Characterizing Social TV Activity Around Televised Events: A Joint Topic Model Approach

Author:

Hu Yuheng1ORCID

Affiliation:

1. Department of Information and Decision Sciences, College of Business Administration, University of Illinois at Chicago, Chicago, Illinois 60607

Abstract

Viewers often use social media platforms like Twitter to express their views about televised programs and events like the presidential debate, the Oscars, and the State of the Union speech. Although this promises tremendous opportunities to analyze the feedback on a program or an event using viewer-generated content on social media, there are significant technical challenges to doing so. Specifically, given a televised event and related tweets about this event, we need methods to effectively align these tweets and the corresponding event. In turn, this will raise many questions, such as how to segment the event and how to classify a tweet based on whether it is generally about the entire event or specifically about one particular event segment. In this paper, we propose and develop a novel joint Bayesian model that aligns an event and its related tweets based on the influence of the event’s topics. Our model allows the automated event segmentation and tweet classification concurrently. We present an efficient inference method for this model and a comprehensive evaluation of its effectiveness compared with the state-of-the-art methods. We find that the topics, segments, and alignment provided by our model are significantly more accurate and robust.

Publisher

Institute for Operations Research and the Management Sciences (INFORMS)

Subject

General Engineering

Reference46 articles.

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2. Benton A, Hill S (2012) The spoiler effect? Designing social TV content that promotes ongoing WOM. Conf. Inform. Systems Tech., Arizona.

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