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Continuous Correlated Beta Processes

机译:连续相关的Beta流程

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摘要

In this paper we consider a (possibly continuous) space of Bernoulli experiments. We assume that the Bernoulli distributions are correlated. All evidence data comes in the form of successful or failed experiments at different points. Current state-of-the-art methods for expressing a distribution over a continuum of Bernoulli distributions use logistic Gaussian processes or Gaussian copula processes. However, both of these require computationally expensive matrix operations (cubic in the general case). We introduce a more intuitive approach, directly correlating beta distributions by sharing evidence between them according to a kernel function, an approach which has linear time complexity. The approach can easily be extended to multiple outcomes, giving a continuous correlated Dirichlet process, and can be used for both classification and learning the actual probabilities of the Bernoulli distributions. We show results for a number of data sets, as well as a case-study where a mixture of continuous beta processes is used as part of an automated stroke rehabilitation system.
机译:在本文中,我们考虑了伯努利实验的(可能是连续的)空间。我们假设伯努利分布是相关的。所有证据数据均以在不同时间点成功或失败的实验形式出现。用于表示连续的伯努利分布的分布的当前最先进的方法使用逻辑高斯过程或高斯copula过程。但是,这两种方法都需要计算量大的矩阵运算(通常情况下为立方运算)。我们引入了一种更直观的方法,即根据内核函数通过共享它们之间的证据来直接关联beta分布,该方法具有线性时间复杂度。该方法可以轻松地扩展到多个结果,从而给出连续相关的Dirichlet过程,并且可以用于分类和学习伯努利分布的实际概率。我们显示了许多数据集的结果,以及一个案例研究,在案例研究中,连续的beta流程的混合物被用作自动中风康复系统的一部分。

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