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A novel sequential three-way decision model with autonomous error correction

机译:一种新型序贯三向决策模型,具有自主纠错

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摘要

As an approach to granular computing, the sequential three-way decision (S3WD) model has been widely studied in practical applications. In terms of improving the accuracy of the S3WD model, existing studies have achieved fruitful results. However, the two types of classification errors and two types of uncertain classifications caused by a probabilistic rough set model have received less consideration, which will result in a higher error classification rate (ECR) in the decision process. In this paper, from the perspective of the subdivision of granules, a new sequential three-way decision model with autonomous error correction (S3WD-AEC) is proposed to reduce the ECR. First, two types of errors correction and two types of effective classifications in the S3WD model are defined. Next, according to the process of information granulation, four subdivisions of equivalence classes are discussed in detail. Subsequently, the total ECR composed of the positive and negative regions in each granularity layer is proved to gradually decrease with the subdivision of the equivalence classes. Then, during the S3WD process, four commonly used clustering algorithms are introduced to select a portion of the equivalence classes near the boundary region for further subdivision, implementing an error correction for some misclassified objects. Finally, the experimental results show that the S3WD-AEC model has a smaller ECR compared with the S3WD model. (C) 2020 Elsevier B.V. All rights reserved.
机译:作为颗粒计算的方法,在实际应用中已广泛研究了顺序三元判定(S3WD)模型。就提高S3WD模型的准确性而言,现有研究取得了富有成效的结果。然而,由概率粗糙集模型引起的两种类型的分类误差和两种类型的不确定分类已经收到了更少的考虑,这将导致决策过程中更高的误差分类速率(ECR)。本文从颗粒细分的角度来看,提出了一种具有自主纠错(S3WD-AEC)的新的连续三通决策模型来减少ECR。首先,定义了两种类型的错误校正和S3WD模型中的两种类型的有效分类。接下来,根据信息造粒的过程,详细讨论了等同类的四个子分区。随后,被证明,由每个粒度层中的正和负区域组成的总ECR,随着等效类的细分,逐渐减少。然后,在S3WD过程中,引入四个常用的聚类算法以选择边界区域附近的等效类的一部分,以进一步细分,实现一些错误分类对象的纠错。最后,实验结果表明,与S3WD模型相比,S3WD-AEC模型具有较小的ECR。 (c)2020 Elsevier B.v.保留所有权利。

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