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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >Combining deep generative and discriminative models for Bayesian semi-supervised learning
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Combining deep generative and discriminative models for Bayesian semi-supervised learning

机译:结合贝叶斯半监督学习的深生成和鉴别模型

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摘要

Generative models can be used for a wide range of tasks, and have the appealing ability to learn from both labelled and unlabelled data. In contrast, discriminative models cannot learn from unlabelled data, but tend to outperform their generative counterparts in supervised tasks. We develop a framework to jointly train deep generative and discriminative models, enjoying the benefits of both. The framework allows models to learn from labelled and unlabelled data, as well as naturally account for uncertainty in predictive distributions, providing the first Bayesian approach to semi-supervised learning with deep generative models. We demonstrate that our blended discriminative and generative models outperform purely generative models in both predictive performance and uncertainty calibration in a number of semi-supervised learning tasks. (C) 2019 The Authors. Published by Elsevier Ltd.
机译:生成模型可用于广泛的任务,并具有吸引标记和未标记数据的吸取能力。 相比之下,歧视模型无法从未标记的数据中学习,但倾向于以监督任务中的那些生成的对应表达。 我们制定一个框架,共同培训深入生成和歧视模型,享受两者的好处。 该框架允许模型从标签和未标记的数据中学习,以及自然地解释预测性分布中的不确定性,为第一批贝叶斯方向与深度生成模型进行半监督学习。 我们表明,我们的混合鉴别和生成模型在许多半监督学习任务中的预测性能和不确定性校准方面优于纯粹的生成模型。 (c)2019年作者。 elsevier有限公司出版

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