深度加权平均分类器

Dallas Card, Michael J.Q. Zhang, Noah A. Smith
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引用次数: 39

摘要

深度学习的最新进展在各种类型的数据(包括图像和文本)的分类准确性方面取得了令人印象深刻的进展。然而,尽管取得了这些成果,但人们对这些模型的校准、稳健性和可解释性提出了担忧。在本文中,我们提出了一种简单的方法来修改任何传统的深度架构,以自动为分类决策提供更透明的解释,以及每个预测可信度的直观概念。具体来说,我们借鉴了非参数核回归的思想,并提出基于训练实例的加权和来预测标签,其中权重由学习到的实例嵌入空间中的距离决定。在共形方法的框架内,我们提出了一种由我们的模型提出的新的不一致性测量方法,并通过实验验证了伴随的理论期望,证明了改进的透明度,控制错误率和对域外数据的鲁棒性,而不影响准确性或校准。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Deep Weighted Averaging Classifiers
Recent advances in deep learning have achieved impressive gains in classification accuracy on a variety of types of data, including images and text. Despite these gains, however, concerns have been raised about the calibration, robustness, and interpretability of these models. In this paper we propose a simple way to modify any conventional deep architecture to automatically provide more transparent explanations for classification decisions, as well as an intuitive notion of the credibility of each prediction. Specifically, we draw on ideas from nonparametric kernel regression, and propose to predict labels based on a weighted sum of training instances, where the weights are determined by distance in a learned instance-embedding space. Working within the framework of conformal methods, we propose a new measure of nonconformity suggested by our model, and experimentally validate the accompanying theoretical expectations, demonstrating improved transparency, controlled error rates, and robustness to out-of-domain data, without compromising on accuracy or calibration.
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