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On Approximations of the Beta Process in Latent Feature Models: Point Processes Approach

机译:在潜在特征模型中β过程的近似值:点过程方法

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Abstract In recent times, the beta process has been widely used as a nonparametric prior for different models in machine learning, including latent feature models. In this paper, we prove the asymptotic consistency of the finite dimensional approximation of the beta process due to Paisley and Carin (2009). In particular, we show that this finite approximation converges in distribution to the Ferguson and Klass representation of the beta process. We implement this approximation to derive asymptotic properties of functionals of the finite dimensional beta process. In addition, we derive an almost sure approximation of the beta process. This new approximation provides a direct method to efficiently simulate the beta process. A simulated example, illustrating the work of the method and comparing its performance to several existing algorithms, is also included.
机译:摘要近来,在机器学习中的不同模型之前,Beta过程已被广泛用作非参数,包括潜在特征模型。 在本文中,我们证明了由于佩斯利和克林(2009)引起的β过程的有限尺寸近似的渐近一致性。 特别地,我们表明,这种有限近似会聚到弗格森和klass表示的弗格森和klass表示。 我们实现了这种近似,以导出有限维β过程的功能的渐近属性。 此外,我们几乎肯定近似测试了测试过程。 该新近似提供了一种直接的方法,可以有效地模拟Beta过程。 还包括模拟示例,示出了该方法的工作并将其对几种现有算法进行比较。

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