree of improvement achieved through integrating classical heuristics with deep learning architectures and conduct a thorough comparison with classical heuristics. This will aid in elucidating the degree to which deep learning architectures enhance integrated heuristics. It assists in ascertaining whether the integration endeavor is justified and warrants the allocation of computational resources, time, and investment necessary for integrating deep learning with classical heuristics.

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This paper is available on arxiv under CC 4.0 DEED license.


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Published by HackerNoon on 2024/04/12