An Embedding-Based Grocery Search Model at Instacart
Xie, Yuqing, Na, Taesik, Xiao, Xiao, Manchanda, Saurav, Rao, Young, Xu, Zhihong, Shu, Guanghua, Vasiete, Esther, Tenneti, Tejaswi, Wang, Haixun
–arXiv.org Artificial Intelligence
The key to e-commerce search is how to best utilize the large yet noisy log data. In this paper, we present our embedding-based model for grocery search at Instacart. The system learns query and product representations with a two-tower transformer-based encoder architecture. To tackle the cold-start problem, we focus on content-based features. To train the model efficiently on noisy data, we propose a self-adversarial learning method and a cascade training method. AccOn an offline human evaluation dataset, we achieve 10% relative improvement in RECALL@20, and for online A/B testing, we achieve 4.1% cart-adds per search (CAPS) and 1.5% gross merchandise value (GMV) improvement. We describe how we train and deploy the embedding based search model and give a detailed analysis of the effectiveness of our method.
arXiv.org Artificial Intelligence
Sep-12-2022
- Country:
- Asia
- Europe > Spain
- North America
- Canada (0.04)
- Puerto Rico > San Juan
- San Juan (0.04)
- United States
- Alaska > Anchorage Municipality
- Anchorage (0.04)
- Minnesota > Hennepin County
- Minneapolis (0.14)
- New York > New York County
- New York City (0.04)
- Oregon > Multnomah County
- Portland (0.04)
- Alaska > Anchorage Municipality
- Genre:
- Research Report (0.40)
- Industry:
- Technology: