结合音乐情感注意的长短期音乐偏好推荐方法研究

Q4 Decision Sciences
Yan Yang
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引用次数: 0

摘要

为了提高用户音乐个性化推荐的效果,从用户音乐情感和行为数据的角度出发,提出了一种基于注意机制和多层LSTM的混合音乐个性化推荐模型。该模型利用多层LSTM挖掘用户的长期和短期音乐偏好,结合注意机制分析用户的音乐情感属性。研究结果表明,AM-LSTPM模型的推荐准确率为97.86%,召回率为98.91%,模型在两个数据集上的NDCG@10值分别为0.5771和0.5437,可以有效地为用户提供有针对性的个性化音乐推荐服务。本研究基于用户长期和短期音乐偏好建模,结合用户音乐情感关注分析,为用户提供高质量的针对性音乐推荐服务,对推动音乐流媒体服务质量的提升具有重要价值。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Research on long- and short-term music preference recommendation method integrating music emotional attention
In order to improve the effect of user music personalised recommendation, a hybrid music personalised recommendation model based on attention mechanism and multi-layer LSTM is proposed from the perspective of user music emotion and behaviour data. Using multi-layer LSTM to mine users' long-term and short-term music preferences, the model can analyse users' music emotional attributes in combination with attention mechanism. The research results show that the recommendation accuracy of the AM-LSTPM model is 97.86%, the recall rate is 98.91%, and the NDCG@10 values of the model on the two datasets are 0.5771 and 0.5437, which can effectively provide users with targeted personalised music recommendation services. The research, based on the modelling of users' long-term and short-term music preferences and integrating users' music emotional attention analysis, provide users with high-quality targeted music recommendation services, and have important value in promoting the improvement of music streaming media service quality.
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来源期刊
International Journal of Networking and Virtual Organisations
International Journal of Networking and Virtual Organisations Decision Sciences-Information Systems and Management
CiteScore
1.40
自引率
0.00%
发文量
25
期刊介绍: IJNVO is a forum aimed at providing an authoritative refereed source of information in the field of Networking and Virtual Organisations.
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