Topic Scaling: A Joint Document Scaling -- Topic Model Approach To Learn Time-Specific Topics
Sami Diaf, Ulrich Fritsche

TL;DR
This paper introduces Topic Scaling, a novel joint document-topic modeling approach that ranks topics within a document scale to analyze temporal evolution without predefined time intervals.
Contribution
It presents a two-stage algorithm combining document scaling and supervised topic modeling to explain document positions and track topic evolution over time.
Findings
Accurately predicts document positions from topic scores.
Reveals hidden, hierarchical topic structures.
Tracks topic evolution across political terms.
Abstract
This paper proposes a new methodology to study sequential corpora by implementing a two-stage algorithm that learns time-based topics with respect to a scale of document positions and introduces the concept of Topic Scaling which ranks learned topics within the same document scale. The first stage ranks documents using Wordfish, a Poisson-based document scaling method, to estimate document positions that serve, in the second stage, as a dependent variable to learn relevant topics via a supervised Latent Dirichlet Allocation. This novelty brings two innovations in text mining as it explains document positions, whose scale is a latent variable, and ranks the inferred topics on the document scale to match their occurrences within the corpus and track their evolution. Tested on the U.S. State Of The Union two-party addresses, this inductive approach reveals that each party dominates one end…
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Taxonomy
TopicsAdvanced Text Analysis Techniques · Computational and Text Analysis Methods · Topic Modeling
