【24h】

Multi-label Lazy Associative Classification

机译:多标签惰性关联分类

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摘要

Most current work on classification has been focused on learning from a set of instances that are associated with a single label (i.e., single-label classification). However, many applications, such as gene functional prediction and text categorization, may allow the instances to be associated with multiple labels simultaneously. Multi-label classification is a generalization of single-label classification, and its generality makes it much more difficult to solve. Despite its importance, research on multi-label classification is still lacking. Common approaches simply learn independent binary classifiers for each label, and do not exploit dependencies among labels. Also, several small disjuncts may appear due to the possibly large number of label combinations, and neglecting these small disjuncts may degrade classification accuracy. In this paper we propose a multi-label lazy associative classifier, which progressively exploits dependencies among labels. Further, since in our lazy strategy the classification model is induced on an instance-based fashion, the proposed approach can provide a better coverage of small disjuncts. Gains of up to 24% are observed when the proposed approach is compared against the state-of-the-art multi-label classifiers.
机译:当前关于分类的大多数工作都集中在从与单个标签相关联的一组实例中学习(即,单标签分类)。但是,许多应用程序(例如基因功能预测和文本分类)可能允许实例同时与多个标签关联。多标签分类是单标签分类的概括,其通用性使其难以解决。尽管它很重要,但仍缺乏对多标签分类的研究。通用方法只是为每个标签学习独立的二进制分类器,而不利用标签之间的依赖性。另外,由于标签组合的数量可能很多,可能会出现几个小的歧义,而忽略这些小的歧义可能会降低分类精度。在本文中,我们提出了一种多标签惰性关联分类器,该分类器逐渐利用了标签之间的依赖性。此外,由于在我们的懒惰策略中,分类模型是基于实例的方式来归纳的,因此所提出的方法可以更好地覆盖小分离物。将建议的方法与最新的多标签分类器进行比较时,可以观察到高达24%的收益。

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