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Multi-label Ensemble Learning

机译:多标签集成学习

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摘要

Multi-label learning aims at predicting potentially multiple labels for a given instance. Conventional multi-label learning approaches focus on exploiting the label correlations to improve the accuracy of the learner by building an individual multi-label learner or a combined learner based upon a group of single-label learners. However, the generalization ability of such individual learner can be weak. It is well known that ensemble learning can effectively improve the generalization ability of learning systems by constructing multiple base learners and the performance of an ensemble is related to the both accuracy and diversity of base learners. In this paper, we study the problem of multi-label ensemble learning. Specifically, we aim at improving the generalization ability of multi-label learning systems by constructing a group of multi-label base learners which are both accurate and diverse. We propose a novel solution, called EnML, to effectively augment the accuracy as well as the diversity of multi-label base learners. In detail, we design two objective functions to evaluate the accuracy and diversity of multi-label base learners, respectively, and EnML simultaneously optimizes these two objectives with an evolutionary multi-objective optimization method. Experiments on real-world multi-label learning tasks validate the effectiveness of our approach against other well-established methods.
机译:多标签学习旨在针对给定实例预测潜在的多个标签。常规的多标签学习方法侧重于通过基于一组单标签学习者构建单个多标签学习者或组合学习者来利用标签相关性来提高学习者的准确性。但是,这样的个体学习者的泛化能力可能很弱。众所周知,集成学习可以通过构造多个基础学习者来有效地提高学习系统的泛化能力,并且集成的性能与基础学习者的准确性和多样性有关。在本文中,我们研究了多标签集成学习的问题。具体而言,我们旨在通过构建一组既准确又多样化的多标签基础学习器来提高多标签学习系统的泛化能力。我们提出一种新颖的解决方案,称为EnML,以有效地提高多标签基础学习者的准确性以及多样性。详细地说,我们设计了两个目标函数来分别评估多标签基础学习器的准确性和多样性,EnML同时使用进化的多目标优化方法来优化这两个目标。在现实世界中进行多标签学习任务的实验证明了我们的方法相对于其他公认的方法的有效性。

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