Miguel Alves Gomes, Richard Meyes, Philipp Meisen, Tobias Meisen
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引用次数: 0
摘要
除了自然语言处理和计算机视觉,大型学习模型也已进入电子商务领域。特别是在推荐系统和点击率预测方面,这些模型显示出了强大的预测能力。在这项工作中,我们的目标是根据客户的当前会话,预测客户点击给定推荐的概率。因此,我们提出了一种由客户行为嵌入表征和递归神经网络组成的两阶段方法。在第一阶段,我们在客户活动数据上训练自监督跳序嵌入。由此产生的嵌入表示法在第二阶段用于对客户序列进行编码,然后将其作为学习模型的输入。我们提出的方法不同于利用广泛的端到端模型进行点击率预测的主流趋势。实验结合了真实世界的工业用例和广泛使用的公开基准数据集,证明我们的方法优于当前最先进的模型。在工业用例中,我们的方法预测客户点击意向的平均 F1 准确率为 94%,比最先进的基准高出一个百分点;在基准数据集中,我们的方法预测客户点击意向的平均 F1 准确率为 79%,比经过最佳测试的最先进基准高出七个百分点以上。结果表明,与该领域目前的趋势相反,并不总是需要大型端到端模型。我们的实验分析表明,我们的方法之所以能取得如此优异的成绩,是因为我们使用了客户行为的自监督预训练嵌入作为客户表示。
It’s Not Always about Wide and Deep Models: Click-Through Rate Prediction with a Customer Behavior-Embedding Representation
Alongside natural language processing and computer vision, large learning models have found their way into e-commerce. Especially, for recommender systems and click-through rate prediction, these models have shown great predictive power. In this work, we aim to predict the probability that a customer will click on a given recommendation, given only its current session. Therefore, we propose a two-stage approach consisting of a customer behavior-embedding representation and a recurrent neural network. In the first stage, we train a self-supervised skip-gram embedding on customer activity data. The resulting embedding representation is used in the second stage to encode the customer sequences which are then used as input to the learning model. Our proposed approach diverges from the prevailing trend of utilizing extensive end-to-end models for click-through rate prediction. The experiments, which incorporate a real-world industrial use case and a widely used as well as openly available benchmark dataset, demonstrate that our approach outperforms the current state-of-the-art models. Our approach predicts customers’ click intention with an average F1 accuracy of 94% for the industrial use case which is one percentage point higher than the state-of-the-art baseline and an average F1 accuracy of 79% for the benchmark dataset, which outperforms the best tested state-of-the-art baseline by more than seven percentage points. The results show that, contrary to current trends in that field, large end-to-end models are not always needed. The analysis of our experiments suggests that the reason for the performance of our approach is the self-supervised pre-trained embedding of customer behavior that we use as the customer representation.
期刊介绍:
The Journal of Theoretical and Applied Electronic Commerce Research (JTAER) has been created to allow researchers, academicians and other professionals an agile and flexible channel of communication in which to share and debate new ideas and emerging technologies concerned with this rapidly evolving field. Business practices, social, cultural and legal concerns, personal privacy and security, communications technologies, mobile connectivity are among the important elements of electronic commerce and are becoming ever more relevant in everyday life. JTAER will assist in extending and improving the use of electronic commerce for the benefit of our society.