Entity-level Sentiment Analysis in Contact Center Telephone Conversations
Fu, Xue-Yong, Chen, Cheng, Laskar, Md Tahmid Rahman, Gardiner, Shayna, Hiranandani, Pooja, TN, Shashi Bhushan
–arXiv.org Artificial Intelligence
Entity-level sentiment analysis predicts the sentiment about entities mentioned in a given text. It is very useful in a business context to understand user emotions towards certain entities, such as products or companies. In this paper, we demonstrate how we developed an entity-level sentiment analysis system that analyzes English telephone conversation transcripts in contact centers to provide business insight. We present two approaches, one entirely based on the transformer-based DistilBERT model, and another that uses a convolutional neural network supplemented with some heuristic rules.
arXiv.org Artificial Intelligence
Oct-26-2022
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