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Variational Noise-Contrastive Estimation

机译:变异噪声对比估计

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Unnormalised latent variable models are a broad and flexible class of statistical models. However, learning their parameters from data is intractable, and few estimation techniques are currently available for such models. To increase the number of techniques in our arsenal, we propose variational noise-contrastive estimation (VNCE), building on NCE which is a method that only applies to unnormalised models. The core idea is to use a variational lower bound to the NCE objective function, which can be optimised in the same fashion as the evidence lower bound (ELBO) in standard variational inference (VI). We prove that VNCE can be used for both parameter estimation of unnormalised models and posterior inference of latent variables. The developed theory shows that VNCE has the same level of generality as standard VI, meaning that advances made there can be directly imported to the unnormalised setting. We validate VNCE on toy models and apply it to a realistic problem of estimating an undirected graphical model from incomplete data.
机译:非规范化的潜在变量模型是统计模型的广泛而灵活的一类。然而,从数据中学习它们的参数是棘手的,并且目前很少有估计技术可用于这种模型。为了增加我们军械库中的技术数量,我们在NCE的基础上提出了变噪声对比估计(VNCE),该方法仅适用于非标准化模型。核心思想是对NCE目标函数使用变分下界,可以按照与标准变分推论(VI)中的证据下界(ELBO)相同的方式对其进行优化。我们证明了VNCE可以用于非规范化模型的参数估计和潜在变量的后验。发达的理论表明,VNCE具有与标准VI相同的通用性,这意味着可以将那里取得的进步直接导入到非规范化设置中。我们验证玩具模型上的VNCE,并将其应用于从不完整数据估计无向图形模型的现实问题。

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