通过极端分类在双边市场中实现高精度受众扩展 / High Precision Audience Expansion via Extreme Classification in a Two-Sided Marketplace
1️⃣ 一句话总结
这篇论文介绍了Airbnb如何通过将全球地图划分为2500万个均匀网格,并从中精准筛选出最可能被预订的高精度区域,来革新其搜索系统的房源检索方法,从而更高效地匹配房客与房源。
Airbnb search must balance a worldwide, highly varied supply of homes with guests whose location, amenity, style, and price expectations differ widely. Meeting those expectations hinges on an efficient retrieval stage that surfaces only the listings a guest might realistically book, before resource intensive ranking models are applied to determine the best results. Unlike many recommendation engines, our system faces a distinctive challenge, location retrieval, that sits upstream of ranking and determines which geographic areas are queried in order to filter inventory to a candidate set. The preexisting approach employs a deep bayesian bandit based system to predict a rectangular retrieval bounds area that can be used for filtering. The purpose of this paper is to demonstrate the methodology, challenges, and impact of rearchitecting search to retrieve from the subset of most bookable high precision rectangular map cells defined by dividing the world into 25M uniform cells.
通过极端分类在双边市场中实现高精度受众扩展 / High Precision Audience Expansion via Extreme Classification in a Two-Sided Marketplace
这篇论文介绍了Airbnb如何通过将全球地图划分为2500万个均匀网格,并从中精准筛选出最可能被预订的高精度区域,来革新其搜索系统的房源检索方法,从而更高效地匹配房客与房源。
源自 arXiv: 2602.14358