所有视图中的一个主题:在多个上下文中建模共识主题

Jian Tang, Ming Zhang, Q. Mei
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引用次数: 50

摘要

当应用于社交媒体时,经典主题模型面临着新的挑战,因为用户生成的内容遭受着数据稀疏性的严重问题。对这些模型提出了各种启发式调整,其中许多是基于使用上下文信息来提高主题建模的性能。现有的上下文化主题模型依赖于对模型结构的任意操纵,通过将各种上下文变量以一种特殊的方式纳入经典主题模型的生成过程。这样的操作通常会导致更复杂的模型结构、复杂的推理过程和较低的泛化性,以适应任意类型或上下文组合。在本文中,我们探索了一个不同的方向。我们提出了一个通用的解决方案,它能够利用多种类型的上下文,而不需要任意操纵经典主题模型的结构。我们将不同类型的上下文表述为语料库分割的多个视图。提出了一种协同正则化框架,使这些视图相互协作,对共识主题进行投票,并将其与特定于视图的主题区分开来。实际数据集的实验证明了该方法在处理任意类型上下文时的有效性和灵活性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
One theme in all views: modeling consensus topics in multiple contexts
New challenges have been presented to classical topic models when applied to social media, as user-generated content suffers from significant problems of data sparseness. A variety of heuristic adjustments to these models have been proposed, many of which are based on the use of context information to improve the performance of topic modeling. Existing contextualized topic models rely on arbitrary manipulation of the model structure, by incorporating various context variables into the generative process of classical topic models in an ad hoc manner. Such manipulations usually result in much more complicated model structures, sophisticated inference procedures, and low generalizability to accommodate arbitrary types or combinations of contexts. In this paper we explore a different direction. We propose a general solution that is able to exploit multiple types of contexts without arbitrary manipulation of the structure of classical topic models. We formulate different types of contexts as multiple views of the partition of the corpus. A co-regularization framework is proposed to let these views collaborate with each other, vote for the consensus topics, and distinguish them from view-specific topics. Experiments with real-world datasets prove that the proposed method is both effective and flexible to handle arbitrary types of contexts.
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