Beyond Relevance: Evaluate and Improve Retrievers on Perspective Awareness
Xinran Zhao, Tong Chen, Sihao Chen, Hongming Zhang, Tongshuang Wu

TL;DR
This paper investigates whether information retrieval systems can recognize and differentiate between supporting and opposing perspectives in queries, extending existing tasks to evaluate and improve perspective awareness in retrievers.
Contribution
It introduces a benchmark for evaluating perspective awareness in retrievers and proposes geometric representation methods to enhance this capability in a zero-shot setting.
Findings
Current retrievers have limited perspective awareness.
Perspective-aware retrievers reduce bias and improve downstream task performance.
Projection-based methods effectively enhance perspective recognition.
Abstract
The task of Information Retrieval (IR) requires a system to identify relevant documents based on users' information needs. In real-world scenarios, retrievers are expected to not only rely on the semantic relevance between the documents and the queries but also recognize the nuanced intents or perspectives behind a user query. For example, when asked to verify a claim, a retrieval system is expected to identify evidence from both supporting vs. contradicting perspectives, for the downstream system to make a fair judgment call. In this work, we study whether retrievers can recognize and respond to different perspectives of the queries -- beyond finding relevant documents for a claim, can retrievers distinguish supporting vs. opposing documents? We reform and extend six existing tasks to create a benchmark for retrieval, where we have diverse perspectives described in free-form text,…
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Taxonomy
TopicsInformation Retrieval and Search Behavior
MethodsSparse Evolutionary Training
