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Effective Rule-Based Multi-label Classification with Learning Classifier Systems

机译:具有学习分类器系统的基于规则的有效多标签分类

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In recent years, multi-label classification has attracted a significant body of research, motivated by real-life applications such as text classification and medical diagnoses. However, rule-based methods, and especially Learning Classifier Systems (LCS), for tackling such problems have only been sparsely studied. This is the motivation behind our current work that introduces a generalized multi-label rule format and uses it as a guide for further adapting the general Michigan-style LCS framework. The resulting LCS algorithm is thoroughly evaluated and found competitive to other state-of-the-art multi-label classification methods.
机译:近年来,多标签分类吸引了大量研究,这是由诸如文本分类和医学诊断等现实应用推动的。但是,针对这种问题的基于规则的方法,尤其是学习分类器系统(LCS),仅得到了很少的研究。这是我们当前工作的动机,该工作引入了通用的多标签规则格式,并将其用作进一步适应通用的密歇根式LCS框架的指南。对生成的LCS算法进行了全面评估,发现与其他最新的多标签分类方法相比具有竞争力。

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