Abstract
Click-through rate (CTR) prediction is one of the key areas in industrial bidding advertising. Recently, to improve prediction performance, researchers have proposed the interest-based deep models that learn the user's latent interest from historical click behaviors. However, the interest-based deep models lack the ability to trace the dynamics of interest from both the positive and negative samples, which leading to prediction errors. In particular, user's interest in candidate advertisements could be positive (i.e. interested) or negative (i.e. uninterested), and changing over time. To solve this problem, we propose a deep-based dynamic interest perception network (DIPN) that can trace both positive interest and negative interest. The proposed DIPN model introduces three new parts to the interest-based deep model: a gated recurrent unit (GRU) learns the implied interest vector from historical click sequences; an attention mechanism improves the expressiveness of interest vector with the weight vector; an interest degree feature scales the weight vector by the d-Softmax function to improve the expressiveness of interest vector. We evaluate the effectiveness of the DIPN model by conducting extensive comparative experiments using real datasets. The experimental results demonstrate that compared with state-of-the-art models, DIPN achieves the highest prediction performance.
Highlights
Advertising plays a fundamental and essential role in business activities
We propose the dynamic interest perception network (DIPN) model based on the interest degree feature, the gated recurrent unit (GRU) layer and the attention mechanism
We built an experimental dataset that has rich historical information based on a contest dataset to verify the effectiveness of DIPN
Summary
Advertising plays a fundamental and essential role in business activities. Forrester Research forecasts that US mobile displays and social advertisements will cost up to $50.5 billion by 2021 [12]. Researchers have proposed some interest-based deep networks that can learn user’s static interest from historical behaviors. The interest-based deep models, which do not consider the changes in user interest, could only learn the positive interest from historical clicks. This will degrade the CTR prediction accuracy by misestimating the user’s real-time interest. We propose the DIPN model based on the interest degree feature, the GRU layer and the attention mechanism. This model can capture the dynamic changes in user interest and improve prediction performance.
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