Music recommendation, as the core task of smart speakers, have an important impact on user experience in terms of recommendation speed and accuracy. However, existing music recommendation algorithms face challenges in generating adaptive playlists tailored to the user’s current state. This is primarily because achieving high recommendation accuracy typically necessitates substantial computing overheads. In addition, most of the existing music recommendation algorithms ignore smooth transitions between tracks, which further hurts the quality of the recommendations. To tackle these issues, we propose a novel Lightweight Music Recommendation (LMR) method via Multi-Physiological feature Fusion (MPF), which can be effectively applied in embedded smart speaker systems. Specifically, our proposed LMR method contains two core modules: a MPF-based music mapping module and a global-local similarity computation (GLSC) based playlist recommendation module. The lightweight MPF-based music mapping model is designed to solve the track-user adaptation problem. Furthermore, we propose a GLSC-based playlist recommendation algorithm to address the incoherence and unsmooth transitions within track sequences. Experiments demonstrate that the proposed method achieves more consistent playlist recommendations aligned with user contextual information, while also enabling smoother transitions between tracks and ensuring long-term content consistency across the entire sequence. Compared with other methods, our approach achieves a favorable balance between accuracy and efficiency.
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