SISTEM REKOMENDASI MUSIK BERDASARKAN DATA KONTEKS PADA LISTENING HISTORY MUSIK DAN KETERKAITAN ARTIS INDONESIA

Ayu Vida Mastrika Giri, Made Leo Radhitya, M. A. Raharja, Wayan Supriana
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Abstract

A large number of digital music circulates online today. It makes music listeners confused to choose which music is suitable to listen to in certain circumstances or contexts, for example certain time, weather, activity, and desired mood. Playlist creation can make it easy for music listeners to collect their favorite music for a particular context, but creating playlists is time consuming and of course a lot of playlists will have to be created to accommodate all combinations of contexts. In this study, an automated music recommendation system was built using context data consisting of time, weather, activities, and desired mood which were also adjusted for the listener's age, gender, and favorite artist. The method used is Case-Based Reasoning (CBR), using listeners' listening history data as a knowledge base and the artist relatedness of Indonesian artists to improve solutions at the revision stage. Output of this system is in the form of music playlist presented in a website. The overall precision average for music recommendations is 0.78.
基于监听历史数据和印尼艺术家关系的环境推荐系统
如今,大量的数字音乐在网上流传。它让音乐听众在特定的环境或背景下选择适合听的音乐,例如特定的时间、天气、活动和期望的情绪。创建播放列表可以让音乐听众很容易地为特定的上下文收集他们最喜欢的音乐,但是创建播放列表非常耗时,当然,必须创建许多播放列表来适应所有上下文的组合。在这项研究中,使用由时间、天气、活动和期望情绪组成的上下文数据构建了一个自动音乐推荐系统,并根据听众的年龄、性别和最喜欢的艺术家进行了调整。使用的方法是基于案例的推理(Case-Based Reasoning, CBR),以听众的聆听历史数据作为知识库,结合印尼艺术家的艺术家相关性,在修订阶段改进解决方案。该系统的输出以音乐播放列表的形式呈现在网站上。音乐推荐的总体平均精度为0.78。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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