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| 分布外検出 (Out-of-Distribution Detection)× | モデルキャリブレーション× | |
|---|---|---|
| 分野 | 機械学習 | 機械学習 |
| 系統 | Machine learning | Machine learning |
| 提唱年 | 2017 | 2017 |
| 提唱者≠ | Hendrycks & Gimpel | Platt; Guo et al. |
| 種類≠ | Reliability and safety method for neural networks | Post-hoc probability correction technique |
| 原典≠ | Hendrycks, D., & Gimpel, K. (2017). A baseline for detecting misclassified and out-of-distribution examples in neural networks. International Conference on Learning Representations. link ↗ | Guo, C., Pleiss, G., Sun, Y., & Weinberger, K. Q. (2017). On calibration of modern neural networks. International Conference on Machine Learning, 1321–1330. link ↗ |
| 別名 | OOD Detection, Novelty Detection, Open-Set Recognition, Dağılım Dışı Tespit | Classifier Calibration, Probability Calibration, Score Calibration, Model Kalibrasyonu |
| 関連 | 3 | 3 |
| 概要≠ | Out-of-Distribution (OOD) detection is a set of techniques that identify when a deployed machine learning model receives inputs that differ significantly from its training data distribution. Introduced as a formal problem by Hendrycks and Gimpel in 2017, these methods enable models to flag unfamiliar inputs rather than silently produce unreliable predictions, making them foundational to trustworthy and safe AI deployment in high-stakes domains. | Model calibration is a post-hoc technique that adjusts the probability outputs of a trained classifier so that predicted confidence scores match empirical outcome frequencies. A classifier is said to be perfectly calibrated if, among all predictions made with confidence p, exactly a fraction p of them are correct. Systematic miscalibration of modern deep neural networks was rigorously documented by Guo et al. (2017), who showed that networks trained with standard cross-entropy loss tend to be overconfident, and proposed temperature scaling as a simple, effective remedy. |
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