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Adapting Deep Learning Methods for Mental Health Prediction on Social Media

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Figure

Table 1:Number of users in SMHD dataset per con-dition and the average number of posts per user (withstd.).
Table 2: F1 measure averaged over five runs with different control groups.
Table 3:Unigrams and bigrams most often given thehighest weight by attention mechanism in depressionclassification.

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