Training Confidence-calibrated Classifiers for Detecting Out-of-Distribution Samples
November 26, 2017 Β· Declared Dead Β· π International Conference on Learning Representations
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Authors
Kimin Lee, Honglak Lee, Kibok Lee, Jinwoo Shin
arXiv ID
1711.09325
Category
stat.ML: Machine Learning (Stat)
Cross-listed
cs.LG
Citations
928
Venue
International Conference on Learning Representations
Last Checked
1 month ago
Abstract
The problem of detecting whether a test sample is from in-distribution (i.e., training distribution by a classifier) or out-of-distribution sufficiently different from it arises in many real-world machine learning applications. However, the state-of-art deep neural networks are known to be highly overconfident in their predictions, i.e., do not distinguish in- and out-of-distributions. Recently, to handle this issue, several threshold-based detectors have been proposed given pre-trained neural classifiers. However, the performance of prior works highly depends on how to train the classifiers since they only focus on improving inference procedures. In this paper, we develop a novel training method for classifiers so that such inference algorithms can work better. In particular, we suggest two additional terms added to the original loss (e.g., cross entropy). The first one forces samples from out-of-distribution less confident by the classifier and the second one is for (implicitly) generating most effective training samples for the first one. In essence, our method jointly trains both classification and generative neural networks for out-of-distribution. We demonstrate its effectiveness using deep convolutional neural networks on various popular image datasets.
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