State-of-the-art music recommender systems are based on collaborative filtering, which builds upon learning similarities between users and songs from the available listening data. These approaches inherently face the cold-start problem, as they cannot recommend novel songs with no listening history. Content-aware recommendation addresses this issue by incorporating content information about the songs on top of collaborative filtering. However, methods falling in this category rely on a shallow user/item interaction that originates from a matrix factorization framework. In this work, we introduce neural content-aware collaborative filtering, a unified framework which alleviates these limits, and extends the recently introduced neural collaborative filtering to its content-aware counterpart. We propose a generative model which leverages deep learning for both extracting content information from low-level acoustic features and for modeling the interaction between users and songs embeddings. The deep content feature extractor can either directly predict the item embedding, or serve as a regularization prior, yielding two variants (strict and relaxed) of our model. Experimental results show that the proposed method reaches state-of-the-art results for a cold-start music recommendation task. We notably observe that exploiting deep neural networks for learning refined user/item interactions outperforms approaches using a more simple interaction model in a content-aware framework.
翻译:最先进的音乐建议系统基于协作过滤系统,它基于从现有听觉数据中学习用户和歌曲之间的相似之处。这些方法本身就面临寒冷的启动问题,因为它们不能推荐没有监听历史的新歌曲。内容觉察建议通过在协作过滤过滤法的顶端纳入关于歌曲的内容信息来解决这个问题。但是,属于这一类别的方法依赖于源于矩阵因子化框架的浅质用户/项目互动。在这项工作中,我们引入了神经内容认知协作过滤,这是一个统一框架,可以缓解这些限制,并将最近引入的神经合作过滤扩展到其内容觉醒对应方。我们提出了一个基因化模型模型模型模型模型模型,利用深度学习模式,从低层次的声学特征提取内容信息,并模拟用户和歌曲的嵌入式互动。深层内容提取器可以直接预测项目嵌入,或者在之前起到规范作用,产生两种变异体(严格和放松),实验结果显示,拟议的方法在冷入式音乐互动中达到了最先进的神经网络结果。我们特别注意到,在更精确的用户互动中利用深层次的学习模式。