业余
摄影
计算机科学
财产(哲学)
长尾
图像(数学)
分析
人工智能
营销
数据科学
业务
视觉艺术
地理
数学
艺术
考古
哲学
认识论
统计
作者
Shunyuan Zhang,Dokyun Lee,Param Vir Singh,Kannan Srinivasan
出处
期刊:Management Science
[Institute for Operations Research and the Management Sciences]
日期:2021-12-20
卷期号:68 (8): 5644-5666
被引量:77
标识
DOI:10.1287/mnsc.2021.4175
摘要
We study how Airbnb property demand changed after the acquisition of verified images (taken by Airbnb’s photographers) and explore what makes a good image for an Airbnb property. Using deep learning and difference-in-difference analyses on an Airbnb panel data set spanning 7,423 properties over 16 months, we find that properties with verified images had 8.98% higher occupancy than properties without verified images (images taken by the host). To explore what constitutes a good image for an Airbnb property, we quantify 12 human-interpretable image attributes that pertain to three artistic aspects—composition, color, and the figure-ground relationship—and we find systematic differences between the verified and unverified images. We also predict the relationship between each of the 12 attributes and property demand, and we find that most of the correlations are significant and in the theorized direction. Our results provide actionable insights for both Airbnb photographers and amateur host photographers who wish to optimize their images. Our findings contribute to and bridge the literature on photography and marketing (e.g., staging), which often either ignores the demand side (photography) or does not systematically characterize the images (marketing). This paper was accepted by Juanjuan Zhang, marketing.
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