Confidence calibration -- the problem of predicting probability estimates representative of the true correctness likelihood -- is important for classification models in many applications. We discover that modern neural networks, unlike those from a decade ago, are poorly calibrated. Through extensive experiments, we observe that depth, width, weight decay, and Batch Normalization are important factors influencing calibration. We evaluate the performance of various post-processing calibration methods on state-of-the-art architectures with image and document classification datasets. Our analysis and experiments not only offer insights into neural network learning, but also provide a simple and straightforward recipe for practical settings: on most datasets, temperature scaling -- a single-parameter variant of Platt Scaling -- is surprisingly effective at calibrating predictions.
On Calibration of Modern Neural Networks
Modern neural networks exhibit poor probability calibration, and temperature scaling is effective across various datasets and architectures.
- Year
- 2017
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- on-calibration-of-modern-neural-networks-1
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- 4
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- Abstract onlyARXIV-DEFAULT
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- arxiv.org/abs/1706.04599v2ARXIV-DEFAULT
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