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首页> 外文期刊>Indian Journal of Science and Technology >A Novel Negative Selection Algorithm with Optimal Worst-case Training Time Complexity for R-chunk Detectors
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A Novel Negative Selection Algorithm with Optimal Worst-case Training Time Complexity for R-chunk Detectors

机译:一种新型否定选择算法,R-CHUNK探测器具有最佳最坏情况训练时间复杂度

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摘要

Objectives: To generate complete and non-redundant detector set with optimal worst-case time complexity. Methods: In this study, a novel exact matching and string-based Negative Selection Algorithm utilizing r-chunk detectors is proposed. Improved algorithms are tested on some data sets; the experiments’ results are compared with recently published ones. Moreover, algorithms’ complexities are also proved mathematically. Findings: For string-based Artificial Immune Systems, r-chunk detector is the most common detector type and their generation complexity is one of the important factors considered in the literature. We proposed optimal algorithms based on automata to present all detectors. Novelty/applications: The algorithm could generate the representation of complete and nonredundant detector set with optimal worst-case time complexity. To the best of our knowledge, the algorithm is the first one to possess such worst-case training time complexity.
机译:目标:生成完整和非冗余探测器设置,具有最佳的最坏情况时间复杂度。方法:提出了一种利用R-CHUNK检测器的新颖精确匹配和基于串的负选择算法。在某些数据集上测试改进的算法;将实验结果与最近公布的结果进行了比较。此外,还在数学证明了算法的复杂性。结果:对于基于串的人工免疫系统,R-CHUNK探测器是最常见的探测器类型,它们的产生复杂性是文献中考虑的重要因素之一。我们提出了基于自动机的最佳算法来呈现所有探测器。新奇/应用程序:该算法可以生成完整和非还原探测器集的表示,具有最佳的最坏情况时间复杂度。据我们所知,该算法是第一个拥有如此最坏情况训练时间复杂度的算法。

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