4.7 Article

Learnable Evolutionary Search Across Heterogeneous Problems via Kernelized Autoencoding

Journal

IEEE TRANSACTIONS ON EVOLUTIONARY COMPUTATION
Volume 25, Issue 3, Pages 567-581

Publisher

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/TEVC.2021.3056514

Keywords

Optimization; Search problems; Noise reduction; Sociology; Knowledge transfer; Kernel; Genetic algorithms; Evolutionary optimization; kernelization; knowledge transfer; nonlinear

Funding

  1. National Natural Science Foundation of China (NSFC) [61876025]
  2. Venture and Innovation Support Program for Chongqing Overseas Returnees [cx2018044, cx2019020]
  3. A*STAR Cyber-Physical Production System (CPPS)-Towards Contextual and Intelligent Response Research Program, through the RIE2020 IAF-PP [A19C1a0018]

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The evolutionary algorithm with learning capability has attracted increasing research interests, with the Autoencoding Evolutionary Search (AEES) showing promising performance in transferring knowledge from past search experiences. In this study, a Kernelized Autoencoding Evolutionary-Search (KAES) paradigm is proposed to adaptively select linear and kernelized autoencoding methods for effective knowledge transfer across problem domains during the evolutionary search process. Comprehensive empirical studies on benchmark multiobjective optimization problems and a real-world vehicle crashworthiness design problem are conducted to validate the efficacy of KAES.
The design of the evolutionary algorithm with learning capability from past search experiences has attracted growing research interests in recent years. It has been demonstrated that the knowledge embedded in the past search experience can greatly speed up the evolutionary process if properly harnessed. Autoencoding evolutionary search (AEES) is a recently proposed search paradigm, which employs a single-layer denoising autoencoder to build the mapping between two problems by configuring the solutions of each problem as the input and output for the autoencoder, respectively. The learned mapping makes it possible to perform knowledge transfer across heterogeneous problem domains with diverse properties. It has shown a promising performance of learning and transferring the knowledge from past search experiences to facilitate the evolutionary search on a variety of optimization problems. However, despite the success enjoyed by AEES, the linear autoencoding model cannot capture the nonlinear relationship between the solution sets used in the mapping construction. Taking this cue, in this article, we devise a kernelized autoencoder to construct the mapping in a reproducing kernel Hilbert space (RKHS), where the nonlinearity among problem solutions can be captured easily. Importantly, the proposed kernelized autoencoding method also holds a closed-form solution which will not bring much computational burden in the evolutionary search. Furthermore, a kernelized autoencoding evolutionary-search (KAES) paradigm is proposed that adaptively selects the linear and kernelized autoencoding along the search process in pursuit of effective knowledge transfer across problem domains. To validate the efficacy of the proposed KAES, comprehensive empirical studies on both benchmark multiobjective optimization problems as well as real-world vehicle crashworthiness design problem are presented.

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