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Blindfolded Experts Generalize Better: Insights from Robotic Manipulation and Videogames

28 October 2025
E. Zisselman
Mirco Mutti
Shelly Francis-Meretzki
Elisei Shafer
Aviv Tamar
    OffRL
ArXiv (abs)PDFHTMLGithub
Main:10 Pages
9 Figures
Bibliography:4 Pages
8 Tables
Appendix:6 Pages
Abstract

Behavioral cloning is a simple yet effective technique for learning sequential decision-making from demonstrations. Recently, it has gained prominence as the core of foundation models for the physical world, where achieving generalization requires countless demonstrations of a multitude of tasks. Typically, a human expert with full information on the task demonstrates a (nearly) optimal behavior. In this paper, we propose to hide some of the task's information from the demonstrator. This ``blindfolded'' expert is compelled to employ non-trivial exploration to solve the task. We show that cloning the blindfolded expert generalizes better to unseen tasks than its fully-informed counterpart. We conduct experiments of real-world robot peg insertion tasks with (limited) human demonstrations, alongside videogames from the Procgen benchmark. Additionally, we support our findings with theoretical analysis, which confirms that the generalization error scales with I/m\sqrt{I/m}I/m​, where III measures the amount of task information available to the demonstrator, and mmm is the number of demonstrated tasks. Both theory and practice indicate that cloning blindfolded experts generalizes better with fewer demonstrated tasks. Project page with videos and code:this https URL

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