Dialogue Systems for Emotional Support via Value Reinforcement
- URL: http://arxiv.org/abs/2501.17182v1
- Date: Sat, 25 Jan 2025 11:51:31 GMT
- Title: Dialogue Systems for Emotional Support via Value Reinforcement
- Authors: Juhee Kim, Chunghu Mok, Jisun Lee, Hyang Sook Kim, Yohan Jo,
- Abstract summary: Emotional support dialogue systems aim to reduce help-seekers' distress and help overcome them.
While human values shape an individual's priorities, they are increasingly emphasized in contemporary psychological therapy.
We present a method to identify values for emotional support dialogue in seekers.
- Score: 2.634250827781388
- License:
- Abstract: Emotional support dialogue systems aim to reduce help-seekers' distress and help them overcome challenges. While human values$\unicode{x2013}$core beliefs that shape an individual's priorities$\unicode{x2013}$are increasingly emphasized in contemporary psychological therapy for their role in fostering internal transformation and long-term emotional well-being, their integration into emotional support systems remains underexplored. To bridge this gap, we present a value-driven method for training emotional support dialogue systems designed to reinforce positive values in seekers. Our model learns to identify which values to reinforce at each turn and how to do so, by leveraging online support conversations from Reddit. The model demonstrated superior performance in emotional support capabilities, outperforming various baselines. Notably, it more effectively explored and elicited values from seekers. Expert assessments by therapists highlighted two key strengths of our model: its ability to validate users' challenges and its effectiveness in emphasizing positive aspects of their situations$\unicode{x2013}$both crucial elements of value reinforcement. Our work validates the effectiveness of value reinforcement for emotional support systems and establishes a foundation for future research.
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