Conflict structure of movies as a predictor of preference similarity between movies
In this study, we propose a novel method of predicting preference similarity for movies by focusing on their narrative structures. Based on Heider’s balance theory and the generalized concept of structural balance, we hypothesize that the similarity of conflict structure portrayed in movies will pre...
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Nanyang Technological University
2021
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sg-ntu-dr.10356-1471412023-03-05T16:09:33Z Conflict structure of movies as a predictor of preference similarity between movies Ling, Audrey Yan-Hui Poong Oh Wee Kim Wee School of Communication and Information poongoh@ntu.edu.sg Social sciences::Communication Social sciences::Mass media::Media economics In this study, we propose a novel method of predicting preference similarity for movies by focusing on their narrative structures. Based on Heider’s balance theory and the generalized concept of structural balance, we hypothesize that the similarity of conflict structure portrayed in movies will predict preference similarity between them. To test our hypothesis, we collected 1,122 movie scripts from the Internet Movie Script Database and extracted pairwise interactions among the characters in each movie using text analytics. We determined their relational valence, constructed a signed network for each movie, and finally, quantified the magnitude and complexity of conflicts among characters using computational methods. Preference similarity between movies was measured by analysing movie rating scores from 264,689 people. We examined how well the similarity of conflict structure predicts movie preference similarity using hierarchical regression analysis. Our results suggest that the network analysis of fictional characters provides a valid and reliable computational method to characterize movies and other unstructured textual data. This holds important implications for video streaming platforms who seek to develop their own recommender systems without the costs and requirements of more sophisticated tools such as collaborative filtering. Bachelor of Arts in Economics and Media Analytics 2021-03-24T05:17:43Z 2021-03-24T05:17:43Z 2021 Final Year Project (FYP) Ling, A. Y. (2021). Conflict structure of movies as a predictor of preference similarity between movies. Final Year Project (FYP), Nanyang Technological University, Singapore. https://hdl.handle.net/10356/147141 https://hdl.handle.net/10356/147141 en CS/20/003 application/pdf Nanyang Technological University |
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Social sciences::Communication Social sciences::Mass media::Media economics Ling, Audrey Yan-Hui Conflict structure of movies as a predictor of preference similarity between movies |
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In this study, we propose a novel method of predicting preference similarity for movies by focusing on their narrative structures. Based on Heider’s balance theory and the generalized concept of structural balance, we hypothesize that the similarity of conflict structure portrayed in movies will predict preference similarity between them. To test our hypothesis, we collected 1,122 movie scripts from the Internet Movie Script Database and extracted pairwise interactions among the characters in each movie using text analytics. We determined their relational valence, constructed a signed network for each movie, and finally, quantified the magnitude and complexity of conflicts among characters using computational methods. Preference similarity between movies was measured by analysing movie rating scores from 264,689 people. We examined how well the similarity of conflict structure predicts movie preference similarity using hierarchical regression analysis. Our results suggest that the network analysis of fictional characters provides a valid and reliable computational method to characterize movies and other unstructured textual data. This holds important implications for video streaming platforms who seek to develop their own recommender systems without the costs and requirements of more sophisticated tools such as collaborative filtering. |
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Poong Oh |
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Poong Oh Ling, Audrey Yan-Hui |
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Final Year Project |
author |
Ling, Audrey Yan-Hui |
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Ling, Audrey Yan-Hui |
title |
Conflict structure of movies as a predictor of preference similarity between movies |
title_short |
Conflict structure of movies as a predictor of preference similarity between movies |
title_full |
Conflict structure of movies as a predictor of preference similarity between movies |
title_fullStr |
Conflict structure of movies as a predictor of preference similarity between movies |
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Conflict structure of movies as a predictor of preference similarity between movies |
title_sort |
conflict structure of movies as a predictor of preference similarity between movies |
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Nanyang Technological University |
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2021 |
url |
https://hdl.handle.net/10356/147141 |
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