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Applications of Topic Models
Author(s): Jordan Boyd-Graber;Yuening Hu;David Mimno
Source: Journal:Foundations and Trends® in Information Retrieval ISSN Print:1554-0669, ISSN Online:1554-0677 Publisher:Now Publishers Volume 11 Number 2-3, Pages: 158(143-296) DOI: 10.1561/1500000030
Abstract:
How can a single person understand what’s going on in a collection of
millions of documents? This is an increasingly common problem: sifting
through an organization’s e-mails, understanding a decade worth of
newspapers, or characterizing a scientific field’s research. Topic models
are a statistical framework that help users understand large document
collections: not just to find individual documents but to understand the
general themes present in the collection.
This survey describes the recent academic and industrial applications
of topic models with the goal of launching a young researcher capable
of building their own applications of topic models. In addition to topic
models’ effective application to traditional problems like information
retrieval, visualization, statistical inference, multilingual modeling, and
linguistic understanding, this survey also reviews topic models’ ability
to unlock large text collections for qualitative analysis. We review their
successful use by researchers to help understand fiction, non-fiction,
scientific publications, and political texts.
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