Transforming Behavioral Neuroscience Discovery with In-Context Learning and AI-Enhanced Tensor Methods
Paimon Goulart, Jordan Steinhauser, Dawon Ahn, Kylene Shuler, Edward Korzus, Jia Chen, Evangelos E. Papalexakis

TL;DR
This paper presents an AI-enhanced pipeline utilizing in-context learning and tensor methods to improve behavioral neuroscience data analysis, enabling domain experts to gain insights more efficiently without extensive AI training.
Contribution
It introduces a novel AI-augmented pipeline combining in-context learning and tensor enhancements tailored for behavioral neuroscience, improving data interpretation and pattern discovery.
Findings
Superior performance over standard practices and ML baselines
Effective pattern discovery validated by domain experts
Enhanced data preparation and interpretation efficiency
Abstract
Scientific discovery pipelines typically involve complex, rigid, and time-consuming processes, from data preparation to analyzing and interpreting findings. Recent advances in AI have the potential to transform such pipelines in a way that domain experts can focus on interpreting and understanding findings, rather than debugging rigid pipelines or manually annotating data. As part of an active collaboration between data science/AI researchers and behavioral neuroscientists, we showcase an example AI-enhanced pipeline, specifically designed to transform and accelerate the way that the domain experts in the team are able to gain insights out of experimental data. The application at hand is in the domain of behavioral neuroscience, studying fear generalization in mice, an important problem whose progress can advance our understanding of clinically significant and often debilitating…
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Taxonomy
TopicsTensor decomposition and applications · Domain Adaptation and Few-Shot Learning · Mental Health via Writing
