A Comparative Study of Music Recommendation Systems

Ashish Patel, Rajesh Wadhvani
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引用次数: 6

Abstract

Technology in the music players is developing rapidly, especially in smart phones. Nowadays users have access to millions of songs available online. Selecting favorite music among these large archives is one of the biggest problem. Every user has his own taste of music selection. Selecting music depends on the surroundings and the mood of the user. New users and new items emerge every day, and the system has to react to them promptly. The problem of personalized music recommendation that takes different kinds of auxiliary information into consideration is resource constraint due to large amount of data involvement but these models provide much accurate results so more of these are being used for commercial purpose. The main aim of the recommendation system is to recommend songs such that it is closed to the user’s choice. As a comparative study, we will be analyzing the Graph-based Novelty Research On The Music Recommendation, Music Recommendation System Based on the Continuous Combination of Contextual Information, Smart-DJ: Context-aware Personalizing for Music Recommendation on Smart phones. These models are outlined to assist the users to find out the new music that is personalized. For the analysis purpose, we will be using data set provided by Douban Music.
音乐推荐系统的比较研究
音乐播放器技术发展迅速,尤其是智能手机。如今,用户可以在网上收听数百万首歌曲。在这些庞大的档案中选择最喜欢的音乐是最大的问题之一。每个用户都有自己的音乐选择品味。选择音乐取决于周围环境和用户的心情。每天都有新用户和新项目出现,系统必须及时做出反应。个性化音乐推荐需要考虑不同类型的辅助信息,由于涉及大量数据,存在资源限制的问题,但这些模型提供的结果更加准确,因此更多的模型被用于商业目的。推荐系统的主要目的是推荐歌曲,这样它就不受用户选择的限制。作为比较研究,我们将分析基于图的音乐推荐新颖性研究、基于上下文信息持续组合的音乐推荐系统、Smart- dj:基于上下文感知的智能手机音乐推荐个性化。这些模型的概述是为了帮助用户找到个性化的新音乐。为了分析目的,我们将使用豆瓣音乐提供的数据集。
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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