Lookalike models are based on the assumption that user similarity plays an important role towards product selling and enhancing the existing advertising campaigns from a very large user base. Challenges associated to these models reside on the heterogeneity of the user base and its sparsity. In this work, we propose a novel framework that unifies the customers different behaviors or features such as demographics, buying behaviors on different platforms, customer loyalty behaviors and build a lookalike model to improve customer targeting for Rakuten Group, Inc. Extensive experiments on real e-commerce and travel datasets demonstrate the effectiveness of our proposed lookalike model for user targeting task.
翻译:类似建模是基于用户相似性对产品销售和增强现有广告活动的假设。这些模型面临的挑战在于用户群体的异质性和稀疏性。在这项工作中,我们提出了一个新的框架,在Rakuten Group, Inc.顾客不同的行为或特征如人口统计学、不同平台上的购买行为、客户忠诚行为等基础上构建类似模型,以改进用户定位。我们在真实的电子商务和旅游数据集上进行了广泛的实验,证明了我们所提出的类似模型在用户定位任务中的有效性。