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Partitioned Feature-based Classifier model with Expertise Table

机译:基于专家特征表的基于特征的分类器分类器模型

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An advanced form of the Partitioned Feature-based Classifier (PFC) is proposed in this paper. As is the case with the PFC, the proposed classifier model, called Partitioned Feature-based Classifier with Expertise Table (PFC-ET), does not use the entire feature vectors extracted from the original data in a concatenated form to classify each datum, but rather uses groups of features related to each feature vector separately. The proposed PFC-ET improves the contribution rate used in the PFC by introducing a confusion table, called an Expertise Table, for each local classifier that uses a specific feature vector group. The confusion table for each local classifier contains accuracy information of each local classifier on each class of data. The proposed PFC-ET algorithm is applied to the problem of music genre classification on a set of music data. The results demonstrate that the proposed PFC-ET model outperforms the original PFC model by 7.22% – 23.6% on average in terms of classification accuracy depending on the grouping algorithms used for local classifiers and the number of clusters.
机译:本文提出了一种基于分区特征分类器(PFC)的高级形式。与PFC一样,建议的分类器模型称为具有专业知识表的基于分区特征的分类器(PFC-ET),它不会使用从原始数据中提取的整个特征向量以级联形式对每个数据进行分类,但是,而是分别使用与每个特征向量相关的特征组。提出的PFC-ET通过为使用特定特征向量组的每个本地分类器引入一个称为专家表的混淆表来提高PFC中使用的贡献率。每个本地分类器的混淆表包含每个本地分类器在每个数据类别上的准确性信息。所提出的PFC-ET算法被应用于一组音乐数据上的音乐流派分类问题。结果表明,根据用于局部分类器的分组算法和聚类数目,在分类准确度方面,提出的PFC-ET模型比原始PFC模型平均要好7.22%– 23.6%。

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