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Exploring profiling and personalisation in sleep music design: towards conceptualising musical sleep aids for hospital use

Published: 10 October 2022 Publication History
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  • Abstract

    Music as a low-cost sleep aid is a promising way to improve the sleep quality of people. However, most available sleep music playlists are limited to generic, soothing songs, which do not take in account personalisation. In collaboration with the Neurology Department of the Reinier de Graaf hospital (Delft, The Netherlands), we explored a profile-based personalisation approach to deliver music that fits with people’ sleep and music preferences. Through generative research, we collected people’s preference data and proposed four, evocative sleep music profiles: the Explorer, the Diver, the Hunter, and the Observer. The results of the profiling evaluation suggest that the profile experience is credible, intuitive, and easy to use. Four profiles can reflect people’s preferences, but may not be stable.

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        cover image ACM Other conferences
        AM '22: Proceedings of the 17th International Audio Mostly Conference
        September 2022
        245 pages
        ISBN:9781450397018
        DOI:10.1145/3561212
        This work is licensed under a Creative Commons Attribution International 4.0 License.

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        Association for Computing Machinery

        New York, NY, United States

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        Published: 10 October 2022

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        Author Tags

        1. Profiling
        2. personalisation
        3. sleep music
        4. sound-driven design

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        AM '22
        AM '22: AudioMostly 2022
        September 6 - 9, 2022
        St. Pölten, Austria

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