使用两两比较的音乐偏好预测模型

B. S. Jensen, J. S. Gallego, Jan Larsen
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引用次数: 16

摘要

音乐推荐是许多流媒体服务和多媒体系统的一个重要方面,然而,它通常是基于所谓的协同过滤方法。在本文中,我们从个人的角度考虑推荐任务,并检查在多大程度上可以使用简单而稳健的查询(如两两比较)来引出和预测音乐偏好。我们建议使用基于高斯过程先验的非常灵活的模型来建模-并反过来预测-两两音乐偏好,我们描述了所需的推理。我们进一步提出了一个特定的协方差函数,并评估了在一个新的数据集上的预测性能。在推荐风格设置中,我们获得了74%的留一准确率,而随机预测的准确率为50%,显示出进一步改进和评估的潜力。
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A predictive model of music preference using pairwise comparisons
Music recommendation is an important aspect of many streaming services and multi-media systems, however, it is typically based on so-called collaborative filtering methods. In this paper we consider the recommendation task from a personal viewpoint and examine to which degree music preference can be elicited and predicted using simple and robust queries such as pairwise comparisons. We propose to model - and in turn predict - the pairwise music preference using a very flexible model based on Gaussian Process priors for which we describe the required inference. We further propose a specific covariance function and evaluate the predictive performance on a novel dataset. In a recommendation style setting we obtain a leave-one-out accuracy of 74% compared to 50% with random predictions, showing potential for further refinement and evaluation.
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