Can Users Detect Biases or Factual Errors in Generated Responses in Conversational Information-Seeking?
October 28, 2024 Β· Declared Dead Β· π SIGIR-AP
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Authors
Weronika Εajewska, Krisztian Balog, Damiano Spina, Johanne Trippas
arXiv ID
2410.21529
Category
cs.IR: Information Retrieval
Citations
7
Venue
SIGIR-AP
Last Checked
4 months ago
Abstract
Information-seeking dialogues span a wide range of questions, from simple factoid to complex queries that require exploring multiple facets and viewpoints. When performing exploratory searches in unfamiliar domains, users may lack background knowledge and struggle to verify the system-provided information, making them vulnerable to misinformation. We investigate the limitations of response generation in conversational information-seeking systems, highlighting potential inaccuracies, pitfalls, and biases in the responses. The study addresses the problem of query answerability and the challenge of response incompleteness. Our user studies explore how these issues impact user experience, focusing on users' ability to identify biased, incorrect, or incomplete responses. We design two crowdsourcing tasks to assess user experience with different system response variants, highlighting critical issues to be addressed in future conversational information-seeking research. Our analysis reveals that it is easier for users to detect response incompleteness than query answerability and user satisfaction is mostly associated with response diversity, not factual correctness.
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