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Maximum Likelihood Learning With Arbitrary Treewidth via Fast-Mixing Parameter Sets

机译:通过快速混合参数集以任意树宽进行最大似然学习

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Inference is typically intractable in high-treewidth undirected graphical models, making maximum likelihood learning a challenge. One way to overcome this is to restrict parameters to a tractable set, most typically the set of tree-structured parameters. This paper explores an alternative notion of a tractable set, namely a set of "fast-mixing parameters" where Markov chain Monte Carlo (MCMC) inference can be guaranteed to quickly converge to the stationary distribution. While it is common in practice to approximate the likelihood gradient using samples obtained from MCMC, such procedures lack theoretical guarantees. This paper proves that for any exponential family with bounded sufficient statistics, (not just graphical models) when parameters are constrained to a fast-mixing set, gradient descent with gradients approximated by sampling will approximate the maximum likelihood solution inside the set with high-probability. When unregularized, to find a solution ε-accurate in log-likelihood requires a total amount of effort cubic in 1 /ε, disregarding logarithmic factors. When ridge-regularized, strong convexity allows a solution ε-accurate in parameter distance with effort quadratic in 1/ε. Both of these provide of a fully-polynomial time randomized approximation scheme.
机译:推理在高树宽无向图形模型中通常很难处理,这使得学习最大可能性成为挑战。解决此问题的一种方法是将参数限制为易于处理的集合,最常见的是树状结构参数的集合。本文探讨了易处理集的另一种概念,即一组“快速混合参数”,其中可以保证马尔可夫链蒙特卡罗(MCMC)推断可以快速收敛到平稳分布。尽管在实践中通常使用从MCMC获得的样本来近似似然梯度,但此类过程缺乏理论上的保证。本文证明,对于任何具有有限统计量的指数族(不仅仅是图形模型),当将参数约束到快速混合集时,具有通过采样近似的梯度的梯度下降将以高概率逼近集合内的最大似然解。 。当不规则时,要忽略对数因子,找到对数似然的ε精确解需要以1 /ε为单位的总工作量。当进行山脊正则化时,强凸度可以使参数距离的ε精确,而力的平方为1 /ε的平方。两者都提供了全多项式时间随机逼近方案。

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