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Approximate maximum entropy principles via Goemans-Williamson with applications to provable variational methods

机译:Goemans-Williamson提出的近似最大熵原理及其在可证明的变分方法中的应用

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The well known maximum-entropy principle due to Jaynes, which states that given mean parameters, the maximum entropy distribution matching them is in an exponential family has been very popular in machine learning due to its "Occam's razor" interpretation. Unfortunately, calculating the potentials in the maximum-entropy distribution is intractable [BGS14]. We provide computationally efficient versions of this principle when the mean parameters are pairwise moments: we design distributions that approximately match given pairwise moments, while having entropy which is comparable to the maximum entropy distribution matching those moments. We additionally provide surprising applications of the approximate maximum entropy principle to designing provable variational methods for partition function calculations for Ising models without any assumptions on the potentials of the model. More precisely, we show that we can get approximation guarantees for the log-partition function comparable to those in the low-temperature limit, which is the setting of optimization of quadratic forms over the hypercube. ([AN06]).
机译:归因于贾恩斯(Jaynes),它是众所周知的最大熵原理,该原理指出,给定平均参数,与它们匹配的最大指数分布属于指数族,这是由于其“ Occam剃刀”的解释在机器学习中非常流行。不幸的是,计算最大熵分布中的势是很棘手的[BGS14]。当平均参数为成对矩时,我们提供此原理的计算有效版本:我们设计的分布近似匹配给定的成对矩,同时具有与匹配这些矩的最大熵分布可比的熵。我们还提供了近似最大熵原理的惊人应用,以为Ising模型的分区函数计算设计可证明的变分方法,而无需对模型的潜力进行任何假设。更确切地说,我们表明,我们可以得到与低温极限下的对数分区函数相当的近似保证,这是超立方体上二次形式的优化设置。 ([AN06])。

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