移动社交网络中在线广告推荐负反馈与抽样的冲突解决

Yu Tao, Yuanxing Zhang, Jianing Lin, Kaigui Bian
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引用次数: 0

摘要

移动社交网络(MSN)中的在线广告推荐是一个新兴的研究热点。与传统的推荐系统相比,它的主要区别之一是存在用户明确的负面反馈(例如,用户没有点击广告,或者她/他不喜欢它)。另一方面,大多数方法在训练传统推荐系统时使用负抽样(例如,随机抽样用户从未与之交互的项目,以避免过度拟合,也就是说,假设她/他不喜欢它)。这可能会导致负面反馈和抽样之间的冲突,因为它们应该被区别对待,但如果直接将传统方法应用于在线广告推荐,则它们被认为是相同的。在本文中,我们提出了AdRec,一个新的框架的在线广告推荐在MSN来解决这一冲突。我们引入一个辅助输出,并修改损失函数,为负样本和反馈分配不同的权重。应用理论分析来展示我们设计的效率,并且在真实世界数据集上的实验表明,我们提出的方法优于几种最先进的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Addressing the Conflict of Negative Feedback and Sampling for Online Ad Recommendation in Mobile Social Networks
Online advertisement (ad) recommendation in the mobile social network (MSN) is an uprising interest of research. Compared to traditional recommendation systems, one of its major difference is the presence of explicit negative feedback from users (e.g., a user does not click an ad, or she/he does not like it). On the other hand, most methods utilize negative sampling (e.g., randomly sampling an item that a user never interacts with to avoid overfitting, that is, she/he is assumed to dislike it) while training conventional recommendation systems. This may lead to a conflict between negative feedback and sampling, as they should be treated differently, but they are considered as the same if traditional methods are directly applied for online ad recommendation. In this paper, we present AdRec, a novel framework of online ad recommendation in MSN to address this conflict. We introduce an auxiliary output and modify the loss function to assign different weights to negative samples and feedbacks. A theoretical analysis is applied to show the efficiency of our design, and experiments on real world datasets demonstrate that our proposed method outperforms several state-of-the-art approaches.
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