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      Attention-Based LSTM for Psychological Stress Detection from Spoken Language Using Distant Supervision

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          Abstract

          We propose a Long Short-Term Memory (LSTM) with attention mechanism to classify psychological stress from self-conducted interview transcriptions. We apply distant supervision by automatically labeling tweets based on their hashtag content, which complements and expands the size of our corpus. This additional data is used to initialize the model parameters, and which it is fine-tuned using the interview data. This improves the model's robustness, especially by expanding the vocabulary size. The bidirectional LSTM model with attention is found to be the best model in terms of accuracy (74.1%) and f-score (74.3%). Furthermore, we show that distant supervision fine-tuning enhances the model's performance by 1.6% accuracy and 2.1% f-score. The attention mechanism helps the model to select informative words.

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          Harnessing Twitter "Big Data" for Automatic Emotion Identification

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            Psychological stress detection from cross-media microblog data using Deep Sparse Neural Network

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              Author and article information

              Journal
              30 May 2018
              Article
              1805.12307
              ad0c494a-1b80-416a-ab1e-85dade335df6

              http://arxiv.org/licenses/nonexclusive-distrib/1.0/

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              Custom metadata
              Accepted in ICASSP 2018
              cs.CL

              Theoretical computer science
              Theoretical computer science

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