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Main Authors: Tabalba, Roderick, Lee, Christopher J., Tran, Giorgio, Kirshenbaum, Nurit, Leigh, Jason
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2409.10797
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author Tabalba, Roderick
Lee, Christopher J.
Tran, Giorgio
Kirshenbaum, Nurit
Leigh, Jason
author_facet Tabalba, Roderick
Lee, Christopher J.
Tran, Giorgio
Kirshenbaum, Nurit
Leigh, Jason
contents Recent advances in Natural Language Interfaces (NLIs) and Large Language Models (LLMs) have transformed our approach to NLP tasks, shifting the focus towards a more Pragmatics-based approach. This shift enables more natural interactions between humans and voice assistants, which have been historically difficult to achieve. Pragmatics involves understanding how users often talk out of turn, interrupt one another, or provide relevant information without being explicitly asked (maxim of quantity). To explore this, we developed a digital assistant that continuously listens to conversations and proactively generates relevant visualizations during data exploration tasks. In a within-subject study, participants interacted with both proactive and non-proactive versions of a voice assistant while exploring the Hawaii Climate Data Portal (HCDP). Results suggest that the proactive assistant enhanced user engagement and facilitated quicker insights. Our study highlights the potential of Pragmatic, proactive AI in NLIs and identifies key challenges in its implementation, offering insights for future research.
format Preprint
id arxiv_https___arxiv_org_abs_2409_10797
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle ArticulatePro: A Comparative Study on a Proactive and Non-Proactive Assistant in a Climate Data Exploration Task
Tabalba, Roderick
Lee, Christopher J.
Tran, Giorgio
Kirshenbaum, Nurit
Leigh, Jason
Human-Computer Interaction
Recent advances in Natural Language Interfaces (NLIs) and Large Language Models (LLMs) have transformed our approach to NLP tasks, shifting the focus towards a more Pragmatics-based approach. This shift enables more natural interactions between humans and voice assistants, which have been historically difficult to achieve. Pragmatics involves understanding how users often talk out of turn, interrupt one another, or provide relevant information without being explicitly asked (maxim of quantity). To explore this, we developed a digital assistant that continuously listens to conversations and proactively generates relevant visualizations during data exploration tasks. In a within-subject study, participants interacted with both proactive and non-proactive versions of a voice assistant while exploring the Hawaii Climate Data Portal (HCDP). Results suggest that the proactive assistant enhanced user engagement and facilitated quicker insights. Our study highlights the potential of Pragmatic, proactive AI in NLIs and identifies key challenges in its implementation, offering insights for future research.
title ArticulatePro: A Comparative Study on a Proactive and Non-Proactive Assistant in a Climate Data Exploration Task
topic Human-Computer Interaction
url https://arxiv.org/abs/2409.10797