中文

Human-AI Collaboration for Estimating Scientific Replicability

计算机与社会 2026-05-28 v1 人工智能 人机交互 多智能体系统

摘要

Determining whether published scientific findings can successfully be replicated is a long-standing challenge in the empirical sciences. Existing approaches for replicability assessment typically rely either on human judgment, i.e., creative assembly of human experts, or on machine learning models trained on paper content metadata. While both approaches have demonstrated value, each also has important limitations. Human forecasts can be influenced by cognitive biases and narrow exposure to the research literature, while automated assessments often struggle to capture contextual cues and subtle signals of credibility. In this paper, we examine a hybrid approach. Specifically, we introduce a hybrid prediction market in which algorithmic agents trade alongside human participants to jointly estimate the likelihood that a published scientific finding will be corroborated via the outcome of a controlled replication study. Agents are trained on outcomes from hundreds of prior replication studies while human participants contribute domain knowledge through real-time trading. We evaluate this hybrid approach through multiple live experiments involving participants from different academic disciplines and compare its performance to artificial-only and human-only baselines. Our results show that, except for a few cases, hybrid markets match or outperform artificial prediction markets, producing more accurate and reliable replication forecasts.

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引用

@article{arxiv.2605.27394,
  title  = {Human-AI Collaboration for Estimating Scientific Replicability},
  author = {Tatiana Chakravorti and Robert Fraleigh and Timothy Fritton and Christopher Griffin and Vaibhav Singh and Sai Koneru and C. Lee Giles and David Pennock and Anthony Kwasnica and Sarah Rajtmajer},
  journal= {arXiv preprint arXiv:2605.27394},
  year   = {2026}
}