MeloTune: On-Device Arousal Learning and Peer-to-Peer Mood Coupling for Proactive Music Curation
Hongwei Xu

TL;DR
MeloTune is an on-device affect-aware music curation system using peer-to-peer mood coupling, deploying novel neural protocols on iPhone hardware with real-time learning from behavioral signals.
Contribution
First production deployment of Mesh Memory Protocol and Symbolic-Vector Attention Fusion for affect-aware music curation on consumer mobile devices.
Findings
Model achieves trajectory MAE 0.414 and pattern accuracy 96.6% on validation.
PAF adapts arousal predictions based on behavioral signals and user mood.
End-to-end learning loop demonstrated in live deployment with on-device inference.
Abstract
MeloTune is an iPhone-deployed music agent that instantiates the Mesh Memory Protocol (MMP) and Symbolic-Vector Attention Fusion (SVAF) as a production system for affect-aware music curation with peer-to-peer mood coupling. Each device runs two closed-form continuous-time (CfC) networks: a private listener-level CfC that predicts a short-horizon affective trajectory on Russell's circumplex and drives proactive curation, and a shared mesh-runtime CfC at MMP Layer 6 that integrates Cognitive Memory Blocks (CMBs) from co-listening peers. CfC hidden states never cross the wire; only structured CMBs do. A Personal Arousal Function (PAF) replaces the standard linear mapping from audio intensity to psychological arousal with a per-listener learned adjustment, trained from behavioral signals (skip, completion, favorite, volume) and from drift between user-declared mood and machine inference.…
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