使用机器学习的AIRBNB价格预测

M. Mahyoub, Ali Al Ataby, Y. Upadhyay, J. Mustafina
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引用次数: 0

摘要

众所周知,Airbnb是一个房屋共享和租赁平台,为房主或租房者(称为房东)提供设施,在在线平台上提供他们的房屋,或者称为房源,供客人预订。主人有责任独立设定他们物品的预期价格。虽然Airbnb和一些网站提供了很多建议,但我们还没有一个免费或准确的系统。由于系统中有许多不同的因素,房东很难正确地为他们列出的房产定价。市场上有一些可供选择的定价模式,然而,这些都不是免费的。主人有责任为每个特定的酒店每晚输入适当的基本价格。另一个挑战是基于假期、季节和天气的动态定价。房东不可能在所有日期都保持相同的价格,因为这会对业务产生重大影响。确保在这个竞争激烈的时期列出合适的价格是极其重要的。本研究比较了许多机器学习算法和方法在Airbnb价格预测中的表现,以确定最准确的一个。本研究中实验的机器学习模型包括线性回归、XGBoost、随机森林、ANN和KNN。使用不同的性能度量来验证结果。
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AIRBNB Price Prediction Using Machine Learning
Airbnb is known to be a home-sharing and rental platform which provides facilities to homeowners or renters (referred to as hosts) to offer their houses otherwise known as listings on an online platform for guests booking. It is the responsibility of the hosts to set the expected price of their items independently. Although Airbnb along with a few sites provides many advices, we are yet to have any free or accurate system. This became difficult for the hosts to correctly come up with a price for their listed properties due to many different factors in the system. There are a few pricing models available in the market, however, these are not free. It is the responsibility of the host to enter the appropriate basic price for each night for a particular property. The other challenge is dynamic pricing based on holidays, seasons, and weather. The host can't keep the same price for all the dates as this impacts the business significantly. It is extremely critical to ensure appropriate prices are listed during this competitive time. This study compares the performance of numerous machine learning algorithms and methodologies in Airbnb price prediction to identify the most accurate one. Linear Regression, XGBoost, Random Forest, ANN and KNN are among the machine learning models experimented in this study. Different performance measures are used to validate the results.
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