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Towards Automated Real-time Evaluation in Text-based Counseling

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arxiv 2203.03442 v1 pith:MDGJU3N2 submitted 2022-03-07 cs.CL cs.AI

Towards Automated Real-time Evaluation in Text-based Counseling

classification cs.CL cs.AI
keywords counselingautomatedcollectdatadifficultevaluationlearningmethods
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Automated real-time evaluation of counselor-client interaction is important for ensuring quality counseling but the rules are difficult to articulate. Recent advancements in machine learning methods show the possibility of learning such rules automatically. However, these methods often demand large scale and high quality counseling data, which are difficult to collect. To address this issue, we build an online counseling platform, which allows professional psychotherapists to provide free counseling services to those are in need. In exchange, we collect the counseling transcripts. Within a year of its operation, we manage to get one of the largest set of (675) transcripts of counseling sessions. To further leverage the valuable data we have, we label our dataset using both coarse- and fine-grained labels and use a set of pretraining techniques. In the end, we are able to achieve practically useful accuracy in both labeling system.

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