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Noise Robust Discriminative Models

机译:噪声鲁棒判别模型

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摘要

For classification problems, it is important that the classifier is trained with data which is likely to appear in the future. Discriminative models, because of their nature to focus on the boundary between classes rather than data itself, usually do not have the capability to deal with noisy training data. We propose the use of generative models as filters to make discriminative models more robust against noise. Firstly the distribution of the training data is estimated, then examples which do not satisfy some criterion, like having low likelihood, will be considered as outliers and discarded before training discriminative models. The idea was tested on a noisy data set from the UCI Machine Learning Repository.
机译:对于分类问题,重要的是用可能在将来出现的数据训练分类器。区分性模型由于专注于类之间的边界而不是数据本身,因此通常不具有处理嘈杂的训练数据的能力。我们建议使用生成模型作为过滤器,以使区分模型对噪声的鲁棒性更高。首先估计训练数据的分布,然后在训练判别模型之前将不满足某些标准(例如,可能性低)的示例视为异常值并丢弃。这个想法已经在UCI机器学习存储库中的嘈杂数据集上进行了测试。

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