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Forecasting Destination Weekly Hotel Occupancy with Big Data

机译:大数据预测目的地每周酒店入住率

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摘要

Hospitality constituencies need accurate forecasting of future performance of hotels in specific destinations to benchmark their properties and better optimize operations. As competition increases, hotel managers have urgent need for accurate short-term forecasts. In this study, time-series models incorporating several tourism big data sources, including search engine queries, website traffic, and weekly weather information, are tested in order to construct an accurate forecasting model of weekly hotel occupancy for a destination. The results show the superiority of ARMAX models with both search engine queries and website traffic data in accurate forecasting. Also, the results suggest that weekly dummies are superior to Fourier terms in capturing the hotel seasonality. The limitations of the inclusion of multiple big data sources are noted since the reduction in forecasting error is minimal.
机译:待客选区需要准确预测特定目的地酒店的未来表现,以对它们的资产进行基准测试并更好地优化运营。随着竞争的加剧,酒店经理迫切需要准确的短期预测。在本研究中,对包含几个旅游大数据源(包括搜索引擎查询,网站流量和每周天气信息)的时间序列模型进行了测试,以构建一个目的地每周酒店入住率的准确预测模型。结果表明,ARMAX模型在搜索引擎查询和网站流量数据方面都具有准确预测的优势。此外,结果表明,每周假人在捕获酒店季节性方面要优于傅立叶。由于预测误差的减少是最小的,因此指出了包含多个大数据源的限制。

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