结合行为和社会网络数据用于在线广告

A. Bagherjeiran, R. Parekh
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引用次数: 46

摘要

社交网络中有效的广告有两个主要要求。首先,社交网络中的链接与目标广告相关。其次,社交信息可以很容易地与现有的目标定位方法结合起来,以预测响应率。我们在本文中的目的是研究这些需求。我们衡量一个社交网络的相关性,雅虎!我们调查了社交网络信息对现有用户资料信息的补充程度。我们发现,在我们的社交网络中存在显著的同质性,即网络中的链接表明了相似的广告相关兴趣。我们提出了一个集成分类器,将现有的仅用户模型与社交网络特征结合起来,以改进响应预测。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Combining Behavioral and Social Network Data for Online Advertising
There are two main requirements for effective advertising in social networks. The first is that links in the social network are relevant to the targeted ads. The second is that social information can be easily incorporated with existing targeting methods to predict response rates. Our purpose in this paper is to investigate these requirements. We measure the relevance of a social network, the Yahoo! Instant Messenger graph, to classes of ads. We investigate the degree to which social network information complements existing user-profile information for targeting. We find that there is significant evidence in our social network of homophily, that links in the network indicate similar ad-relevant interests. We propose an ensemble classifier to combine existing user-only models with social network features to improve response predictions.
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