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Credit Scoring Analysis Using B-Cell Algorithm and K-Nearest Neighbor Classifiers

机译:使用B单元算法和K最近邻分类器的信用评分分析

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This paper applies B-Cell algorithm (BCA) for credit scoring analysis problems. The proposed BCA-based method is combined with k-nearest neighbor (kNN) classifiers. In the algorithm, BCA is introduced to select the optimal feature subsets and kNNs are used to classify the investors in different groups representing different levels of credit in the classification phase. Experiments employing the benchmark data sets from UCI databases will be used to measure the performance of the algorithm. Its comparison with genetic algorithm, particle swarm optimization and ant colony optimization will be shown.
机译:本文将B-Cell算法(BCA)应用于信用评分分析问题。所提出的基于BCA的方法与k最近邻(kNN)分类器相结合。在该算法中,引入了BCA来选择最佳特征子集,并使用kNN在分类阶段将代表不同信用等级的不同类别的投资者进行分类。使用来自UCI数据库的基准数据集进行的实验将用于衡量算法的性能。将其与遗传算法,粒子群优化算法和蚁群优化算法进行比较。

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