Mapping Between fMRI Responses to Movies and their Natural Language Annotations
Kiran Vodrahalli, Po-Hsuan Chen, Yingyu Liang, Christopher Baldassano,, Janice Chen, Esther Yong, Christopher Honey, Uri Hasson, Peter Ramadge, Ken, Norman, Sanjeev Arora

TL;DR
This paper introduces methods to map fMRI responses to natural language annotations during movie viewing, leveraging multi-subject data and advanced models to improve scene classification and ranking accuracy.
Contribution
It presents novel bidirectional mapping techniques between fMRI data and natural language, utilizing shared response models and sentence embeddings for enhanced analysis.
Findings
Achieved 72% scene classification accuracy
Top 4% scene ranking performance
Demonstrated superiority of SRM over PCA
Abstract
Several research groups have shown how to correlate fMRI responses to the meanings of presented stimuli. This paper presents new methods for doing so when only a natural language annotation is available as the description of the stimulus. We study fMRI data gathered from subjects watching an episode of BBCs Sherlock [1], and learn bidirectional mappings between fMRI responses and natural language representations. We show how to leverage data from multiple subjects watching the same movie to improve the accuracy of the mappings, allowing us to succeed at a scene classification task with 72% accuracy (random guessing would give 4%) and at a scene ranking task with average rank in the top 4% (random guessing would give 50%). The key ingredients are (a) the use of the Shared Response Model (SRM) and its variant SRM-ICA [2, 3] to aggregate fMRI data from multiple subjects, both of which are…
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Taxonomy
TopicsMachine Learning in Materials Science · Domain Adaptation and Few-Shot Learning · Functional Brain Connectivity Studies
MethodsPrincipal Components Analysis
