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FutureSim:現実世界イベントを再現し適応型AIエージェントを評価する
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ポイント
- 現実世界で展開されるAIエージェントの適応能力を測るため、過去の出来事を時系列で再現するシミュレーション環境「FutureSim」を構築した。
- FutureSimは、AIエージェントが知識カットオフ以降の出来事を予測し、ニュース記事や質問に時系列で対応する能力を評価する、重要かつ新しい研究である。
- frontier agentsの評価では、最高の予測精度が25%にとどまり、多くのエージェントが予測しないよりも悪い結果となった。
Abstract
AI agents are being increasingly deployed in dynamic, open-ended environments that require adapting to new information as it arrives. To efficiently measure this capability for realistic use-cases, we propose building grounded simulations that replay real-world events in the order they occurred. We build FutureSim, where agents forecast world events beyond their knowledge cutoff while interacting with a chronological replay of the world: real news articles arriving and questions resolving over the simulated period. We evaluate frontier agents in their native harness, testing their ability to predict world events over a three-month period from January to March 2026. FutureSim reveals a clear separation in their capabilities, with the best agent's accuracy being 25%, and many having worse Brier skill score than making no prediction at all. Through careful ablations, we show how FutureSim offers a realistic setting to study emerging research directions like long-horizon test-time adaptation, search, memory, and reasoning about uncertainty. Overall, we hope our benchmark design paves the way to measure AI progress on open-ended adaptation spanning long time-horizons in the real world.
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