Predicting the Emotional Intensity of Tweets
Date
2019-07-31
Authors
Journal Title
Journal ISSN
Volume Title
Publisher
Rochester Institute of Technology
Abstract
Automated interpretation of human emotion has become increasingly important as human computer interactions become ubiquitous. Affective computing is a field of computer science concerned with recognizing, analyzing and interpreting human emotions in a range of media, including audio, video, and text. Social media, in particular, are rich in expressions of peoples’ moods, opinions, and sentiments. This thesis focuses on predicting the emotional intensity expressed on the social network Twitter. In this study, we use lexical features, sentiment and emotion lexicons to extract features from tweets, messages of 280 characters or less shared on Twitter. We also use a form of transfer learning – word and sentence embeddings extracted from neural networks trained on large corpora. The estimation of emotional intensity is a regression task and we use, linear and tree-based models for this task. We compare the results of these individual models as well as making a final ensemble model that predicts the emotional intensity of tweets by combining the output of the individual models. We also use lexical features and word embeddings to train a recently introduced model designed to handle data with sparse or rare features. This model combines LASSO regularization with grouped features. Finally, an error analysis is conducted and areas that need to be improved are emphasized.
Description
This study aims to predict emotional intensity in tweets by utilizing lexical features, sentiment and emotion lexicons, and word/sentence embeddings from neural networks. It employs linear and tree-based models, compares their effectiveness, and integrates them into an ensemble model. Additionally, a model combining LASSO regularization with grouped features is used for handling sparse data. The study also includes an error analysis to highlight and address areas needing improvement.
Keywords
affective computing, emotional intensity, Twitter-Data processing, Semantic computing, Text processing
Citation
Alhamdan, Intisar M., "Predicting the Emotional Intensity of Tweets" (2019). Thesis. Rochester Institute of Technology. Accessed from https://repository.rit.edu/theses/10147