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首页> 外文期刊>JMLR: Workshop and Conference Proceedings >Non-Parametric Calibration for Classification
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Non-Parametric Calibration for Classification

机译:用于分类的非参数校准

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摘要

Many applications of classification methods not only require high accuracy but also reliable estimation of predictive uncertainty. However, while many current classification frameworks, in particular deep neural networks, achieve high accuracy, they tend to incorrectly estimate uncertainty. In this paper, we propose a method that adjusts the confidence estimates of a general classifier such that they approach the probability of classifying correctly. In contrast to existing approaches, our calibration method employs a non-parametric representation using a latent Gaussian process, and is specifically designed for multi-class classification. It can be applied to any classifier that outputs confidence estimates and is not limited to neural networks. We also provide a theoretical analysis regarding the over- and underconfidence of a classifier and its relationship to calibration, as well as an empirical outlook for calibrated active learning. In experiments we show the universally strong performance of our method across different classifiers and benchmark data sets, in particular for state-of-the art neural network architectures.
机译:分类方法的许多应用不仅需要高精度,而且还需要可靠地估计预测性不确定性。然而,虽然许多当前分类框架,特别是深度神经网络,但实现高精度,但它们往往不正确估计不确定性。在本文中,我们提出了一种调整一般分类器的置信度估计的方法,使得它们能够正确地分类的概率。与现有方法相比,我们的校准方法采用了使用潜在的高斯过程的非参数表示,并且专门为多级分类设计。它可以应用于输出置信度估计的任何分类器,并且不限于神经网络。我们还提供了关于分类器的过度和不充分的校准关系的理论分析及其与校准的关系,以及校准的主动学习的经验前景。在实验中,我们在不同的分类器和基准数据集中展示了我们的方法的普遍性,特别是用于最先进的神经网络架构。

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