학술논문

Using Comments for Predicting the Affective Response to Social Media Posts
Document Type
Conference
Source
2023 11th International Conference on Affective Computing and Intelligent Interaction (ACII) Affective Computing and Intelligent Interaction (ACII), 2023 11th International Conference on. :1-8 Sep, 2023
Subject
Computing and Processing
Signal Processing and Analysis
Affective computing
Social networking (online)
Computational modeling
Natural languages
Predictive models
History
affective computing
sentiment analysis
emotion classification
social networking sites
computer-mediated communication
natural language generation
sequence-to-sequence learning
BART
Language
ISSN
2156-8111
Abstract
What people see on social media influences their affective state. Predictions of the affective reaction of an audience to a post could help posters creating content and viewers searching for it. This paper examines the value of both real comments and artificially generated ones in predicting the affective responses of an audience. We built an affect prediction model based on Facebook anonymized public posts to predict affective responses (anger, amusement, and sadness affect) as indicated by three Facebook reaction clicks (Angry, Haha, and Sad). Using the content of the original post can predict reactions well (.71 to.87 F1-scores). Adding the text of real post comments improves F1-score by up to 11%. Surprisingly, generated comments improve predictions as much as real comments. These artificial comments were produced using a pre-trained sequence-to-sequence, BART natural language generation model given a post as input. Using artificial comments means that one can predict affect reactions early in the history of a discussion, before anyone has actually commented on a post.