Constructing topical hierarchies in heterogeneous information networks

作者:Chi Wang, Jialu Liu, Nihit Desai, Marina Danilevsky, Jiawei Han

摘要

Many digital documentary data collections (e.g., scientific publications, enterprise reports, news articles, and social media) can be modeled as a heterogeneous information network, linking text with multiple types of entities. Constructing high-quality hierarchies that can represent topics at multiple granularities benefits tasks such as search, information browsing, and pattern mining. In this work, we present an algorithm for recursively constructing multi-typed topical hierarchies. Contrary to traditional text-based topic modeling, our approach handles both textual phrases and multiple types of entities by a newly designed clustering and ranking algorithm for heterogeneous network data, as well as mining and ranking topical patterns of different types. Our experiments on datasets from two different domains demonstrate that our algorithm yields high-quality, multi-typed topical hierarchies.

论文关键词:Topic hierarchy, Information network, Link mining, Text mining, Topic modeling

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论文官网地址:https://doi.org/10.1007/s10115-014-0777-4