Multi-objective Binary Coordinate Search for Feature Selection

Sevil Zanjani Miyandoab,Shahryar Rahnamayan, Azam Asilian Bidgoli

IEEE International Conference on Systems, Man and Cybernetics(2024)

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摘要
A supervised feature selection method selects an appropriate but concise set of features to differentiate classes, which is highly expensive for large-scale datasets. Therefore, feature selection should aim at both minimizing the number of selected features and maximizing the accuracy of classification, or any other task. However, this crucial task is computationally highly demanding on many real-world datasets and requires a very efficient algorithm to reach a set of optimal features with a limited number of fitness evaluations. For this purpose, we have proposed the binary multi-objective coordinate search (MOCS) algorithm to solve large-scale feature selection problems. To the best of our knowledge, the proposed algorithm in this paper is the first multi-objective coordinate search algorithm. In this method, we generate new individuals by flipping a variable of the candidate solutions on the Pareto front. This enables us to investigate the effectiveness of each feature in the corresponding subset. In fact, this strategy can play the role of crossover and mutation operators to generate distinct subsets of features. The reported results indicate the significant superiority of our method over NSGA-II, on five real-world large-scale datasets, particularly when the computing budget is limited. Moreover, this simple hyper-parameter-free algorithm can solve feature selection much faster and more efficiently than NSGA-II.
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关键词
Binary Search,Classification Accuracy,Search Algorithm,Large-scale Datasets,Real-world Datasets,Feature Subset,Feature Selection Methods,Large-scale Problems,Candidate Solutions,Pareto Front,Multi-objective Algorithm,Algorithm In This Paper,Feature Selection Problem,Binary Search Algorithm,Training Set,Optimization Problem,Support Vector Machine,Evolutionary Algorithms,Multi-objective Optimization,Coordinate Descent,Objective Space,Coordinate Descent Algorithm,Dataset Characteristics,Pareto Front Solutions,Field Dataset,Function Calls,Non-dominated Sorting,Multi-objective Optimization Problem,Non-dominated Solutions
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