Exploring the Roles of NLP-based Dialog Indicators in Predicting User Experience in interacting with Large Language Model System
The use of Large Language Models for dialogue systems is rising, presenting a new challenge: how do we assess users' chat experience in these systems? Leveraging Natural Language Processing (NLP)-powered dialog analyzers to create dialog indicators like Coherence and Emotion has the potential t...
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Zusammenfassung: | The use of Large Language Models for dialogue systems is rising, presenting a
new challenge: how do we assess users' chat experience in these systems?
Leveraging Natural Language Processing (NLP)-powered dialog analyzers to create
dialog indicators like Coherence and Emotion has the potential to predict the
chat experience. In this paper, we proposed a conceptual model to explain the
relationship between the dialog indicators and various factors related to the
chat experience, such as users' intentions, affinity toward dialog agents, and
prompts of the agents' characters. We evaluated the conceptual model using
PLS-SEM with 120 participants and found it well fit. Our results suggest that
dialog indicators can predict the chat experience and fully mediate the impact
of prompts and user intentions. Additionally, users' affinity toward agents can
partially explain these predictions. Our findings demonstrate the potential of
using dialog indicators in predicting the chat experience. Through the
conceptual model we propose, researchers can apply the dialog analyzers to
generate dialog indicators to constantly monitor the dialog process and improve
the user's chat experience accordingly. |
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DOI: | 10.48550/arxiv.2409.17204 |