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Multi Task, Multi Channel, Multi Input Learning for Mental Illness Detection using Social Media Text

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Figure

Table 1: The number of tweets under each emotion cat-egory
Table 2: CLPSych 2015 shared task dataset statistics
Table 3: Emotion multi-class, multi-label classificationresults
Table 4: Mental illness detection using multi-task, multi-channel, multi-input architecture

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