{"id":1169009,"date":"2026-04-20T09:49:59","date_gmt":"2026-04-20T16:49:59","guid":{"rendered":"https:\/\/www.microsoft.com\/en-us\/research\/publication\/beyond-state-consistency-behavior-consistency-in-text-based-world-models\/"},"modified":"2026-04-20T11:50:08","modified_gmt":"2026-04-20T18:50:08","slug":"beyond-state-consistency-behavior-consistency-in-text-based-world-models","status":"publish","type":"msr-research-item","link":"https:\/\/www.microsoft.com\/en-us\/research\/publication\/beyond-state-consistency-behavior-consistency-in-text-based-world-models\/","title":{"rendered":"Beyond State Consistency: Behavior Consistency in Text-Based World Models"},"content":{"rendered":"<p>World models have been emerging as critical components for assessing the consequences of actions generated by interactive agents in online planning and offline evaluation. In text-based environments, world models are typically evaluated and trained with single-step metrics such as Exact Match, aiming to improve the similarity between predicted and real-world states, but such metrics have been shown to be insufficient for capturing actual agent behavior. To address this issue, we introduce a new behavior-aligned training paradigm aimed at improving the functional consistency between the world model and the real environment. This paradigm focuses on optimizing a tractable step-level metric named Behavior Consistency Reward (BehR), which measures how much the likelihood of a logged next action changes between the real state and the world-model-predicted state under a frozen Reference Agent. Experiments on WebShop and TextWorld show that BehR-based training improves long-term alignment in several settings, with the clearest gains in WebShop and less movement in near-ceiling regimes, while preserving or improving single-step prediction quality in three of four settings. World models trained with BehR also achieve lower false positives in offline surrogate evaluation and show modest but encouraging gains in inference-time lookahead planning.<\/p>\n","protected":false},"excerpt":{"rendered":"<p>World models have been emerging as critical components for assessing the consequences of actions generated by interactive agents in online planning and offline evaluation. In text-based environments, world models are typically evaluated and trained with single-step metrics such as Exact Match, aiming to improve the similarity between predicted and real-world states, but such metrics have 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