Redirecting to original paper in 30 seconds...
Click below to go immediately or wait for automatic redirect
📄 Abstract
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
$\sqrt{I/m}$, where $I$ measures the amount of task information available to
the demonstrator, and $m$ 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:
https://sites.google.com/view/blindfoldedexperts/home
Authors (5)
Ev Zisselman
Mirco Mutti
Shelly Francis-Meretzki
Elisei Shafer
Aviv Tamar
Submitted
October 28, 2025
Key Contributions
JSON parse error: Unexpected token s in JSON at position 6977