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首页> 外文期刊>JMLR: Workshop and Conference Proceedings >Faster Greedy MAP Inference for Determinantal Point Processes
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Faster Greedy MAP Inference for Determinantal Point Processes

机译:行列式点过程的更快贪婪MAP推断

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Determinantal point processes (DPPs) are popular probabilistic models that arise in many machine learning tasks, where distributions of diverse sets are characterized by determinants of their features. In this paper, we develop fast algorithms to find the most likely configuration (MAP) of large-scale DPPs, which is NP-hard in general. Due to the submodular nature of the MAP objective, greedy algorithms have been used with empirical success. Greedy implementations require computation of log-determinants, matrix inverses or solving linear systems at each iteration. We present faster implementations of the greedy algorithms by utilizing the orthogonal benefits of two log-determinant approximation schemes: (a) first-order expansions to the matrix log-determinant function and (b) high-order expansions to the scalar log function with stochastic trace estimators. In our experiments, our algorithms are orders of magnitude faster than their competitors, while sacrificing marginal accuracy.
机译:行列式点过程(DPP)是在许多机器学习任务中出现的流行概率模型,其中不同集合的分布以行列式特征为特征。在本文中,我们开发了快速算法来查找大型DPP的最有可能的配置(MAP),通常这是NP难的。由于MAP物镜的亚模性质,贪婪算法已获得了成功的经验。贪婪的实现需要在每次迭代中计算对数行列式,矩阵逆或求解线性系统。我们利用两个对数行列式近似方案的正交收益,提出了贪心算法的更快实现:(a)矩阵对数行列式函数的一阶展开和(b)随机对标量对数函数的高阶展开跟踪估计器。在我们的实验中,我们的算法比竞争对手快了几个数量级,同时牺牲了边际精度。

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