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Learning to Construct Knowledge through Sparse Reference Selection with Reinforcement Learning

Published 7 Sep 2025 in cs.LG, cs.AI, and cs.IR | (2509.05874v1)

Abstract: The rapid expansion of scientific literature makes it increasingly difficult to acquire new knowledge, particularly in specialized domains where reasoning is complex, full-text access is restricted, and target references are sparse among a large set of candidates. We present a Deep Reinforcement Learning framework for sparse reference selection that emulates human knowledge construction, prioritizing which papers to read under limited time and cost. Evaluated on drug--gene relation discovery with access restricted to titles and abstracts, our approach demonstrates that both humans and machines can construct knowledge effectively from partial information.

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