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Learning Nonsymmetric Determinantal Point Processes

机译:学习非对称的决定性点过程

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Determinantal point processes (DPPs) have attracted substantial attention as an elegant probabilistic model that captures the balance between quality and diversity within sets. DPPs are conventionally parameterized by a positive semi-definite kernel matrix, and this symmetric kernel encodes only repulsive interactions between items. These so-called symmetric DPPs have significant expressive power, and have been successfully applied to a variety of machine learning tasks, including recommendation systems, information retrieval, and automatic summarization, among many others. Efficient algorithms for learning symmetric DPPs and sampling from these models have been reasonably well studied. However, relatively little attention has been given to nonsymmetric DPPs, which relax the symmetric constraint on the kernel. Nonsymmetric DPPs allow for both repulsive and attractive item interactions, which can significantly improve modeling power, resulting in a model that may better fit for some applications. We present a method that enables a tractable algorithm, based on maximum likelihood estimation, for learning nonsymmetric DPPs from data composed of observed subsets. Our method imposes a particular decomposition of the nonsymmetric kernel that enables such tractable learning algorithms, which we analyze both theoretically and experimentally. We evaluate our model on synthetic and real-world datasets, demonstrating improved predictive performance compared to symmetric DPPs, which have previously shown strong performance on modeling tasks associated with these datasets.
机译:决定性点过程(DPP)吸引了大量关注作为优雅的概率模型,捕获套装内质量和多样性之间的平衡。 DPP通过正半确定内核矩阵传统地参数化,并且该对称内核仅对项目之间的排斥相互作用进行编码。这些所谓的对称DPP具有显着的表现力,并且已成功应用于各种机器学习任务,包括推荐系统,信息检索和自动摘要,其中许多其他机器。研究了学习对称DPP的高效算法以及这些模型的抽样的研究已经合理地研究。然而,已经对非对称DPP进行了相对较少的关注,其在内核上放松对称约束。 Nonsmmetric DPP允许对令人厌恶和有吸引力的物品交互,这可以显着提高建模能力,从而产生可能更适合某些应用的模型。我们介绍了一种方法,该方法基于最大似然估计,使得从由观察到的子集组成的数据学习非对称DPP。我们的方法对非对称内核的特定分解施加了一种能够实现这种易行的学习算法,我们在理论和实验中进行分析。我们在合成和现实数据集中评估我们的模型,与对称DPP相比,展示了改进的预测性能,这先前已经在与这些数据集相关联的建模任务方面表现出强烈性能。

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