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Published June 2021 | Submitted
Book Section - Chapter Open

Task Programming: Learning Data Efficient Behavior Representations

Abstract

Specialized domain knowledge is often necessary to accurately annotate training sets for in-depth analysis, but can be burdensome and time-consuming to acquire from domain experts. This issue arises prominently in automated behavior analysis, in which agent movements or actions of interest are detected from video tracking data. To reduce annotation effort, we present TREBA: a method to learn annotation-sample efficient trajectory embedding for behavior analysis, based on multi-task self-supervised learning. The tasks in our method can be efficiently engineered by domain experts through a process we call "task programming", which uses programs to explicitly encode structured knowledge from domain experts. Total domain expert effort can be reduced by exchanging data annotation time for the construction of a small number of programmed tasks. We evaluate this trade-off using data from behavioral neuroscience, in which specialized domain knowledge is used to identify behaviors. We present experimental results in three datasets across two domains: mice and fruit flies. Using embeddings from TREBA, we reduce annotation burden by up to a factor of 10 without compromising accuracy compared to state-of-the-art features. Our results thus suggest that task programming and self-supervision can be an effective way to reduce annotation effort for domain experts.

Additional Information

© 2021 IEEE. We would like to thank Tomomi Karigo at Caltech for providing the mouse dataset. The Simons Foundation (Global Brain grant 543025 to PP) generously supported this work, and this work is partially supported by NIH Award #K99MH117264 (to AK), NSF Award #1918839 (to YY), and NSERC Award #PGSD3-532647-2019 (to JJS).

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Created:
August 20, 2023
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December 22, 2023