Gules, SeymaKilic, AlperKiran, Mustafa ServetGunduz, Mesut2025-09-102025-09-1020252076-3417https://doi.org/10.3390/app15158710https://hdl.handle.net/20.500.13091/10698With the increasing size of datasets in data mining applications, feature selection has become critical for enhancing classification accuracy and reducing computational complexity. In this study, a novel binary feature selection algorithm, called bWSO-log, is proposed based on the White Shark Optimizer (WSO). Unlike the commonly used S-shaped and V-shaped transfer functions in the literature, the WSO algorithm is converted into a binary form for the first time using a logarithmic transfer function. The performance of the proposed method was tested on nineteen benchmark datasets and compared with eight widely used metaheuristic algorithms. The results show that the bWSO-log algorithm demonstrates superior or competitive performance in terms of classification accuracy and the number of selected features. These findings reveal the effectiveness of the proposed logarithmic function and highlight the potential of WSO-based binary optimization in feature selection problems.eninfo:eu-repo/semantics/openAccessFeature SelectionSwarm IntelligentTransfer FunctionWhite Shark OptimizerData MiningA Logarithmic Transfer Function for Binary Swarm Intelligence Algorithms: Enhanced Feature Selection with White Shark OptimizerArticle10.3390/app151587102-s2.0-105013120713