| Literature DB >> 30647987 |
Chen Chu1, Zhao Li1, Beibei Xin2, Fengchao Peng3, Chuanren Liu4, Remo Rohs2, Qiong Luo3, Jingren Zhou1.
Abstract
Matching buyers with most suitable sellers providing relevant items (e.g., products) is essential for e-commerce platforms to guarantee customer experience. This matching process is usually achieved through modeling inter-group (buyer-seller) proximity by e-commerce ranking systems. However, current ranking systems often match buyers with sellers of various qualities, and the mismatch is detrimental to not only buyers' level of satisfaction but also the platforms' return on investment (ROI). In this paper, we address this problem by incorporating intra-group structural information (e.g., buyer-buyer proximity implied by buyer attributes) into the ranking systems. Specifically, we propose Deep Graph Embedding (DEGREE), a deep learning based method, to exploit both inter-group and intra-group proximities jointly for structural learning. With a sparse filtering technique, DEGREE can significantly improve the matching performance with computation resources less than that of alternative deep learning based methods. Experimental results demonstrate that DEGREE outperforms state-of-the-art graph embedding methods on real-world e-commence datasets. In particular, our solution boosts the average unit price in purchases during an online A/B test by up to 11.93%, leading to better operational efficiency and shopping experience.Entities:
Keywords: A/B Test; Customer Matching; Deep Learning; E-commerce Ranking; Graph Embedding; Structure Learning
Year: 2018 PMID: 30647987 PMCID: PMC6330176 DOI: 10.1145/3269206.3272028
Source DB: PubMed Journal: Proc ACM Int Conf Inf Knowl Manag ISSN: 2155-0751