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An approach for multi-label classification by directed acyclic graph with label correlation maximization

机译:带有标签相关性最大化的有向无环图的多标签分类方法

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摘要

Traditional supervised learning approaches primarily work in the single-label environment. However, in many real-world problems, data instances are usually associated with multiple labels simultaneously, and multi-label learning is increasingly required in many modern applications. In multi-label learning, the key to successful classification is effectively exploiting the complex correlations among the output labels. This paper proposes a novel multi-label learning method inspired by the classifier chain approach. The main contribution of this work is to model the correlations of the labels using a directed acyclic graph. Starting from the simple intuitive notion of measuring the correlations among the labels, the proposed method is designed as a multi-label learning method that maximizes the correlations among labels. To evaluate its effectiveness, the proposed method is compared with the state-of-the-art approaches. Extensive experiments demonstrated the proposed method to be highly competitive with the other multi-label approaches. (C) 2016 Elsevier Inc. All rights reserved.
机译:传统的监督学习方法主要在单标签环境下工作。但是,在许多实际问题中,数据实例通常同时与多个标签关联,并且在许多现代应用程序中,越来越需要多标签学习。在多标签学习中,成功分类的关键是有效利用输出标签之间的复杂相关性。本文提出了一种新颖的多标签学习方法,该方法得益于分类器链方法。这项工作的主要贡献是使用有向无环图对标签的相关性进行建模。从测量标签之间的相关性的简单直观概念开始,提出的方法被设计为最大化标签之间的相关性的多标签学习方法。为了评估其有效性,将所提出的方法与最新方法进行了比较。大量实验表明,该方法与其他多标签方法具有高度竞争性。 (C)2016 Elsevier Inc.保留所有权利。

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