Beyond Parallel Sampling: Diverse Query Initialization for Agentic Search

Researchers introduce DivInit, a training-free intervention that addresses query redundancy in parallel sampling for agentic search, delivering 5-7 point gains on multi-hop QA benchmarks.
Computer Science > Artificial Intelligence
Title:Beyond Parallel Sampling: Diverse Query Initialization for Agentic Search
View PDF HTML (experimental)Abstract:Test-time scaling for agentic search typically increases depth (i.e., more turns and tokens per trajectory) or breadth (i.e., more parallel rollouts). Here we focus on breadth scaling, showing that standard parallel sampling yields diminishing returns, tracing this to query redundancy at the first turn. When models issue similar first queries across rollouts, the threads retrieve overlapping evidence, and subsequent turns are conditioned on this shared retrieval. We address this limitation with DivInit, a training-free intervention at the first turn. Rather than sampling k independent first queries, DivInit draws n candidates from a single call, picks k < n diverse seeds, and runs them as parallel trajectories. Across five open-weight models and eight benchmarks, DivInit consistently improves over standard parallel sampling, with average gains of five to seven points on multi-hop QA at matched compute. Code available at this https URL
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Source: arXiv cs.AI Recent












