Attention-Based LSTM for Automatic Evaluation of Press Conferences
2020
We propose an approach to automatically predict the evaluation of the consultant for press conferences, using text only. The proposed approach includes a word representation model and a language model for automatic evaluation. The word representation model consists of token embedding using ELMo and type embedding. The language model we used is an LSTM with a self-attention mechanism. We collected seven publicly available press conference videos, and all the Q&A pairs between the journalists and the speakers were annotated by a professional consultant. As a result, we achieved an average accuracy of 57.6% for the prediction of 11 evaluation criterions.
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