TherapyView: Visualizing Therapy Sessions with Temporal Topic Modeling
and AI-Generated Arts
- URL: http://arxiv.org/abs/2302.10845v1
- Date: Tue, 21 Feb 2023 17:53:45 GMT
- Title: TherapyView: Visualizing Therapy Sessions with Temporal Topic Modeling
and AI-Generated Arts
- Authors: Baihan Lin, Stefan Zecevic, Djallel Bouneffouf, Guillermo Cecchi
- Abstract summary: We present the TherapyView, a demonstration system to help therapists visualize the dynamic contents of past treatment sessions.
The system incorporates temporal modeling to provide a time-series representation of topic similarities at a turn-level resolution and AI-generated artworks.
This system provides a proof of concept of AI-augmented therapy tools with e in-depth understanding of the patient's mental state and enabling more effective treatment.
- Score: 24.740247834989248
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: We present the TherapyView, a demonstration system to help therapists
visualize the dynamic contents of past treatment sessions, enabled by the
state-of-the-art neural topic modeling techniques to analyze the topical
tendencies of various psychiatric conditions and deep learning-based image
generation engine to provide a visual summary. The system incorporates temporal
modeling to provide a time-series representation of topic similarities at a
turn-level resolution and AI-generated artworks given the dialogue segments to
provide a concise representations of the contents covered in the session,
offering interpretable insights for therapists to optimize their strategies and
enhance the effectiveness of psychotherapy. This system provides a proof of
concept of AI-augmented therapy tools with e in-depth understanding of the
patient's mental state and enabling more effective treatment.
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