IRAICLFeb 25

Revisiting Text Ranking in Deep Research

arXiv:2602.21456v13 citationsh-index: 6Has Code
Originality Synthesis-oriented
AI Analysis

This work addresses the need for systematic analysis of text ranking in deep research, providing insights for researchers and practitioners, but it is incremental as it reproduces and extends existing findings.

The paper tackles the problem of unclear text ranking behavior in deep research by systematically analyzing retrieval units, pipeline configurations, and query characteristics, finding that agent-issued queries favor certain retrievers, passage-level units are more efficient, re-ranking is effective, and query translation bridges mismatches.

Deep research has emerged as an important task that aims to address hard queries through extensive open-web exploration. To tackle it, most prior work equips large language model (LLM)-based agents with opaque web search APIs, enabling agents to iteratively issue search queries, retrieve external evidence, and reason over it. Despite search's essential role in deep research, black-box web search APIs hinder systematic analysis of search components, leaving the behaviour of established text ranking methods in deep research largely unclear. To fill this gap, we reproduce a selection of key findings and best practices for IR text ranking methods in the deep research setting. In particular, we examine their effectiveness from three perspectives: (i) retrieval units (documents vs. passages), (ii) pipeline configurations (different retrievers, re-rankers, and re-ranking depths), and (iii) query characteristics (the mismatch between agent-issued queries and the training queries of text rankers). We perform experiments on BrowseComp-Plus, a deep research dataset with a fixed corpus, evaluating 2 open-source agents, 5 retrievers, and 3 re-rankers across diverse setups. We find that agent-issued queries typically follow web-search-style syntax (e.g., quoted exact matches), favouring lexical, learned sparse, and multi-vector retrievers; passage-level units are more efficient under limited context windows, and avoid the difficulties of document length normalisation in lexical retrieval; re-ranking is highly effective; translating agent-issued queries into natural-language questions significantly bridges the query mismatch.

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