用群双聚类扩展多标签分类的特征

R. Prati, F. O. França
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引用次数: 9

摘要

在一些数据挖掘应用中,分析的数据可能同时属于多个类,这是多标签分类问题的特点。处理这个问题的许多方法都是基于分解的,分解本质上是独立地处理标签(或标签的某些子集),而忽略它们之间的相互作用。这可能是一个问题,因为一些标签可能与数据中的本地模式相关。在本文中,我们提出利用双聚类来增强多标签分类器,它能够找到目标、特征和标签的子集之间的相关性。然后,我们从这些模式中构建二进制特征,这些特征可以被解释为数据中的局部相关性(就特征和实例的子集而言)。这些特征被用作多标签分类器的输入。实验表明,使用这种构造的特征可以提高一些分解多标签学习技术的分类性能。
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Extending features for multilabel classification with swarm biclustering
In some data mining applications the analyzed data can be classified as simultaneously belonging to more than one class, this characterizes the multi-label classification problem. Numerous methods for dealing with this problem are based on decomposition, which essentially treats labels (or some subsets of labels) independently and ignores interactions between them. This fact might be a problem, as some labels may be correlated to local patterns in the data. In this paper, we propose to enhance multi-label classifiers with the aid of biclusters, which are capable of finding the correlation between subsets of objects, features and labels. We then construct binary features from these patterns that can be interpreted as local correlations (in terms of subset of features and instances) in the data. These features are used as input for multi-label classifiers. We experimentally show that using such constructed features can improve the classification performance of some decompositive multi-label learning techniques.
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