基于社会经济模式的共享经济住宿推荐

Raúl Sánchez-Vázquez, Jordan Silva, Rodrygo L. T. Santos
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引用次数: 10

摘要

近年来,共享经济市场的出现使用户能够以点对点的方式共享商品和服务。旅游行业的一个突出例子是Airbnb,它将客人和主人联系起来,除了经济交易之外,还允许双方交换文化体验。然而,Airbnb的客人资料通常比较稀疏,这限制了传统住宿推荐方法的适用性。受最近对Airbnb上的回购意向行为的社会经济分析的启发,我们提出了一种基于情境感知的学习排序方法,用于住宿推荐,旨在推断用户在选择预订住宿时对几个维度的感知。特别是,我们设计的功能旨在捕捉用户的价格敏感性,以及他们对特定住宿的感知价值,选择它而不是其他可用选项所涉及的风险,它可以提供的文化体验的真实性,以及其他用户通过口耳相传的整体感知。通过使用公开可用的Airbnb数据进行综合评估,我们证明了我们提出的方法与许多替代推荐基线(包括对Airbnb自己的推荐器的模拟)相比的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Exploiting Socio-Economic Models for Lodging Recommendation in the Sharing Economy
Recent years have witnessed the emergence of sharing economy marketplaces, which enable users to share goods and services in a peer-to-peer fashion. A prominent example in the travel industry is Airbnb, which connects guests with hosts, allowing both to exchange cultural experiences in addition to the economic transaction. Nonetheless, Airbnb guest profiles are typically sparse, which limits the applicability of traditional lodging recommendation approaches. Inspired by recent socio-economic analyses of repurchase intent behavior on Airbnb, we propose a context-aware learning-to-rank approach for lodging recommendation, aimed to infer the user's perception of several dimensions involved in choosing which lodging to book. In particular, we devise features aimed to capture the user's price sensitivity as well as their perceived value of a particular lodging, the risk involved in choosing it rather than other available options, the authenticity of the cultural experience it could provide, and its overall perception by other users through word of mouth. Through a comprehensive evaluation using publicly available Airbnb data, we demonstrate the effectiveness of our proposed approach compared to a number of alternative recommendation baselines, including a simulation of Airbnb's own recommender.
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