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Learning Algorithms for the Classification Restricted Boltzmann Machine

机译:分类受限玻尔兹曼机的学习算法

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Recent developments have demonstrated the capacity of restricted Boltzmann machines (RBM) to be powerful generative models, able to extract useful features from input data or construct deep artificial neural networks. In such settings, the RBM only yields a preprocessing or an initialization for some other model, instead of acting as a complete supervised model in its own right. In this paper, we argue that RBMs can provide a self-contained framework for developing competitive classifiers. We study the Classification RBM (ClassRBM), a variant on the RBM adapted to the classification setting. We study different strategies for training the ClassRBM and show that competitive classification performances can be reached when appropriately combining discriminative and generative training objectives. Since training according to the generative objective requires the computation of a generally intractable gradient, we also compare different approaches to estimating this gradient and address the issue of obtaining such a gradient for problems with very high dimensional inputs. Finally, we describe how to adapt the ClassRBM to two special cases of classification problems, namely semi-supervised and multitask learning. color="gray">
机译:最近的发展表明,受限的玻尔兹曼机(RBM)具有强大的生成模型的能力,能够从输入数据中提取有用的特征或构建深层的人工神经网络。在这种情况下,RBM仅对某些其他模型进行预处理或初始化,而不能单独充当完整的受监管模型。在本文中,我们认为RBM可以为开发竞争性分类器提供一个独立的框架。我们研究了分类RBM(ClassRBM),这是RBM上适应分类设置的一种变体。我们研究了用于培训ClassRBM的不同策略,并表明,适当地结合区分性和生成性培训目标,可以达到竞争性的分类表现。由于根据生成目标进行训练需要计算通常难以处理的梯度,因此,我们还比较了估计该梯度的不同方法,并解决了针对具有非常高维输入的问题获得这种梯度的问题。最后,我们描述如何使ClassRBM适应分类问题的两种特殊情况,即半监督学习和多任务学习。 color =“ gray”>

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