Neurological Plausibility of AI-Generated Music for Commercial Environments: An In-Silico Cortical Investigation Using Wubble and TRIBE v2
Shaad Sufi

TL;DR
This study uses in-silico models to explore how AI-generated music influences cortical responses, suggesting potential neurological plausibility for commercial music applications.
Contribution
It introduces a framework combining generative music and whole-brain encoding models to predict cortical responses to AI-created music.
Findings
Prompt-conditioned AI music modulates predicted cortical activity.
High-arousal music produces stronger cortical responses.
Distinct cortical spatial patterns differentiate arousal levels.
Abstract
Background music shapes attention, affect, and approach behavior in commercial environments, yet the neural plausibility of AI-generated music for such settings remains poorly characterized. We present an in-silico pilot study that combines Wubble, a generative music system, with TRIBE v2, a publicly released whole-brain encoding model, to estimate cortical response profiles for prompt-conditioned retail music. Five fully instrumental tracks were generated to span low-to-high arousal, sparse-to-dense arrangement, and neutral-to-positive valence prompts, then analyzed with audio-only TRIBE v2 inference on loudness-normalized waveforms. Analysis focused on fsaverage5 cortical predictions summarized over auditory, superior temporal, temporo-parietal, and inferior frontal HCP parcels. The fast bright major-pop condition produced the largest whole-cortex mean activation (0.0402), the…
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