概率分类器输出的性能不可知融合

Jordan F. Masakuna, S. Utete, Steve Kroon
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引用次数: 3

摘要

我们提出了一种方法,当没有关于单个分类器的进一步信息可用时,将分类器的概率输出组合在一起,以做出单个共识类预测,除此之外,它们已经接受了相同任务的训练。缺乏相关的先验信息排除了贝叶斯或Dempster-Shafer方法的典型应用,这里的默认方法是基于无差异原则的方法,例如求和或乘积规则,这些规则基本上对所有分类器进行了平等的加权。相比之下,我们的方法考虑了各种分类器输出之间的多样性,根据它们与其他预测的对应关系迭代更新预测,直到预测收敛到共识决策。这种方法背后的直觉是,为相同任务训练的分类器通常应该在新任务的输出中表现出规律性;因此,使用我们的方法,分类器的预测与其他分类器的预测明显不同,因此信任度较低。该方法隐式地假设了一个对称损失函数,因为没有考虑到各种预测误差的相对代价。在不同的基准数据集上验证了该模型的性能。我们提出的方法在精度是性能指标的情况下工作得很好;然而,它不输出校准概率,因此不适合在需要进一步处理这些概率的情况下。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Performance-Agnostic Fusion of Probabilistic Classifier Outputs
We propose a method for combining probabilistic outputs of classifiers to make a single consensus class prediction when no further information about the individual classifiers is available, beyond that they have been trained for the same task. The lack of relevant prior information rules out typical applications of Bayesian or Dempster-Shafer methods, and the default approach here would be methods based on the principle of indifference, such as the sum or product rule, which essentially weight all classifiers equally. In contrast, our approach considers the diversity between the outputs of the various classifiers, iteratively updating predictions based on their correspondence with other predictions until the predictions converge to a consensus decision. The intuition behind this approach is that classifiers trained for the same task should typically exhibit regularities in their outputs on a new task; the predictions of classifiers which differ significantly from those of others are thus given less credence using our approach. The approach implicitly assumes a symmetric loss function, in that the relative cost of various prediction errors are not taken into account. Performance of the model is demonstrated on different benchmark datasets. Our proposed method works well in situations where accuracy is the performance metric; however, it does not output calibrated probabilities, so it is not suitable in situations where such probabilities are required for further processing.
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