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データ拡張(Data Augmentation)×Generative Adversarial Network×分布外検出 (Out-of-Distribution Detection)×
分野深層学習深層学習機械学習
系統Machine learningMachine learningMachine learning
提唱年201920142017
提唱者Connor Shorten & Taghi KhoshgoftaarGoodfellow, I. et al.Hendrycks & Gimpel
種類Regularization / data preprocessing techniqueGenerative deep learning (adversarial two-network game)Reliability and safety method for neural networks
原典Shorten, C., & Khoshgoftaar, T. M. (2019). A survey on image data augmentation for deep learning. Journal of Big Data, 6, 60. DOI ↗Goodfellow, I. et al. (2014). Generative Adversarial Nets. NeurIPS. link ↗Hendrycks, D., & Gimpel, K. (2017). A baseline for detecting misclassified and out-of-distribution examples in neural networks. International Conference on Learning Representations. link ↗
別名Training Data Augmentation, Image Augmentation, Veri Artırma, Synthetic Data AugmentationÜretici Çekişmeli Ağ (GAN), GAN, generative adversarial nets, adversarial networkOOD Detection, Novelty Detection, Open-Set Recognition, Dağılım Dışı Tespit
関連243
概要Data augmentation is a family of techniques that artificially expands a training dataset by applying label-preserving transformations to existing samples. Originally systematized for image classification tasks, it is now applied broadly across vision, text, audio, and tabular domains. It emerged as a practical answer to the chronic scarcity of labeled data in supervised deep learning and remains a standard preprocessing step in modern neural network pipelines.A Generative Adversarial Network (GAN), introduced by Ian Goodfellow and colleagues in 2014, produces realistic synthetic data through the competition of two neural networks — a generator and a discriminator. It is widely used for image synthesis, data augmentation, and distribution estimation.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.
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ScholarGate手法を比較: Data Augmentation · Generative Adversarial Network · Out-of-Distribution Detection. 2026-06-19に以下より取得 https://scholargate.app/ja/compare