...
首页> 外文期刊>Data in Brief >Dataset for holiday rentals’ daily rate pricing in a cultural tourism destination
【24h】

Dataset for holiday rentals’ daily rate pricing in a cultural tourism destination

机译:文化旅游目的地度假租金每日价格定价的数据集

获取原文
   

获取外文期刊封面封底 >>

       

摘要

This data article describes a holiday rental dataset from a medium-size cultural city destination. Daily rate and variables related to location, size, amenities, rating, and seasonality are highlighted as the main features. The data was extracted fromBooking.com, legal registration of the accommodation (RTA) and Google Maps, among other sources. This dataset contains data from 665 holiday rentals offered as entire flat (rent per room was discarded), with a total of 1623 cases and 28 variables considered. Regarding data extraction, RTA is ordered by registration number, which is taken and, through a Google search with the following structure: “apartment registration no.?+?Booking?+?Seville”, the holiday rental profile inBooking.comis found. Then, it is verified that both the address of the accommodation and the registration number match in RTA andBooking.com, proceeding with data extraction to a Microsoft Excel's file. Google Maps is used to determine the minutes spent walking from the accommodation to the spot of maximum tourist interest of the city. A price index based on the average price per square meter of real estate per district is also incorporated to the dataset, as well as a visual appeal rating made by the authors of every holiday rental based on itsBooking.comphotos profile. Only cases with complete data were considered. A statistics summary of all variables of the data collected is presented. This dataset can be used to develop an estimation model of daily prices of stay in holiday rentals through predetermined variables. Econometrics methodologies applied to this dataset can also allow testing which variables included affecting the composition of holiday rentals' daily rates and which not, as well as determining their respective influence on daily rates.
机译:此数据文章介绍了中型文化城市目的地的度假租赁数据集。与位置,大小,便利设施,评分和季节性有关的日费率和变量突出显示为主要功能。数据摘自Booking.com,住宿的合法注册(RTA)和Google Maps等。该数据集包含来自665个度假屋的数据,这些度假屋作为整个公寓提供(每个房间的租金被丢弃),总共考虑了1623个案例和28个变量。关于数据提取,RTA按注册号排序,然后通过Google搜索进行搜索,注册号采用以下结构:“公寓注册号?+?Booking?+?Seville”,可在Booking.com中找到度假租赁资料。然后,验证住宿的地址和注册号在RTA和Booking.com中都匹配,然后将数据提取到Microsoft Excel的文件中。 Google地图用于确定从住宿步行到该城市最大的旅游景点所花费的时间。基于每个区域的每平方米房地产平均价格的价格指数,以及基于其Booking.com照片资料的每个度假租金的作者所做出的视觉吸引力等级,都将被纳入数据集。仅考虑具有完整数据的案例。提供了所收集数据的所有变量的统计摘要。该数据集可用于通过预定变量来开发假日租金每日住宿价格的估计模型。应用于此数据集的计量经济学方法学还可以测试哪些变量包括影响假日租金的日费率构成,哪些不影响,以及确定它们各自对日租金的影响。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号