学习Top-N推荐的用户偏好模式

Yongli Ren, Gang Li, Wanlei Zhou
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引用次数: 8

摘要

在本文中,我们观察到用户偏好风格倾向于遵循一定的模式规律性地变化。因此,我们提出了一个偏好模式模型来捕捉用户偏好风格及其时间动态,并应用该模型来提高Top-N推荐的准确性。准确地说,首选项模式被定义为按时间顺序排序的一组用户首选项样式。基本思想是通过使用类似期望最大化(EM)的算法构建代表性子空间来建模用户偏好风格及其时间动态,该算法以迭代的方式同时细化全局和个人偏好风格。然后,通过测量推荐在代表性子空间上的投影的重建误差来估计推荐与活跃用户偏好风格的匹配程度。实验结果表明,该模型对数据稀疏性问题具有较强的鲁棒性,在准确率方面明显优于Top-N推荐算法。
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Learning User Preference Patterns for Top-N Recommendations
In this paper, we observe that the user preference styles tend to change regularly following certain patterns. Therefore, we propose a Preference Pattern model to capture the user preference styles and their temporal dynamics, and apply this model to improve the accuracy of the Top-N recommendation. Precisely, a preference pattern is defined as a set of user preference styles sorted in a time order. The basic idea is to model user preference styles and their temporal dynamics by constructing a representative subspace with an Expectation-Maximization (EM)-like algorithm, which works in an iterative fashion by refining the global and the personal preference styles simultaneously. Then, the degree which the recommendations match the active user's preference styles, can be estimated by measuring its reconstruction error from its projection on the representative subspace. The experiment results indicate that the proposed model is robust to the data sparsity problem, and can significantly outperform the state-of-the-art algorithms on the Top-N recommendation in terms of accuracy.
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