从缺少物品的保险领域的用户操作中学习建议

Simone Borg Bruun, Maria Maistro, C. Lioma
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引用次数: 3

摘要

虽然个性化推荐在零售等领域取得了成功,因为在这些领域可以获得大量用户对商品的反馈,但在数据稀疏的领域(如保险购买),自动推荐的生成是一个悬而未决的问题。保险领域是出了名的数据稀疏,因为产品的数量通常很低(与零售相比),而且购买它们通常需要很长时间。此外,许多用户仍然更喜欢通过电话而不是网络来购买产品,这减少了网络用户交互的数量。为了解决这个问题,我们提出了一个循环神经网络推荐模型,该模型使用过去的用户会话作为学习推荐的信号。从过去的用户会话中学习可以处理保险领域的数据稀缺性。具体来说,我们的模型从几种并不总是与项目相关联的用户操作中学习,并且与之前所有基于会话的推荐模型不同,它对输入会话和不发生在输入会话中的目标操作(购买保险)之间的关系进行建模。对来自保险领域的真实数据集(约44K用户,16个项目,54K购买和117K会话)的几个最新基线的评估表明,我们的模型明显优于基线。消融分析表明,这主要是由于在我们的模型中学习了跨会话的依赖关系。我们贡献了有史以来第一个基于会话的保险推荐模型,并将我们的数据集提供给研究界。
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Learning Recommendations from User Actions in the Item-poor Insurance Domain
While personalised recommendations are successful in domains like retail, where large volumes of user feedback on items are available, the generation of automatic recommendations in data-sparse domains, like insurance purchasing, is an open problem. The insurance domain is notoriously data-sparse because the number of products is typically low (compared to retail) and they are usually purchased to last for a long time. Also, many users still prefer the telephone over the web for purchasing products, reducing the amount of web-logged user interactions. To address this, we present a recurrent neural network recommendation model that uses past user sessions as signals for learning recommendations. Learning from past user sessions allows dealing with the data scarcity of the insurance domain. Specifically, our model learns from several types of user actions that are not always associated with items, and unlike all prior session-based recommendation models, it models relationships between input sessions and a target action (purchasing insurance) that does not take place within the input sessions. Evaluation on a real-world dataset from the insurance domain (ca. 44K users, 16 items, 54K purchases, and 117K sessions) against several state-of-the-art baselines shows that our model outperforms the baselines notably. Ablation analysis shows that this is mainly due to the learning of dependencies across sessions in our model. We contribute the first ever session-based model for insurance recommendation, and make available our dataset to the research community.
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