five

Transport mode preferences in V4 over 2018-2023: database

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DataCite Commons2025-10-30 更新2025-04-16 收录
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https://repod.icm.edu.pl/citation?persistentId=doi:10.18150/IIJMAX
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The survey was conducted in national languages using the CATI (Computer-Assisted Telephone Interviewing) technique to examine respondents' preferences in choosing the modes of transport for five categories of key activities (commuting to work or school, work-related travel, daily/small purchases, large purchases, travel related to children's activities, and other regular activities such as hobbies or religious purposes) in the Czech Republic, Poland, Slovakia, and in Hungary. Several questions explored respondents' attitudes towards transport-related statements. The survey was conducted from December 20, 2023, to January 16, 2024. The study considered the population of adults living in V4 countries aged 18-74. The following number of interviews were collected: 1067 interviews from Poland, 513 interviews from the Czech Republic, 534 interviews from Hungary, and 501 interviews from Slovakia. Stratified random sampling was used according to gender, age, professional activity, and domicile. Post-stratification weights were used for the following criteria: age, gender, region, and size of the place of residence. Hence, the obtained research samples are representative of the countries’ inhabitants and allow for conclusions regarding general populations.The description of variables is provided in the file metadata_variables_codes.xlsx.

本调研采用计算机辅助电话访谈(CATI, Computer-Assisted Telephone Interviewing)技术,以各国官方语言开展,旨在探究捷克、波兰、斯洛伐克及匈牙利四国受访者在五类核心活动场景下的交通方式选择偏好,五类核心活动具体包括:通勤(上班或上学)、公务出行、日常/小额采购、大额采购、子女相关活动出行,以及其他常规活动(如爱好或宗教类活动)。多项调研问题用于考察受访者对交通相关表述的态度。本次调研的实施周期为2023年12月20日至2024年1月16日,研究覆盖V4四国18至74岁的成年常住居民。此次调研共回收访谈样本如下:波兰1067份、捷克513份、匈牙利534份、斯洛伐克501份。调研采用分层随机抽样方法,分层依据涵盖性别、年龄、职业活动及居住地域。后续针对年龄、性别、区域及居住城镇规模四类标准进行了事后分层加权处理,因此所得研究样本可代表四国全体居民,能够支撑针对总体人群的研究结论。变量说明详见metadata_variables_codes.xlsx文件。
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RepOD
创建时间:
2024-10-16
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