Enhancing Personality Classification through Textual Analysis: A Deep Learning Approach Utilizing MBTI and Social Media Data
Personality computing has grown significantly in use, with useful applications emerging in fields of study like human-robot interaction and recommendation systems. Traditional recommendation systems frequently run into issues with free riders, data scarcity, and a lack of understanding of user prefe...
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Published in: | 2023 International Conference on Network, Multimedia and Information Technology (NMITCON) pp. 01 - 06 |
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Format: | Conference Proceeding |
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IEEE
01-09-2023
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Abstract | Personality computing has grown significantly in use, with useful applications emerging in fields of study like human-robot interaction and recommendation systems. Traditional recommendation systems frequently run into issues with free riders, data scarcity, and a lack of understanding of user preferences. By strengthening the grasp of user preferences and increasing the precision of recommendations, the addition of well-established user personality features aids in resolving these problems. Therefore, the goal of this research is to take advantage of personality computing's numerous advantages while overcoming the drawbacks of current recommendation systems. This model achieved an accuracy of 97% on the test data because it was trained on pre-processed and padded sequences. By utilising LSTM layers, the model is better able to understand contextual information included in the text input and efficiently capture sequential dependencies. |
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AbstractList | Personality computing has grown significantly in use, with useful applications emerging in fields of study like human-robot interaction and recommendation systems. Traditional recommendation systems frequently run into issues with free riders, data scarcity, and a lack of understanding of user preferences. By strengthening the grasp of user preferences and increasing the precision of recommendations, the addition of well-established user personality features aids in resolving these problems. Therefore, the goal of this research is to take advantage of personality computing's numerous advantages while overcoming the drawbacks of current recommendation systems. This model achieved an accuracy of 97% on the test data because it was trained on pre-processed and padded sequences. By utilising LSTM layers, the model is better able to understand contextual information included in the text input and efficiently capture sequential dependencies. |
Author | Mohan, G Bharathi R, Elakkiya Gorantla, Snehitha Kumar, R Prasanna |
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Snippet | Personality computing has grown significantly in use, with useful applications emerging in fields of study like human-robot interaction and recommendation... |
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SubjectTerms | Computational modeling Data models Deep learning Human-robot interaction Information technology LSTM MBTI Recommender systems Social networking (online) word embedding Word2Vec |
Title | Enhancing Personality Classification through Textual Analysis: A Deep Learning Approach Utilizing MBTI and Social Media Data |
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