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First Place Solution for NLPCC 2018 Shared Task User Profiling and Recommendation

机译:NLPCC 2018共享任务用户分析和建议的第一名解决方案

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Social networking sites have been growing at an unprecedented rate in recent years. User profiling and personalized recommendation plays an important role in social networking, such as targeting advertisement and personalized news feed. For NLPCC Task 8, there are two subtasks. Subtask one is User Tags Prediction (UTP), which is to predict tags related to a user. We consider UTP as a Multi Label Classification (MLC) problem and proposed a CNN-RNN framework to explicitly exploit the label dependencies. The proposed framework employs CNN to get the user profile representation and the RNN module captures the dependencies among labels. Subtask two, User Following Recommendation (UFR), is to recommend friends to the users. There are mainly two approaches: Collaborative Filtering (CF) and Most Popular Friends (MPF), and we adopted a combination of both. Our experiments show that both of our methods yield clear improvements in F1@K compared to other algorithms and achieved first place in both subtasks.
机译:近年来,社交网站正以前所未有的速度增长。用户配置文件和个性化推荐在社交网络中起着重要作用,例如针对广告和个性化新闻提要。对于NLPCC任务8,有两个子任务。子任务之一是用户标签预测(UTP),用于预测与用户相关的标签。我们将UTP视为多标签分类(MLC)问题,并提出了CNN-RNN框架来显式利用标签依赖性。所提出的框架使用CNN来获取用户配置文件表示,而RNN模块则捕获标签之间的依赖关系。子任务二,用户关注推荐(UFR),是向用户推荐朋友。主要有两种方法:协作过滤(CF)和最受欢迎的朋友(MPF),并且我们将两者结合使用。我们的实验表明,与其他算法相比,我们的两种方法均在F1 @ K方面产生了明显的改进,并且在这两个子任务中均获得了第一名。

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