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Incremental learning of new classes from unbalanced data

机译:从不平衡数据中增量学习新课程

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Multiple classifier systems tend to suffer from outvoting when new concept classes need to be learned incrementally. Out-voting is primarily due to existing classifiers being unable to recognize the new class until there is a sufficient number of new classifiers that can influence the ensemble decision. This problem of learning new classes was explicitly addressed in Learn++.NC, our previous work, where ensemble members dynamically adjust their own weights by consulting with each other based on their individual and collective confidence in classifying each concept class. Learn++.NC works remarkably well for learning new concept classes while requiring few ensemble members to do so. Learn++.NC cannot cope with the class imbalance problem, however, as it was not designed to do so. Yet, class imbalance is a common and important problem in machine learning, made even more challenging in an incremental learning setting. In this paper, we extend Learn++.NC so that it can incrementally learn new concept classes even if their instances are drawn from severely imbalanced class distributions. We show that the proposed algorithm is quite robust compared to other state-of-the-art algorithms.
机译:当需要逐步学习新的概念课程时,多种分类器系统往往会遭受过度的。出版物主要是由于现有分类器无法识别新类,直到有足够数量的新分类器,可以影响集合决定。在学习 ++ .nc,我们以前的工作中,明确解决了新课程的这个问题,其中集合成员通过基于他们的个人和集体信心对每个人进行咨询来动态调整自己的权重概念课。学习 ++ .nc工作非常好,以便在需要几个集合成员时学习新概念类。了解 ++ .nc无法应对类别不平衡问题,但是,由于它不是设计为此。然而,类别不平衡是机器学习中的一个共同和重要的问题,在增量学习环境中取得了更具挑战性。在本文中,我们延长了学习 ++ .nc,使其即使它们的实例从严重不平衡的类分布中绘制,也可以逐步逐步学习新的概念类。我们表明,与其他最先进的算法相比,该算法非常坚固。

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