神经生存推荐

How Jing, Alex Smola
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引用次数: 152

摘要

在内容推荐和个性化方面,预测未来用户活动的能力是无价的。例如,知道用户什么时候会回到在线音乐服务,以及他们会听什么音乐,可以提高用户满意度,从而提高用户留存率。我们提出了一个基于长短期记忆的模型来估计用户何时会返回网站以及他们未来的聆听行为。这样做,我们的目标是解决Just-In-Time推荐问题,即在正确的时间推荐正确的项目。我们使用生存分析工具进行回归时间预测,使用指数族进行未来活动分析。我们表明,当应用于两个真实世界的数据集时,可以准确地解决由此产生的多任务问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Neural Survival Recommender
The ability to predict future user activity is invaluable when it comes to content recommendation and personalization. For instance, knowing when users will return to an online music service and what they will listen to increases user satisfaction and therefore user retention. We present a model based on Long-Short Term Memory to estimate when a user will return to a site and what their future listening behavior will be. In doing so, we aim to solve the problem of Just-In-Time recommendation, that is, to recommend the right items at the right time. We use tools from survival analysis for return time prediction and exponential families for future activity analysis. We show that the resulting multitask problem can be solved accurately, when applied to two real-world datasets.
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