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Deep Position-wise Interaction Network for CTR Prediction

Jianqiang Huang, Ke Hu, Qingtao Tang, Mingjian Chen, Yi Qi, Jia Cheng, Jun Lei

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Abstract

Click-through rate(CTR) prediction plays an important role in online advertising and recommender systems. In practice, the training of CTR models depends on click data which is intrinsically biased towards higher positions since higher position has higher CTR by nature. Existing methods such as actual position training with fixed position inference and inverse propensity weighted training with no position inference alleviate the bias problem to some extend. However, the different treatment of position information between training and inference will inevitably lead to inconsistency and sub-optimal online performance. Meanwhile, the basic assumption of these methods, i.e., the click probability is the product of examination probability and relevance probability, is oversimplified and insufficient to model the rich interaction between position and other information.

Topics & Concepts

Position (finance)Computer scienceContext (archaeology)InferenceConsistency (knowledge bases)Click-through rateArtificial intelligenceMachine learningRanking (information retrieval)Position paperDeep learningData miningInformation retrievalWorld Wide WebFinancePaleontologyBiologyEconomicsRecommender Systems and TechniquesConsumer Market Behavior and PricingAdvanced Bandit Algorithms Research