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Discrete Particle Swarm Optimization with local search strategy for Rule Classification

机译:局部搜索策略的离散粒子群优化规则分类

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Rule discovery is an important classification method that has been attracting a significant amount of researchers in recent years. Rule discovery or rule mining uses a set of IF-THEN rules to classify a class or category. Besides the classical approaches, many rule mining approaches use biologically-inspired algorithms such as evolutionary algorithms and swarm intelligence approaches. In this paper, a Particle Swarm Optimization based discrete implementation with a local search strategy (DPSO-LS) was devised. The local search strategy helps to overcome local optima in order to improve the solution quality. Our DPSO-LS uses the Pittsburgh approach whereby a rule base is used to represent a ‘particle’. This rule base is evolved over time as to find the best possible classification model. Experimental results reveal that DPSO-LS outperforms other classification methods in most cases based on rule size, TP rates, FP rates, and precision.
机译:规则发现是一种重要的分类方法,近年来已吸引了大量研究人员。规则发现或规则挖掘使用一组IF-THEN规则对类或类别进行分类。除了经典方法外,许多规则挖掘方法还使用了生物启发算法,例如进化算法和群体智能方法。本文设计了一种基于粒子群优化算法的离散实现方法,并采用了局部搜索策略(DPSO-LS)。局部搜索策略有助于克服局部最优,从而提高解决方案质量。我们的DPSO-LS使用匹兹堡方法,其中规则库用于表示“粒子”。该规则库随着时间的推移而不断发展,以找到最佳的分类模型。实验结果表明,在大多数情况下,根据规则大小,TP率,FP率和精度,DPSO-LS优于其他分类方法。

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