ArXiv TLDR

Temporal Difference Calibration in Sequential Tasks: Application to Vision-Language-Action Models

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2604.20472

Shelly Francis-Meretzki, Mirco Mutti, Yaniv Romano, Aviv Tamar

cs.ROcs.LG

TLDR

This paper introduces Temporal Difference (TD) calibration for Vision-Language-Action models, improving uncertainty quantification in sequential robotic tasks.

Key contributions

  • Formulates sequential calibration for episodic tasks with end-of-episode success.
  • Introduces a sequential Brier score, linking its minimizer to the VLA policy's value function.
  • Proposes Temporal Difference (TD) value estimation as a principled calibration mechanism.
  • Demonstrates improved performance of TD calibration on simulated and real-robot data.

Why it matters

This paper addresses the critical need for reliable uncertainty quantification in sequential robotic tasks using VLA models. By bridging uncertainty calibration with reinforcement learning through TD value estimation, it offers a principled method to improve model reliability and performance. This work enhances the trustworthiness of autonomous systems.

Original Abstract

Recent advances in vision-language-action (VLA) models for robotics have highlighted the importance of reliable uncertainty quantification in sequential tasks. However, assessing and improving calibration in such settings remains mostly unexplored, especially when only partial trajectories are observed. In this work, we formulate sequential calibration for episodic tasks, where task-success confidence is produced along an episode, while success is determined at the end of it. We introduce a sequential extension of the Brier score and show that, for binary outcomes, its risk minimizer coincides with the VLA policy's value function. This connection bridges uncertainty calibration and reinforcement learning, enabling the use of temporal-difference (TD) value estimation as a principled calibration mechanism over time. We empirically show that TD calibration improves performance relative to the state-of-the-art on simulated and real-robot data. Interestingly, we show that when calibrated using TD, the VLA's single-step action probabilities can yield competitive uncertainty estimates, in contrast to recent findings that employed different calibration techniques.

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