Ihsan, A.; Muttaqin, K.; Fajri, R.; Mursyidah, M.; Fattah, I.M.R. Innovative Bacterial Colony Detection: Leveraging Multi-Feature Selection with the Improved Salp Swarm Algorithm. J. Imaging2023, 9, 263.
Ihsan, A.; Muttaqin, K.; Fajri, R.; Mursyidah, M.; Fattah, I.M.R. Innovative Bacterial Colony Detection: Leveraging Multi-Feature Selection with the Improved Salp Swarm Algorithm. J. Imaging 2023, 9, 263.
Ihsan, A.; Muttaqin, K.; Fajri, R.; Mursyidah, M.; Fattah, I.M.R. Innovative Bacterial Colony Detection: Leveraging Multi-Feature Selection with the Improved Salp Swarm Algorithm. J. Imaging2023, 9, 263.
Ihsan, A.; Muttaqin, K.; Fajri, R.; Mursyidah, M.; Fattah, I.M.R. Innovative Bacterial Colony Detection: Leveraging Multi-Feature Selection with the Improved Salp Swarm Algorithm. J. Imaging 2023, 9, 263.
Abstract
In this study, we introduce and advanced multi-feature selection technique for bacterial classifi-cation employing the Salp Swarm Algorithm (SSA). We enhance SSA’s effectiveness by incorpo-rating the Opposition-Based Learning (OBL) strategy and the Local Search (LSA) algorithm. The proposed technique encompasses three key stages, streamlining the automated categorization of bacteria based on their distinctive features. The research adopts a multi-feature selection approach bolstered by an enhanced iteration of the Salp Swarm Algorithm (SSA). Enhancements include the utilization of Opposition-Based-Learning (OBL) to increase population diversity during search and Local Search Algorithms (LSA) to tackle local optimization challenges. The ISSA algorithm is designed to optimize the multi-feature selection by increasing the number of selected feature and improving classification accuracy. This study compares its performance with several other algo-rithms across ten distinct test datasets. The comparison results show that ISSA has better perfor-mance in terms of classification accuracy on 3 datasets consisting of 19 features, with a value reaching 73.75%. Additionally, ISSA excels in determining the optimal feature count and producing a better-fit value with a classification error rate of 0,249. Thus, the ISSA technique is expected to make a significant contribution to solving feature selection problems in bacterial analysis
Computer Science and Mathematics, Artificial Intelligence and Machine Learning
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