Title: Machine learning based user profile recognition for popular short videos on social platforms
Authors: Ying Shi
Addresses: Department of Film and Television Art, Shanghai Publishing and Printing College, Shanghai, 200093, China
Abstract: Considering the emotion and opinion tendentiousness contained in user comment data, a user comment data mining model is based on bidirectional encoder representation from transformers - bidirectional long short term memory - conditional random field (BERT-Bi LSTM-CRF). BERT-Bi LSTM-CRF is designed to obtain text sequence features and annotation terms. In addition, to recognise the emotional polarity of aspect words, a classification model based on BiAtt-GCN is constructed. For the dataset SemEval Task 4, the proposed model achieved an accuracy improvement of 0.83% and 3.2%, respectively, compared to the BiSLTM CNN model and CMLA model, and an increase of 0.68% and 1.26% in the recall index. Therefore, the model proposed in the study is effective in the analysis of user comment data.
Keywords: short video; aspect words; BERT-Bi LSTM-CRF; user portrait; classification.
DOI: 10.1504/IJCSYSE.2025.144997
International Journal of Computational Systems Engineering, 2025 Vol.9 No.1, pp.1 - 10
Received: 20 Mar 2023
Accepted: 19 Jul 2023
Published online: 17 Mar 2025 *