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Transfer Learning for Behavioral Targeting

机译:转移学习以行为定位

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Recently, Behavioral Targeting (BT) is attracting much attention from both industry and academia due to its rapid growth in online advertising market. Though a basic assumption of BT, which is, the users who share similar Web browsing behaviors will have similar preference over ads, has been empirically verified, we argue that the users' ad click preference and Web browsing behavior are not reflecting the same user intent though they are correlated. In this paper, we propose to formulate BT as a transfer learning problem. We treat the users' preference over ads and Web browsing behaviors as two different user behavioral domains and propose to utilize transfer learning strategy across these two user behavioral domains to segment users for BT ads delivery. We show that some classical BT solutions could be formulated in transfer learning view. As an example, we propose to leverage translated learning, which is a recent proposed transfer learning algorithm, to benefit the BT ads delivery. Experimental results on real ad click data show that, BT user segmentation by the approach of transfer learning can outperform the classical user segmentation strategies for larger than 20% in terms of smoothed ad Click Through Rate(CTR).
机译:最近,行为定向(BT)由于其在线广告市场的快速增长而引起了业界和学术界的广泛关注。尽管对BT的基本假设(即具有相似Web浏览行为的用户将比广告具有相似的偏好)进行了经验验证,但我们认为用户的广告点击偏好和Web浏览行为并未反映相同的用户意图尽管它们是相关的。在本文中,我们建议将BT公式化为转移学习问题。我们将用户对广告和Web浏览行为的偏好视为两个不同的用户行为域,并建议在这两个用户行为域之间利用转移学习策略来细分用户以进行BT广告投放。我们展示了一些经典的BT解决方案可以用转移学习的观点来阐述。例如,我们建议利用翻译学习(这是最近提出的转移学习算法)来使BT广告投放受益。对真实广告点击数据的实验结果表明,通过平滑学习的广告点击率(CTR),通过转移学习的方法进行的BT用户细分可以比传统的用户细分策略高出20%以上。

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