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The Supervised Hierarchical Dirichlet Process

机译:监督层次Dirichlet过程

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摘要

We propose the supervised hierarchical Dirichlet process (sHDP), a nonparametric generative model for the joint distribution of a group of observations and a response variable directly associated with that whole group. We compare the sHDP with another leading method for regression on grouped data, the supervised latent Dirichlet allocation (sLDA) model. We evaluate our method on two real-world classification problems and two real-world regression problems. Bayesian nonparametric regression models based on the Dirichlet process, such as the Dirichlet process-generalised linear models (DP-GLM) have previously been explored; these models allow flexibility in modelling nonlinear relationships. However, until now, hierarchical Dirichlet process (HDP) mixtures have not seen significant use in supervised problems with grouped data since a straightforward application of the HDP on the grouped data results in learnt clusters that are not predictive of the responses. The sHDP solves this problem by allowing for clusters to be learnt jointly from the group structure and from the label assigned to each group.
机译:我们提出了监督分层狄里克雷过程(sHDP),这是一组观察值和与该整个组直接相关的响应变量的联合分布的非参数生成模型。我们将sHDP与用于对分组数据进行回归的另一种领先方法(监督的潜在狄利克雷分配(sLDA)模型)进行了比较。我们在两个真实世界的分类问题和两个真实世界的回归问题上评估我们的方法。以前已经研究了基于Dirichlet过程的贝叶斯非参数回归模型,例如Dirichlet过程广义线性模型(DP-GLM)。这些模型允许灵活地建模非线性关系。但是,直到现在,分层Dirichlet过程(HDP)混合物尚未在具有分组数据的监督问题中得到显着应用,因为将HDP直接应用于分组数据会导致学习集群无法预测响应。 sHDP通过允许从组结构和分配给每个组的标签一起学习群集来解决此问题。

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