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Conditional Noise-Contrastive Estimation of Unnormalised Models

机译:无通知模型的条件噪声对比估计

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Many parametric statistical models are not properly normalised and only specified up to an intractable partition function, which renders parameter estimation difficult. Examples of unnormalised models are Gibbs distributions, Markov random fields, and neural network models in unsupervised deep learning. In previous work, the estimation principle called noise-contrastive estimation (NCE) was introduced where unnormalised models are estimated by learning to distinguish between data and auxiliary noise. An open question is how to best choose the auxiliary noise distribution. We here propose a new method that addresses this issue. The proposed method shares with NCE the idea of formulating density estimation as a supervised learning problem but in contrast to NCE, the proposed method leverages the observed data when generating noise samples. The noise can thus be generated in a semi-automated manner. We first present the underlying theory of the new method, show that score matching emerges as a limiting case, validate the method on continuous and discrete valued synthetic data, and show that we can expect an improved performance compared to NCE when the data lie in a lower-dimensional manifold. Then we demonstrate its applicability in unsupervised deep learning by estimating a four-layer neural image model.
机译:许多参数统计模型未正确标准化,并且仅指定为难以应变的分区功能,其呈现参数估计困难。无通知模型的例子是吉布斯分布,马尔可夫随机字段和无监督深度学习中的神经网络模型。在以前的工作中,引入了估计原则,称为噪声对比估计(NCE),其中通过学习估计非正式化模型以区分数据和辅助噪声。一个开放的问题是如何最好地选择辅助噪声分布。我们在这里提出了一种解决这个问题的新方法。所提出的方法与NCE共享将密度估计的思想作为监督学习问题,但与NCE相反,所提出的方法在产生噪声样本时利用观察到的数据。因此,可以以半自动化方式产生噪声。我们首先介绍了新方法的潜在理论,表明得分匹配作为一个限制情况,验证了连续和离散的合成数据的方法,并显示了与NCE相比,当数据位于NCE时,我们可以期待改进的性能低维歧管。然后,我们通过估计四层神经图像模型来展示其在无监督的深度学习中的适用性。

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