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Fuzzy rule selection by multi-objective genetic local search algorithms and rule evaluation measures in data mining

机译:数据挖掘中多目标遗传局部搜索算法的模糊规则选择及规则评估措施

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This paper shows how a small number of simple fuzzy if-then rules can be selected for pattern classification problems with many continuous attributes. Our approach consists of two phases: candidate rule generation by rule evaluation measures in data mining and rule selection by multi-objective evolutionary algorithms. In our approach, first candidate fuzzy if-then rules are generated from numerical data and prescreened using two rule evaluation measures (i.e., confidence and support) in data mining. Then a small number of fuzzy if-then rules are selected from the prescreened candidate rules using multi-objective evolutionary algorithms. In rule selection, we use three objectives: maximization of the classification accuracy, minimization of the number of selected rules, and minimization of the total rule length. Thus the task of multi-objective evolutionary algorithms is to find a number of non-dominated rule sets with respect to these three objectives. The main contribution of this paper is to propose an idea of utilizing the two rule evaluation measures as prescreening criteria of candidate rules for fuzzy rule selection. An arbitrarily specified number of candidate rules can be generated from numerical data for high-dimensional pattern classification problems. Through computer simulations, we demonstrate that such a prescreening procedure improves the efficiency of our approach to fuzzy rule selection. We also extend a multi-objective genetic algorithm (MOGA) in our former studies to a multi-objective genetic local search (MOGLS) algorithm where a local search procedure adjusts the selection (i.e., inclusion or exclusion) of each candidate rule. Furthermore, a learning algorithm of rule weights (i.e., certainty factors) is combined with our MOGLS algorithm. Such extensions to our MOGA for fuzzy rule selection are another contribution of this paper.
机译:本文说明了如何为具有许多连续属性的模式分类问题选择少量的简单的if-then规则。我们的方法包括两个阶段:通过数据挖掘中的规则评估措施生成候选规则,以及通过多目标进化算法选择规则。在我们的方法中,首先从数值数据中生成模糊的if-then候选规则,并在数据挖掘中使用两种规则评估措施(即置信度和支持度)进行预筛选。然后,使用多目标进化算法从预先筛选的候选规则中选择少量的模糊if-then规则。在规则选择中,我们使用三个目标:最大化分类准确性,最小化所选规则的数量以及最小化总规则长度。因此,多目标进化算法的任务是针对这三个目标找到许多非支配的规则集。本文的主要贡献是提出一种想法,即利用这两种规则评估措施作为模糊规则选择的候选规则的预筛选标准。可以从用于高维模式分类问题的数值数据生成任意指定数量的候选规则。通过计算机仿真,我们证明了这种预筛选过程提高了我们模糊规则选择方法的效率。我们还将以前的研究中的多目标遗传算法(MOGA)扩展到多目标遗传局部搜索(MOGLS)算法,其中局部搜索程序会调整每个候选规则的选择(即包含或排除)。此外,将规则权重(即确定性因子)的学习算法与我们的MOGLS算法结合在一起。对MOGA进行此类模糊规则选择的扩展是本文的另一项贡献。

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