|
JAIST Repository >
a. 知識科学研究科・知識科学系 >
a11. 会議発表論文 >
a11-1. 会議発表論文 >
このアイテムの引用には次の識別子を使用してください:
https://hdl.handle.net/10119/20392
|
| タイトル: | Exploring the Potential of Sound Leakage for Sharing Music |
| 著者: | Aoki, Hidenori Miyashita, Homei Nishimoto, Kazushi |
| キーワード: | Sound Leakage Music Sharing Music Recommendation System Serendipity Music Experience Proximity-based Sharing |
| 発行日: | 2025-11-06 |
| 出版者: | Elsevier |
| 誌名: | Procedia Computer Science |
| 巻: | 270 |
| 開始ページ: | 3488 |
| 終了ページ: | 3497 |
| DOI: | 10.1016/j.procs.2025.09.474 |
| 抄録: | While music recommendation systems effectively deliver music tailored to individual preferences, they face challenges such as filter bubbles, where users are recommended only music matching their preferences, and a reduction in serendipitous musical encounters. In this research, as an approach to these challenges, we reinterpret the Music Leak system in today’s music streaming environment, which we originally proposed at WISS2007 in 2007, focusing on the phenomenon of “sound leakage” in daily life. Music Leak is a system that automatically shares the music a user is listening to with nearby people using the same system via FM radio waves. In evaluation experiments, 75% of users expressed interest in using the system, and 71% showed interest in music from people they did not know. Additionally, all test subjects were able to identify songs even in environments where different genres of music were playing simultaneously.
The distinctive feature of this system is that it provides a music sharing experience with a sense of physical distance, creating qualitatively different musical encounters from algorithmic recommendations by sharing information with strong reality—music that ‘someone’ is listening to ‘now’ and ‘there’. This research proposes a new approach to promote ‘unexpected discoveries’ in music recommendation, demonstrating the potential of musical experiences through ‘unintentional sharing’ through implementation and evaluation. |
| Rights: | Copyright (c) 2026 Authors. Hidenori Aoki, Homei Miyashita, Kazushi Nishimoto. Procedia Computer Science, Volume 270, 2025, pp. 3488-3497. This is an Open Access article distributed under the terms of Creative Commons Licence CC BY-NC-ND [https://creativecommons.org/licenses/by-nc-nd/4.0]. Original publication is available on Science Direct via https://doi.org/10.1016/j.procs.2025.09.474. |
| URI: | https://hdl.handle.net/10119/20392 |
| 資料タイプ: | publisher |
| 出現コレクション: | a11-1. 会議発表論文 (Conference Papers)
|
このアイテムのファイル:
| ファイル |
記述 |
サイズ | 形式 |
| K-NISHIMOTO-K-0511-3.pdf | | 528Kb | Adobe PDF | 見る/開く |
|
当システムに保管されているアイテムはすべて著作権により保護されています。
|