Vittorio Castelli, Lawrence Bergman
IUI 2007
We are building a topic-based, interactive visual analytic tool that aids users in analyzing large collections of text. To help users quickly discover content evolution and significant content transitions within a topic over time, here we present a novel, constraint-based approach to temporal topic segmentation. Our solution splits a discovered topic into multiple linear, non-overlapping sub-topics along a timeline by satisfying a diverse set of semantic, temporal, and visualization constraints simultaneously. For each derived subtopic, our solution also automatically selects a set of representative keywords to summarize the main content of the sub-topic. Our extensive evaluation, including a crowd-sourced user study, demonstrates the effectiveness of our method over an existing baseline. Copyright © 2013 ACM.
Vittorio Castelli, Lawrence Bergman
IUI 2007
Michael Heck, Masayuki Suzuki, et al.
INTERSPEECH 2017
Fan Zhang, Junwei Cao, et al.
IEEE TETC
Jean McKendree, John M. Carroll
CHI 1986