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Topic Modeling for Multi-Aspect Listwise Comparisons
Speaker (s):

ZHANG Ce
PhD Candidate
School of Computing and Information Systems
Singapore Management University
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Date:
Time:
Venue:
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21 October 2021, Thursday
2:00pm - 2:30pm
This is a virtual seminar. Please register by 19 October, the zoom link will be sent out on the following day to those who registered.
We look forward to seeing you at this research seminar.

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About the Talk
In this talk, I will share the first-author paper accepted by CIKM-21. As a well-established probabilistic method, topic models seek to uncover latent semantics from plain text. In addition to having textual content, we observe that documents are usually compared in listwise rankings based on their content. For instance, world-wide countries are compared in an international ranking in terms of electricity production based on their national reports. Such document comparisons constitute additional information that reveal documents’ relative similarities. Incorporating them into topic modeling could yield comparative topics that help to differentiate and rank documents. Furthermore, based on different comparison criteria, the observed document comparisons usually cover multiple aspects, each expressing a distinct ranked list. For example, a country may be ranked higher in terms of electricity production, but fall behind others in terms of life expectancy or government budget. Each comparison criterion, or aspect, observes a distinct ranking. Considering such multiple aspects of comparisons based on different ranking criteria allows us to derive one set of topics that inform heterogeneous document similarities. We propose a generative topic model aimed at learning topics that are well aligned to multi-aspect listwise comparisons. Experiments on public datasets demonstrate the advantage of the proposed method in jointly modeling topics and ranked lists against baselines comprehensively.
About the Speaker
ZHANG Ce is a PhD Candidate in Computer Science at the SMU School of Computing and Information Systems, supervised by Prof. Hady W. Lauw. His research focuses on graph representation learning and neural topic modeling.
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