Publication | Open Access
Text-based depression detection on sparse data
27
Citations
39
References
2019
Year
Structured PredictionEngineeringMachine LearningDepression DetectionMental HealthMultilingual PretrainingLarge Language ModelCorpus LinguisticsSocial SciencesText MiningWord EmbeddingsNatural Language ProcessingPretrained Word EmbeddingsData ScienceMood SymptomAffective ComputingDepression SeverityMachine TranslationPsychiatryNlp TaskDepressionDeep LearningText-based Depression DetectionMood SpectrumMental Health MonitoringPsychopathology
Previous text-based depression detection is commonly based on large user-generated data. Sparse scenarios like clinical conversations are less investigated. This work proposes a text-based multi-task BGRU network with pretrained word embeddings to model patients' responses during clinical interviews. Our main approach uses a novel multi-task loss function, aiming at modeling both depression severity and binary health state. We independently investigate word- and sentence-level word-embeddings as well as the use of large-data pretraining for depression detection. To strengthen our findings, we report mean-averaged results for a multitude of independent runs on sparse data. First, we show that pretraining is helpful for word-level text-based depression detection. Second, our results demonstrate that sentence-level word-embeddings should be mostly preferred over word-level ones. While the choice of pooling function is less crucial, mean and attention pooling should be preferred over last-timestep pooling. Our method outputs depression presence results as well as predicted severity score, culminating a macro F1 score of 0.84 and MAE of 3.48 on the DAIC-WOZ development set.
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