Variational Session-based Recommendation Using Normalizing Flows

Fan Zhou, Zijing Wen, Kunpeng Zhang, Goce Trajcevski, Ting Zhong
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引用次数: 13

Abstract

We present a novel generative Session-Based Recommendation (SBR) framework, called VAriational SEssion-based Recommendation (VASER) - a non-linear probabilistic methodology allowing Bayesian inference for flexible parameter estimation of sequential recommendations. Instead of directly applying extended Variational AutoEncoders (VAE) to SBR, the proposed method introduces normalizing flows to estimate the probabilistic posterior, which is more effective than the agnostic presumed prior approximation used in existing deep generative recommendation approaches. VASER explores soft attention mechanism to upweight the important clicks in a session. We empirically demonstrate that the proposed model significantly outperforms several state-of-the-art baselines, including the recently-proposed RNN/VAE-based approaches on real-world datasets.
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使用规范化流的基于会话的可变推荐
我们提出了一种新的基于生成会话的推荐(SBR)框架,称为变分会话推荐(VASER) -一种非线性概率方法,允许贝叶斯推理对顺序推荐进行灵活的参数估计。该方法不是直接将扩展变分自编码器(VAE)应用于SBR,而是引入归一化流来估计概率后验,比现有深度生成推荐方法中使用的不可知论假设先验近似更有效。VASER探索软注意机制,以增加会话中重要点击的权重。我们的经验证明,所提出的模型显著优于几种最先进的基线,包括最近提出的基于RNN/ vae的方法在现实世界数据集上。
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