Click-through rate (CTR) prediction plays an important role in online advertising and recommendation systems, which aims at estimating the probability of a user clicking on a specific item. Feature interaction modeling and user interest modeling methods are two popular domains in CTR prediction, and they have been studied extensively in recent years. However, these methods still suffer from two limitations. First, traditional methods regard item attributes as ID features, while neglecting structure information and relation dependencies among attributes. Second, when mining user interests from user-item interactions, current models ignore user intents and item intents for different attributes, which lacks interpretability. Based on this observation, in this paper, we propose a novel approach Hierarchical Intention Embedding Network (HIEN), which considers dependencies of attributes based on bottom-up tree aggregation in the constructed attribute graph. HIEN also captures user intents for different item attributes as well as item intents based on our proposed hierarchical attention mechanism. Extensive experiments on both public and production datasets show that the proposed model significantly outperforms the state-of-the-art methods. In addition, HIEN can be applied as an input module to state-of-the-art CTR prediction methods, bringing further performance lift for these existing models that might already be intensively used in real systems.
翻译:点击率预测(CTR)在网上广告和建议系统中发挥着重要作用,其目的是估计用户点击特定项目的概率。 特征互动模型和用户兴趣模型方法是CTR预测中两个受欢迎的领域,但近年来已经广泛研究过这些方法。 首先,传统方法将项目属性视为识别特征,而忽视结构信息和各种属性之间的关联性。 其次,当用户对用户互动的兴趣来自用户项目互动时,当前模型忽视用户对不同属性的意向和项目意图,而这些属性缺乏解释性。 根据这一观察,我们建议采用新颖的方法,即高端意识嵌入网络(HIEN),该方法考虑到基于构建属性图中自下树群的属性属性属性。 HIEN还根据我们拟议的分级关注机制,捕捉不同项目属性和项目意向的用户意向。对公共和生产数据集进行的广泛实验表明,拟议的模型大大超越了状态的用户意向和项目意图。此外,在本文中,我们建议采用的新办法是高层次的嵌入网络(HIEN),还可以将这些现有模型作为不断应用的升级模型。