使用预训练嵌入的循环神经网络集成方法用于播放列表补全

Diego Monti, Enrico Palumbo, Giuseppe Rizzo, Pasquale Lisena, Raphael Troncy, Michael Fell, Elena Cabrio, M. Morisio
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引用次数: 9

摘要

本文描述了D2KLab团队在2018年RecSys挑战赛中的方法,该挑战赛的重点是完成播放列表的任务。我们提出了一种不同循环神经网络的集成策略,利用预训练的嵌入来表示曲目、艺术家、专辑和标题作为输入。我们还使用歌词,从中提取语义和风格特征,并将其输入网络,用于创作曲目。RNN从播放列表中的项目序列中学习概率模型,然后用于预测最有可能添加到播放列表中的曲目。对于没有曲目的播放列表,我们实现了一个名为Title2Rec的后备策略,该策略仅使用播放列表标题生成推荐。我们在验证集上优化了RNN、Title2Rec和集成方法,调整了超参数,如优化器算法、学习率和生成策略。这种方法在预测播放列表的音轨方面是有效的,并且可以灵活地包含不同类型的输入,但在训练阶段,它的计算要求也很高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Ensemble Approach of Recurrent Neural Networks using Pre-Trained Embeddings for Playlist Completion
This paper describes the approach of the D2KLab team to the RecSys Challenge 2018 that focuses on the task of playlist completion. We propose an ensemble strategy of different recurrent neural networks leveraging pre-trained embeddings representing tracks, artists, albums, and titles as inputs. We also use lyrics from which we extract semantic and stylistic features that we fed into the network for the creative track. The RNN learns a probabilistic model from the sequences of items in the playlist, which is then used to predict the most likely tracks to be added to the playlist. Concerning the playlists without tracks, we implemented a fall-back strategy called Title2Rec that generates recommendations using only the playlist title. We optimized the RNN, Title2Rec, and the ensemble approach on a validation set, tuning hyper-parameters such as the optimizer algorithm, the learning rate, and the generation strategy. This approach is effective in predicting tracks for a playlist and flexible to include diverse types of inputs, but it is also computationally demanding in the training phase.
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