A Linguistic Study on Relevance Modeling in Information Retrieval
Yixing Fan, Jiafeng Guo, Xinyu Ma, Ruqing Zhang, Yanyan Lan, and Xueqi, Cheng

TL;DR
This paper empirically investigates how relevance modeling differs across document, answer, and response retrieval tasks, using linguistic probes and intervention methods to enhance IR performance.
Contribution
It provides a comparative analysis of relevance modeling in various IR tasks and proposes intervention strategies to improve relevance understanding.
Findings
Relevance modeling shows task-specific differences in natural language understanding.
Linguistic probes reveal distinct focus areas in relevance across tasks.
Intervention methods can effectively enhance IR task performance.
Abstract
Relevance plays a central role in information retrieval (IR), which has received extensive studies starting from the 20th century. The definition and the modeling of relevance has always been critical challenges in both information science and computer science research areas. Along with the debate and exploration on relevance, IR has already become a core task in many real-world applications, such as Web search engines, question answering systems, conversational bots, and so on. While relevance acts as a unified concept in all these retrieval tasks, the inherent definitions are quite different due to the heterogeneity of these tasks. This raises a question to us: Do these different forms of relevance really lead to different modeling focuses? To answer this question, in this work, we conduct an empirical study on relevance modeling in three representative IR tasks, i.e., document…
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