4.7 Article

Few-Shots Parallel Algorithm Portfolio Construction via Co-Evolution

期刊

出版社

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/TEVC.2021.3059661

关键词

Training; Portfolios; Tuning; Statistics; Sociology; Parallel algorithms; Machine learning algorithms; Algorithm configuration; automatic parameter tuning; co-evolution; parallel algorithm portfolios (PAPs); vehicle routing problems

资金

  1. Guangdong Provincial Key Laboratory [2020B121201001]
  2. Program for Guangdong Introducing Innovative and Entrepreneurial Teams [2017ZT07X386]
  3. Shenzhen Peacock Plan [KQTD2016112514355531]
  4. Science and Technology Commission of Shanghai Municipality [19511120600]
  5. National Leading Youth Talent Support Program of China
  6. MOE University Scientific-Technological Innovation Plan Program

向作者/读者索取更多资源

The article introduces a novel competitive co-evolution scheme named CEPS, which is able to obtain generalizable PAPs with few training instances by co-evolving a configuration population and an instance population. Experimental results demonstrate that CEPS has led to better generalization and even found new best-known solutions for some instances.
Generalization, i.e., the ability of solving problem instances that are not available during the system design and development phase, is a critical goal for intelligent systems. A typical way to achieve good generalization is to learn a model from vast data. In the context of heuristic search, such a paradigm could be implemented as configuring the parameters of a parallel algorithm portfolio (PAP) based on a set of training problem instances, which is often referred to as PAP construction. However, compared to the traditional machine learning, PAP construction often suffers from the lack of training instances, and the obtained PAPs may fail to generalize well. This article proposes a novel competitive co-evolution scheme, named co-evolution of parameterized search (CEPS), as a remedy to this challenge. By co-evolving a configuration population and an instance population, CEPS is capable of obtaining generalizable PAPs with few training instances. The advantage of CEPS in improving generalization is analytically shown in this article. Two concrete algorithms, namely, CEPS-TSP and CEPS-VRPSPDTW, are presented for the traveling salesman problem (TSP) and the vehicle routing problem with simultaneous pickup-delivery and time windows (VRPSPDTW), respectively. The experimental results show that CEPS has led to better generalization, and even managed to find new best-known solutions for some instances.

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