CLHCFeb 7, 2025

Enhancing Impression Change Prediction in Speed Dating Simulations Based on Speakers' Personalities

arXiv:2502.04706v1h-index: 10
Originality Synthesis-oriented
AI Analysis

This work addresses a domain-specific problem in social simulation for speed dating applications, with incremental improvements over existing methods.

The paper tackles the problem of predicting impression changes in speed dating dialogues by considering speakers' personalities, showing that personalities are useful for predicting impression changes per utterance and that simulated dialogues using this method are more favorably received than those without personality consideration.

This paper focuses on simulating text dialogues in which impressions between speakers improve during speed dating. This simulation involves selecting an utterance from multiple candidates generated by a text generation model that replicates a specific speaker's utterances, aiming to improve the impression of the speaker. Accurately selecting an utterance that improves the impression is crucial for the simulation. We believe that whether an utterance improves a dialogue partner's impression of the speaker may depend on the personalities of both parties. However, recent methods for utterance selection do not consider the impression per utterance or the personalities. To address this, we propose a method that predicts whether an utterance improves a partner's impression of the speaker, considering the personalities. The evaluation results showed that personalities are useful in predicting impression changes per utterance. Furthermore, we conducted a human evaluation of simulated dialogues using our method. The results showed that it could simulate dialogues more favorably received than those selected without considering personalities.

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