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Opposition based learning: A literature review

Journal

SWARM AND EVOLUTIONARY COMPUTATION
Volume 39, Issue -, Pages 1-23

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ELSEVIER
DOI: 10.1016/j.swevo.2017.09.010

Keywords

Opposition-based computation; Soft computing; Evolutionary computation; Artificial neural network; Reinforcement learning; Opposition schemes; Machine learning; Computation

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Opposition-based Learning (OBL) is a new concept in machine learning, inspired from the opposite relationship among entities. In 2005, for the first time the concept of opposition was introduced which has attracted a lot of research efforts in the last decade. Variety of soft computing algorithms such as, optimization methods, reinforcement learning, artificial neural networks, and fuzzy systems have already utilized the concept of OBL to improve their performance. This survey has been conducted on three classes of OBL attempts: a) theoretical, including the mathematical theorems and fundamental definitions, b) developmental, focusing on the design of the special OBL-based schemes, and c) real-world applications of OBL. More than 380 papers in a variety of disciplines are surveyed and also a comprehensive set of promising directions are discussed in detail.

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