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Antithetic and Monte Carlo kernel estimators for partial rankings

机译:对立和蒙特卡洛核估计器的部分排名

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In the modern age, rankings data are ubiquitous and they are useful for a variety of applications such as recommender systems, multi-object tracking and preference learning. However, most rankings data encountered in the real world are incomplete, which prevent the direct application of existing modelling tools for complete rankings. Our contribution is a novel way to extend kernel methods for complete rankings to partial rankings, via consistent Monte Carlo estimators for Gram matrices: matrices of kernel values between pairs of observations. We also present a novel variance-reduction scheme based on an antithetic variate construction between permutations to obtain an improved estimator for the Mallows kernel. The corresponding antithetic kernel estimator has lower variance, and we demonstrate empirically that it has a better performance in a variety of machine learning tasks. Both kernel estimators are based on extending kernel mean embeddings to the embedding of a set of full rankings consistent with an observed partial ranking. They form a computationally tractable alternative to previous approaches for partial rankings data. An overview of the existing kernels and metrics for permutations is also provided.
机译:在当今时代,排名数据无处不在,对于推荐应用系统,多对象跟踪和偏好学习等各种应用非常有用。但是,现实世界中遇到的大多数排名数据都是不完整的,这阻止了直接使用现有建模工具进行完整排名。我们的贡献是一种新颖的方法,它可以通过一致的蒙特卡洛估计器将Gram矩阵的完整排序的核方法扩展为部分排序:成对的观测值之间的核值矩阵。我们还提出了一种新的方差减少方案,该方案基于置换之间的对立变量构造来获得Mallows内核的改进估计量。相应的对立核估计量具有较低的方差,并且我们凭经验证明其在各种机器学习任务中具有更好的性能。两种核估计器均基于将核均值扩展扩展为嵌入与观察到的部分排名一致的一组完整排名。它们形成了对部分排名数据的先前方法的计算上易于处理的替代方案。还概述了现有内核和排列指标。

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