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脳活動から自然な感情の動きを読み解く:LLM強化型回帰フレームワーク
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ポイント
- 本研究では、感情を離散的な分類ではなく、連続的な回帰問題として捉え、脳活動から感情の動的な変化を追跡するフレームワークを提案した。
- 自然な物語の音声データからLLMを用いて抽出した感情プロファイルを教師信号とし、動的機能的結合性(DFC)を用いることで、従来の静的な脳領域情報よりも感情の連続的な変化を捉えることに成功した。
- グラフ理論を用いた説明可能なAI(XAI)により、感情特異的な脳ネットワークのトポロジー構造を明らかにし、感情の構築主義的アプローチを支持する結果を得た。
Abstract
Decoding emotional states from neural signals has been typically framed as a discrete, single-label classification task based on emotionally stable stimuli, a formulation that oversimplifies the continuous, fluid, and co-occurring nature of human affect. This study reconceptualizes emotion decoding by adopting a multi-target regression framework to track multiple overlapping emotional dimensions as continuous trajectories over time. Leveraging the robust generalization capabilities of Large Language Models (LLMs), we extracted fine-grained, continuous sentiment profiles from a naturalistic auditory narrative, Alice in Wonderland, to serve as scalable proxies for subjective affect from human fMRI dataset. Departing from standard classification paradigms or mass-univariate subtractive contrasts that filter out network dynamics, we leverage regularized and kernel-based machine learning algorithms as continuous estimators to track the magnitude of macroscale neural state variations. We demonstrate that models trained on temporal snapshots of Dynamic Functional Connectivity (DFC) significantly outperform static region-of-interest (ROI) amplitude representations, effectively capturing continuous emotional trajectories under rapidly fluctuating narrative input. Furthermore, by implementing graph-theoretical Explainable AI (XAI) techniques, we deconstruct the underlying predictive features to reveal highly interpretable, emotion-specific topological configurations. Collectively, these results highlight the utility of LLM-automated annotation in affective neuroscience and provide compelling empirical evidence for psychological constructionist frameworks, demonstrating that dynamic, distributed network interactions offer superior explanatory power over strictly locationist accounts of emotion.
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