Search and recommendation are the two most common approaches used by people to obtain information. They share the same goal -- satisfying the user's information need at the right time. There are already a lot of Internet platforms and Apps providing both search and recommendation services, showing us the demand and opportunity to simultaneously handle both tasks. However, most platforms consider these two tasks independently -- they tend to train separate search model and recommendation model, without exploiting the relatedness and dependency between them. In this paper, we argue that jointly modeling these two tasks will benefit both of them and finally improve overall user satisfaction. We investigate the interactions between these two tasks in the specific information content service domain. We propose first integrating the user's behaviors in search and recommendation into a heterogeneous behavior sequence, then utilizing a joint model for handling both tasks based on the unified sequence. More specifically, we design the Unified Information Search and Recommendation model (USER), which mines user interests from the integrated sequence and accomplish the two tasks in a unified way.
翻译:搜索和建议是人们获取信息时最常用的两种方法。它们有着相同的目标 -- -- 满足用户的信息需求。已经有许多互联网平台和应用程序提供搜索和建议服务,向我们展示了同时处理这两项任务的需求和机会。然而,大多数平台都独立地考虑这两项任务 -- -- 它们倾向于培训单独的搜索模式和建议模式,而没有利用它们之间的关联性和依赖性。在本文件中,我们争辩说,联合建模这两项任务将有利于它们,并最终提高用户的总体满意度。我们调查了这两个任务在特定信息内容服务领域的相互作用。我们建议首先将用户在搜索和建议中的行为纳入一个不同的行为序列,然后利用一个联合模式,根据统一序列处理这两项任务。更具体地说,我们设计统一的信息搜索和建议模式(USER),从统一序列中挖掘用户的利益,并以统一的方式完成这两项任务。