基于学习的Airbnb价格预测模型

Siqi Yang
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引用次数: 4

摘要

Airbnb已成为当今最大的在线住宿预订平台之一,在220多个国家提供超过7亿套住宿。预订成功的主要原因是合适的价格。为了提高预订成功率,平台需要为房东提供价格建议。因为中国将是Airbnb的主要市场之一,所以本文主要关注北京的Airbnb市场。本文针对北京Airbnb市场开发了基于机器学习方法(即XGBoost和神经网络)的定价预测模型。通过对价格相关特征的分析,选取重要特征建立预测模型。除了准确的价格预测模型,该研究还为房东提供了如何通过增加重要设施来提高价格的建议。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Learning-based Airbnb Price Prediction Model
Airbnb has become one of the largest online accommodation booking platforms today, providing more than 700 million accommodations in more than 220 countries. The main reason of successful booking is the proper price. To increase the success booking rate, the platform needs to provide price suggestions for the hosts. This paper focuses on Airbnb market of Beijing since China will be one of the main markets of Airbnb. The paper has developed a pricing prediction model based on machine learning approaches, i.e., XGBoost and neural network, for the Beijing Airbnb market. Through the analysis of the features related to the price, the research selects important ones to develop the prediction model. Apart from the accurate price prediction model, the research also gives suggestions for hosts about how to increase their price by adding important amenities.
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