2023
DOI: 10.32604/csse.2023.038025
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Multi-Strategy Boosted Spider Monkey Optimization Algorithm for Feature Selection

Abstract: To solve the problem of slow convergence and easy to get into the local optimum of the spider monkey optimization algorithm, this paper presents a new algorithm based on multi-strategy (ISMO). First, the initial population is generated by a refracted opposition-based learning strategy to enhance diversity and ergodicity. Second, this paper introduces a non-linear adaptive dynamic weight factor to improve convergence efficiency. Then, using the crisscross strategy, using the horizontal crossover to enhance the … Show more

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