个性化广告服务推荐的有效深度学习方法

Chunshan Li, Yaning Kong, Xuequan Zhou, Hua Zhang, Xiaodong Zhang, Chuhui Geng, Dianhui Chu, Xiaolin Wu
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引用次数: 1

摘要

个性化广告服务推荐是目前规模最大、技术最成熟的行业推荐系统之一。广告推荐的关键挑战是为特定的广告找到相关的用户。传统的推荐方法在选择广告和用户配置文件的有效特征方面都存在问题。本文研究了一种深度神经网络来学习广告推荐的有效表示。具体来说,我们将一个用户画像特征和一个广告特征连接在一起作为一个输入向量,然后使用深度神经网络来预测用户是否与广告相关。我们对腾讯广告竞争数据集进行了实验,实验结果表明:(1)DNN方法比传统方法获得了更好的预测性能;(2) 6层隐藏节点的DNN方法性能最佳;(3)单感知方法在广告推荐上优于多感知器方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Effective Deep Learning Approach for Personalized Advertisement Service Recommend
Personalized advertisement service recommend represents one of the largest scales and most sophisticated industrial recommendation systems. The key challenge of advertisement recommend is to find relevant users for a specific advertisement. Traditional recommendation approaches suffered from selecting effective features on both advertisements and user profiles. In this paper, we studied a deep neural network to learning effective representation on advertisement recommend. Specifically, we connected one user profile features and one advertisement features together as one input vector, and then employed deep neural network to predict the whether the user is relevant to the advertisement. We conducted our experiments on Tencent advertising competition data set, and the experiment results show that (1) the DNN method obtained better predictive performance than traditional approaches; (2) the DNN method with 6 layers hidden nodes achieved best performance; (3) the single-perception method overcame the multi-perceptron method on Advertisement Recommend.
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