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Autores principales: Wei, Chuyang, Gao, Maohang, Han, Zhixin, Chen, Kefei, Zhuang, Yu, Guan, Haoxiang, Zhang, Yanzhi, Cheng, Yilin, Zhou, Xiren, Chen, Huanhuan, Li, Jian, He, Jiyan, Shi, Yu, Duan, Yitong, Zheng, Shuxin
Formato: Preprint
Publicado: 2026
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Acceso en línea:https://arxiv.org/abs/2604.15719
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author Wei, Chuyang
Gao, Maohang
Han, Zhixin
Chen, Kefei
Zhuang, Yu
Guan, Haoxiang
Zhang, Yanzhi
Cheng, Yilin
Zhou, Xiren
Chen, Huanhuan
Li, Jian
He, Jiyan
Shi, Yu
Duan, Yitong
Zheng, Shuxin
author_facet Wei, Chuyang
Gao, Maohang
Han, Zhixin
Chen, Kefei
Zhuang, Yu
Guan, Haoxiang
Zhang, Yanzhi
Cheng, Yilin
Zhou, Xiren
Chen, Huanhuan
Li, Jian
He, Jiyan
Shi, Yu
Duan, Yitong
Zheng, Shuxin
contents Many high-stakes decisions depend on forecasts made before outcomes are known. In this future prediction setting, the central challenge is that public evidence evolves over time, while the main supervision signal arrives only after resolution: the realized outcome mainly assesses final correctness, offering only coarse guidance on what to track, what to verify, and which judgments to leave uncertain along the way. Our key observation is that revisiting the same unresolved question over time creates informative temporal contrasts across evolving evidence and repeated forecasts, exposing what earlier attempts missed before resolution and yielding a diagnostic signal we call the pre-resolution signal. We instantiate this idea in Milkyway, a future prediction agent with a persistent future prediction harness, an editable external state that stores reusable procedural guidance across revisits to the same unresolved question. As the same unresolved question is revisited, Milkyway extracts pre-resolution signals from evolving evidence and repeated forecasts, uses them to update the harness, and improves later forecasts on that question before resolution. After resolution, the realized outcome serves as a post-resolution check of provisional updates. On the FutureX and FutureWorld benchmarks, Milkyway achieves strong performance against competitive baselines, and a mechanism study suggests that the gains stem from harness evolution driven by pre-resolution signals rather than repeated prediction alone.
format Preprint
id arxiv_https___arxiv_org_abs_2604_15719
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Harnessing Pre-Resolution Signals for Future Prediction Agents
Wei, Chuyang
Gao, Maohang
Han, Zhixin
Chen, Kefei
Zhuang, Yu
Guan, Haoxiang
Zhang, Yanzhi
Cheng, Yilin
Zhou, Xiren
Chen, Huanhuan
Li, Jian
He, Jiyan
Shi, Yu
Duan, Yitong
Zheng, Shuxin
Artificial Intelligence
Many high-stakes decisions depend on forecasts made before outcomes are known. In this future prediction setting, the central challenge is that public evidence evolves over time, while the main supervision signal arrives only after resolution: the realized outcome mainly assesses final correctness, offering only coarse guidance on what to track, what to verify, and which judgments to leave uncertain along the way. Our key observation is that revisiting the same unresolved question over time creates informative temporal contrasts across evolving evidence and repeated forecasts, exposing what earlier attempts missed before resolution and yielding a diagnostic signal we call the pre-resolution signal. We instantiate this idea in Milkyway, a future prediction agent with a persistent future prediction harness, an editable external state that stores reusable procedural guidance across revisits to the same unresolved question. As the same unresolved question is revisited, Milkyway extracts pre-resolution signals from evolving evidence and repeated forecasts, uses them to update the harness, and improves later forecasts on that question before resolution. After resolution, the realized outcome serves as a post-resolution check of provisional updates. On the FutureX and FutureWorld benchmarks, Milkyway achieves strong performance against competitive baselines, and a mechanism study suggests that the gains stem from harness evolution driven by pre-resolution signals rather than repeated prediction alone.
title Harnessing Pre-Resolution Signals for Future Prediction Agents
topic Artificial Intelligence
url https://arxiv.org/abs/2604.15719