In this paper, we study item advertisements for small businesses. This application recommends prospective customers to specific items requested by businesses. From analysis, we found that the existing Recommender Systems (RS) were ineffective for small/new businesses with a few sales history. Training samples in RS can be highly biased toward popular businesses with sufficient sales and can decrease advertising performance for small businesses. We propose a meta-learning-based RS to improve advertising performance for small/new businesses and shops: Meta-Shop. Meta-Shop leverages an advanced meta-learning optimization framework and builds a model for a shop-level recommendation. It also integrates and transfers knowledge between large and small shops, consequently learning better features in small shops. We conducted experiments on a real-world E-commerce dataset and a public benchmark dataset. Meta-Shop outperformed a production baseline and the state-of-the-art RS models. Specifically, it achieved up to 16.6% relative improvement of Recall@1M and 40.4% relative improvement of nDCG@3 for user recommendations to new shops compared to the other RS models.
翻译:在本文中,我们研究小企业的项目广告。这个应用程序向未来的客户推荐企业要求的具体项目。从分析中,我们发现现有的建议系统(RS)对销售历史少的小企业/新企业来说是无效的。RS的培训样本可能高度偏向于销售量充足的流行企业,并可能降低小企业的广告性能。我们提出了基于元学习的RS,以改善小企业/新企业和商店的广告性能:Meta-Shop。Meta-Shop利用了先进的元学习优化框架,并建立了一个商店级建议模式。它还整合和转让了大商店和小商店之间的知识,从而学习了小商店的更好特征。我们进行了关于真实世界电子商务数据集和公共基准数据集的实验。Meta-SHop超越了生产基线和最新RS模式。具体来说,它实现了16.6%的Recall@1M和40.4%的NDCG@3相对改进,用于向新商店的用户建议,而与塞族共和国的其他模式相比,它实现了16.6%的相对改进。