基于矩阵分解的多任务学习共同学习用户的多种浏览倾向

Guo-Jhen Bai, Cheng-You Lien, Hung-Hsuan Chen
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引用次数: 5

摘要

预测在线用户的未来行为对许多应用程序都是有益的。例如,在线零售商可以利用这些信息来定制营销策略,实现利润最大化。本文旨在预测用户将点击的网页类型。我们观察到,与其建立独立的模型来预测每个单独类型的网页,不如使用统一的模型来同时预测用户在不同类型网页上的未来点击量。该模型基于代表多个目标之间和特征之间可能相互作用的潜在变量进行预测。实验结果表明,该方法在大多数情况下优于精心调整的单目标训练模型。如果训练数据的大小是有限的,则模型比基线模型有显著的改进,这可能是因为我们的模型可以发现不同目标之间的隐藏关系。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Co-learning Multiple Browsing Tendencies of a User by Matrix Factorization-based Multitask Learning
Predicting an online user’s future behavior is beneficial for many applications. For example, online retailers may utilize such information to customize the marketing strategy and maximize profit. This paper aims to predict the types of webpages a user is going to click on. We observe that instead of building independent models to predict each individual type of web page, it is more effective to use a unified model to predict a user’s future clicks on different types of web pages simultaneously. The proposed model makes predictions based on the latent variables that represent possible interactions among the multiple targets and among the features. The experimental results show that this method outperforms the carefully tuned single-target training models most of the time. If the size of the training data is limited, the model shows a significant improvement over the baseline models, likely because the hidden relationship among different targets can be discovered by our model.
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