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Main Authors: Lee, Haeone, Min, Taywon, Kim, Junsu, Kang, Sinjae, Liu, Fangchen, Pinto, Lerrel, Lee, Kimin
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2603.09056
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author Lee, Haeone
Min, Taywon
Kim, Junsu
Kang, Sinjae
Liu, Fangchen
Pinto, Lerrel
Lee, Kimin
author_facet Lee, Haeone
Min, Taywon
Kim, Junsu
Kang, Sinjae
Liu, Fangchen
Pinto, Lerrel
Lee, Kimin
contents Learning from demonstrations has emerged as a promising paradigm for end-to-end robot control, particularly when scaled to diverse and large datasets. However, the quality of demonstration data, often collected through human teleoperation, remains a critical bottleneck for effective data-driven robot learning. Human errors, operational constraints, and teleoperator variability introduce noise and suboptimal behaviors, making data curation essential yet largely manual and heuristic-driven. In this work, we propose Quality over Quantity (QoQ), a grounded and systematic approach to identifying high-quality data by defining data quality as the contribution of each training sample to reducing loss on validation demonstrations. To efficiently estimate this contribution, we leverage influence functions, which quantify the impact of individual training samples on model performance. We further introduce two key techniques to adapt influence functions for robot demonstrations: (i) using maximum influence across validation samples to capture the most relevant state-action pairs, and (ii) aggregating influence scores of state-action pairs within the same trajectory to reduce noise and improve data coverage. Experiments in both simulated and real-world settings show that QoQ consistently improves policy performances over prior data selection methods.
format Preprint
id arxiv_https___arxiv_org_abs_2603_09056
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Quality over Quantity: Demonstration Curation via Influence Functions for Data-Centric Robot Learning
Lee, Haeone
Min, Taywon
Kim, Junsu
Kang, Sinjae
Liu, Fangchen
Pinto, Lerrel
Lee, Kimin
Robotics
Machine Learning
Learning from demonstrations has emerged as a promising paradigm for end-to-end robot control, particularly when scaled to diverse and large datasets. However, the quality of demonstration data, often collected through human teleoperation, remains a critical bottleneck for effective data-driven robot learning. Human errors, operational constraints, and teleoperator variability introduce noise and suboptimal behaviors, making data curation essential yet largely manual and heuristic-driven. In this work, we propose Quality over Quantity (QoQ), a grounded and systematic approach to identifying high-quality data by defining data quality as the contribution of each training sample to reducing loss on validation demonstrations. To efficiently estimate this contribution, we leverage influence functions, which quantify the impact of individual training samples on model performance. We further introduce two key techniques to adapt influence functions for robot demonstrations: (i) using maximum influence across validation samples to capture the most relevant state-action pairs, and (ii) aggregating influence scores of state-action pairs within the same trajectory to reduce noise and improve data coverage. Experiments in both simulated and real-world settings show that QoQ consistently improves policy performances over prior data selection methods.
title Quality over Quantity: Demonstration Curation via Influence Functions for Data-Centric Robot Learning
topic Robotics
Machine Learning
url https://arxiv.org/abs/2603.09056