Evolutionary Machine Learning: A Survey

A. Telikani, A. Tahmassebi, W. Banzhaf, A. Gandomi
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引用次数: 61

Abstract

Evolutionary Computation (EC) approaches are inspired by nature and solve optimization problems in a stochastic manner. They can offer a reliable and effective approach to address complex problems in real-world applications. EC algorithms have recently been used to improve the performance of Machine Learning (ML) models and the quality of their results. Evolutionary approaches can be used in all three parts of ML: preprocessing (e.g., feature selection and resampling), learning (e.g., parameter setting, membership functions, and neural network topology), and postprocessing (e.g., rule optimization, decision tree/support vectors pruning, and ensemble learning). This article investigates the role of EC algorithms in solving different ML challenges. We do not provide a comprehensive review of evolutionary ML approaches here; instead, we discuss how EC algorithms can contribute to ML by addressing conventional challenges of the artificial intelligence and ML communities. We look at the contributions of EC to ML in nine sub-fields: feature selection, resampling, classifiers, neural networks, reinforcement learning, clustering, association rule mining, and ensemble methods. For each category, we discuss evolutionary machine learning in terms of three aspects: problem formulation, search mechanisms, and fitness value computation. We also consider open issues and challenges that should be addressed in future work.
进化机器学习:综述
进化计算(EC)方法受到自然的启发,以随机的方式解决最优化问题。它们可以提供可靠而有效的方法来解决实际应用程序中的复杂问题。EC算法最近被用于提高机器学习(ML)模型的性能和结果的质量。进化方法可以用于机器学习的所有三个部分:预处理(例如,特征选择和重新采样),学习(例如,参数设置,隶属函数和神经网络拓扑)和后处理(例如,规则优化,决策树/支持向量修剪和集成学习)。本文探讨了EC算法在解决不同ML挑战中的作用。我们在这里没有提供进化ML方法的全面回顾;相反,我们讨论EC算法如何通过解决人工智能和ML社区的传统挑战来为ML做出贡献。我们从九个子领域考察EC对ML的贡献:特征选择、重新采样、分类器、神经网络、强化学习、聚类、关联规则挖掘和集成方法。对于每个类别,我们从三个方面讨论进化机器学习:问题表述、搜索机制和适应度值计算。我们还考虑在未来工作中应解决的悬而未决的问题和挑战。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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