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Main Authors: Li, Xiaozhe, Lyu, TianYi, Yang, Siyi, Gong, Yuxi, Yang, Yizhao, Huang, Jinxuan, Zhang, Ligao, Huang, Zhuoyi, Liu, Qingwen
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2510.13499
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author Li, Xiaozhe
Lyu, TianYi
Yang, Siyi
Gong, Yuxi
Yang, Yizhao
Huang, Jinxuan
Zhang, Ligao
Huang, Zhuoyi
Liu, Qingwen
author_facet Li, Xiaozhe
Lyu, TianYi
Yang, Siyi
Gong, Yuxi
Yang, Yizhao
Huang, Jinxuan
Zhang, Ligao
Huang, Zhuoyi
Liu, Qingwen
contents Understanding human intent is a complex, high-level task for large language models (LLMs), requiring analytical reasoning, contextual interpretation, dynamic information aggregation, and decision-making under uncertainty. Real-world public discussions, such as consumer product discussions, are rarely linear or involve a single user. Instead, they are characterized by interwoven and often conflicting perspectives, divergent concerns, goals, emotional tendencies, as well as implicit assumptions and background knowledge about usage scenarios. To accurately understand such explicit public intent, an LLM must go beyond parsing individual sentences; it must integrate multi-source signals, reason over inconsistencies, and adapt to evolving discourse, similar to how experts in fields like politics, economics, or finance approach complex, uncertain environments. Despite the importance of this capability, no large-scale benchmark currently exists for evaluating LLMs on real-world human intent understanding, primarily due to the challenges of collecting real-world public discussion data and constructing a robust evaluation pipeline. To bridge this gap, we introduce \bench, the first dynamic, live evaluation benchmark specifically designed for intent understanding, particularly in the consumer domain. \bench is the largest and most diverse benchmark of its kind, supporting real-time updates while preventing data contamination through an automated curation pipeline.
format Preprint
id arxiv_https___arxiv_org_abs_2510_13499
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle ConsintBench: Evaluating Language Models on Real-World Consumer Intent Understanding
Li, Xiaozhe
Lyu, TianYi
Yang, Siyi
Gong, Yuxi
Yang, Yizhao
Huang, Jinxuan
Zhang, Ligao
Huang, Zhuoyi
Liu, Qingwen
Computation and Language
Artificial Intelligence
Understanding human intent is a complex, high-level task for large language models (LLMs), requiring analytical reasoning, contextual interpretation, dynamic information aggregation, and decision-making under uncertainty. Real-world public discussions, such as consumer product discussions, are rarely linear or involve a single user. Instead, they are characterized by interwoven and often conflicting perspectives, divergent concerns, goals, emotional tendencies, as well as implicit assumptions and background knowledge about usage scenarios. To accurately understand such explicit public intent, an LLM must go beyond parsing individual sentences; it must integrate multi-source signals, reason over inconsistencies, and adapt to evolving discourse, similar to how experts in fields like politics, economics, or finance approach complex, uncertain environments. Despite the importance of this capability, no large-scale benchmark currently exists for evaluating LLMs on real-world human intent understanding, primarily due to the challenges of collecting real-world public discussion data and constructing a robust evaluation pipeline. To bridge this gap, we introduce \bench, the first dynamic, live evaluation benchmark specifically designed for intent understanding, particularly in the consumer domain. \bench is the largest and most diverse benchmark of its kind, supporting real-time updates while preventing data contamination through an automated curation pipeline.
title ConsintBench: Evaluating Language Models on Real-World Consumer Intent Understanding
topic Computation and Language
Artificial Intelligence
url https://arxiv.org/abs/2510.13499