Weighted Ensemble of Neural and Probabilistic Graphical Models for Click Prediction

Kritarth Bisht, Seba Susan
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引用次数: 3

Abstract

Predicting user behavior in web mining is an important concept with commercial implications. The user response to search engine results is crucial for understanding the relative popularity of websites and market trends. The most popular way of understanding user interests is via click models that can predict whether a user will click on a search engine result or not, based on past observations. There are two main categories of click models, namely, the neural network based models and the probabilistic graphical models. In this paper, we combine the goodness of both approaches by presenting a weighted ensemble of both types of models. The weighted sum of softmax scores integrates the predictions of the individual models. Assigning higher weights to the neural models is found to improve the performance of the ensemble. The AUC and perplexity scores of our weighted ensemble model are higher than the state of the art, as proved by experiments on the benchmark Tiangong-ST dataset.
点击预测的神经和概率图形模型的加权集成
在web挖掘中预测用户行为是一个具有商业意义的重要概念。用户对搜索引擎结果的反应对于了解网站的相对受欢迎程度和市场趋势至关重要。了解用户兴趣的最流行方法是通过点击模型,该模型可以根据过去的观察结果预测用户是否会点击搜索引擎结果。点击模型主要有两大类,即基于神经网络的点击模型和概率图模型。在本文中,我们通过提出两种模型的加权集合来结合这两种方法的优点。softmax得分的加权和整合了各个模型的预测。为神经模型分配更高的权重可以提高集成的性能。在天宫- st基准数据集上的实验证明,我们的加权集成模型的AUC和perplexity得分高于目前的水平。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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