2017
NIPS
NeurIPS 2017
ALICE: Towards Understanding Adversarial Learning for Joint Distribution Matching
Abstract
We investigate the non-identifiability issues associated with bidirectional adversarial training for joint distribution matching. Within a framework of conditional entropy, we propose both adversarial and non-adversarial approaches to learn desirable matched joint distributions for unsupervised and supervised tasks. We unify a broad family of adversarial models as joint distribution matching problems. Our approach stabilizes learning of unsupervised bidirectional adversarial learning methods. Further, we introduce an extension for semi-supervised learning tasks. Theoretical results are validated in synthetic data and real-world applications.
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Interdisciplinary Bridge
— Deep Learning and Machine Learning
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Trend Setter
— Distribution Shift
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Keyword Pioneer
— joint distribution matching
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Hot Topic Early Bird
— distribution matching
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Cross-Pollinator
— Artificial Intelligence, Computer Science, Computer Vision, Data Science & Analytics, Deep Learning, Healthcare & Medicine, Interdisciplinary, Knowledge & Reasoning, Machine Learning, Mathematics & Optimization, Natural Language Processing, Reinforcement Learning, Robotics, Security & Privacy, Speech & Audio
Authors
Topics
Machine Learning > Learning Types > Adversarial Learning
Machine Learning > Learning Types > Semi-Supervised Learning
Machine Learning > Optimization & Theory > Bayesian Inference
Machine Learning > Optimization & Theory > Theory
Deep Learning > Learning Types > Adversarial Learning
Deep Learning > Learning Types > Generative Models
Machine Learning > Learning Types > Distribution Shift