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Dynamic Ensemble Selection with Probabilistic Classifier Chains

机译:具有概率分类器链的动态集成选择

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摘要

Dynamic ensemble selection (DES) is the problem of finding, given an input x, a subset of models among the ensemble that achieves the best possible prediction accuracy. Recent studies have reformulated the DES problem as a multi-label classification problem and promising performance gains have been reported. However, their approaches may converge to an incorrect, and hence suboptimal, solution as they don't optimize the true - but non standard - loss function directly. In this paper, we show that the label dependencies have to be captured explicitly and propose a DES method based on Probabilistic Classifier Chains. Experimental results on 20 benchmark data sets show the effectiveness of the proposed method against competitive alternatives, including the aforementioned multi-label approaches. This study is reproducible and the source code has been made available online (https://github.com/ naranil/pcc_des).
机译:动态集成选择(DES)是在给定输入x的情况下在集成中找到可实现最佳预测精度的模型子集的问题。最近的研究已经将DES问题重新定义为多标签分类问题,并且已经报道了有希望的性能提升。但是,它们的方法可能会收敛到一个错误的解决方案,因此是次优的解决方案,因为它们没有直接优化真实的(但非标准的)损失函数。在本文中,我们表明必须明确捕获标签依赖关系,并提出一种基于概率分类器链的DES方法。在20个基准数据集上的实验结果表明,所提出的方法针对竞争性替代方案(包括上述多标签方法)的有效性。这项研究具有可重复性,其源代码已在线提供(https://github.com/ naranil / pcc_des)。

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