使用音频和歌词的推荐系统

Shaik Faizan, Roshan Ali, Daggumati Siva, S. Kiran, Tuluva Prem Sai, Durga Thanuj
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引用次数: 0

摘要

音乐流媒体服务已经成为我们日常生活中必不可少的一部分。这些平台的推荐系统至关重要,因为它们可以让消费者获得量身定制的音乐推荐。使用基于内容的推荐系统,可以利用音频属性和歌词找到类似的歌曲。然而,主流音乐流媒体服务大多依赖于音频特性。本研究提出了一种新的方法来构建一个基于Siamese网络的基于内容的音乐推荐系统,该系统集成了音频特征和歌词。使用Kaggle上可访问的数据集,从Spotify API中提取音频属性,从Genius API中提取歌词。在准确性和用户满意度方面,建议的解决方案超过了现有的基于内容的推荐系统。与协同过滤技术不同,协同过滤技术倾向于推荐更多的主流和流行音乐,这种策略可以通过识别他们的独特作品来支持有前途的和不太知名的音乐家。我们的研究结果对创建更精确、更可靠的音乐推荐系统具有启示意义,该系统考虑了用户的独特偏好和音乐倾向。
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Recommender System using Audio and Lyrics
Music streaming services have become an essential part of our daily life. These platforms' recommendation systems are essential because they let consumers receive tailored music recommendations. Similar songs can be found using content-based recommendation systems that make use of audio attributes and lyrics. Major music streaming services, however, mostly rely on audio characteristics. This study proposes a novel approach for constructing a Siamese network-based content-based music recommendation system that integrates audio features and lyrics. Using a dataset accessible on Kaggle, audio attributes are extracted from the Spotify API and lyrics from the Genius API. In terms of accuracy and user happiness, the suggested solution exceeds already-existing content-based recommendation systems. Unlike collaborative filtering techniques, which tends to propose more mainstream and popular music, this strategy can support up-and-coming and lesser-known musicians by recognizing their distinctive work. Our findings have implications for the creation of more precise and reliable music recommendation systems that consider users' distinct preferences and musical inclinations.
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