Quantum-Inspired Evolutionary Algorithms for Feature Subset Selection: A Comprehensive Survey
July 25, 2024 ยท The Cartographer ยท ๐ Quantum Information Processing
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"Title-pattern auto-detect: Quantum-Inspired Evolutionary Algorithms for Feature Subset Selection: A Comprehensive Survey"
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Authors
Yelleti Vivek, Vadlamani Ravi, P. Radha Krishna
arXiv ID
2407.17946
Category
cs.NE: Neural & Evolutionary
Citations
10
Venue
Quantum Information Processing
Last Checked
3 days ago
Abstract
The clever hybridization of quantum computing concepts and evolutionary algorithms (EAs) resulted in a new field called quantum-inspired evolutionary algorithms (QIEAs). Unlike traditional EAs, QIEAs employ quantum bits to adopt a probabilistic representation of the state of a feature in a given solution. This unprecedented feature enables them to achieve better diversity and perform global search, effectively yielding a tradeoff between exploration and exploitation. We conducted a comprehensive survey across various publishers and gathered 56 papers. We thoroughly analyzed these publications, focusing on the novelty elements and types of heuristics employed by the extant quantum-inspired evolutionary algorithms (QIEAs) proposed to solve the feature subset selection (FSS) problem. Importantly, we provided a detailed analysis of the different types of objective functions and popular quantum gates, i.e., rotation gates, employed throughout the literature. Additionally, we suggested several open research problems to attract the attention of the researchers.
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