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UNI-CEN Standardized Census Data Table - Census Division (CD) - 1976 - Wide Format (CSV) (Version 2023-03)

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DataONE2023-04-04 更新2024-06-08 收录
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UNI-CEN Standardized Census Data Tables contain Census data that have been reformatted into a common table format with standardized variable names and codes. The data are provided in two tabular formats for different use cases. \"Long\" tables are suitable for use in statistical environments, while \"wide\" tables are commonly used in GIS environments. The long tables are provided in Stata Binary (dta) format, which is readable by all statistics software. The wide tables are provided in comma-separated values (csv) and dBase 3 (dbf) formats with codebooks. The wide tables are easily joined to the UNI-CEN Digital Boundary Files. For the csv files, a .csvt file is provided to ensure that column data formats are correctly formatted when importing into QGIS. A schema.ini file does the same when importing into ArcGIS environments. As the DBF file format supports a maximum of 250 columns, tables with a larger number of variables are divided into multiple DBF files. For more information about file sources, the methods used to create them, and how to use them, consult the documentation at https://borealisdata.ca/dataverse/unicen_docs. For more information about the project, visit https://observatory.uwo.ca/unicen.

UNI-CEN标准化普查数据表(UNI-CEN Standardized Census Data Tables)收录经重新格式化为通用表格框架的普查数据,所有变量均采用标准化命名与编码规则。该数据集提供两种表格格式以适配不同应用场景:长表(Long tables)适用于统计分析环境,宽表(Wide tables)则普遍应用于地理信息系统(GIS)环境。长表采用Stata二进制(dta)格式存储,可被所有主流统计软件读取。宽表附带代码手册,以逗号分隔值(csv)与dBase 3(dbf)两种格式提供。宽表可便捷地与UNI-CEN数字边界文件进行关联拼接。针对csv文件,配套提供.csvt格式文件,以确保在导入QGIS时列数据格式正确无误;而在导入ArcGIS环境时,则通过schema.ini文件实现相同功能。由于dbf格式文件最多仅支持250列,当变量数量超过该阈值时,宽表将被拆分为多个dbf文件。如需了解文件来源、制作方法及使用方式等更多详情,请查阅https://borealisdata.ca/dataverse/unicen_docs处的文档资料。如需了解该项目的更多信息,请访问https://observatory.uwo.ca/unicen。
创建时间:
2023-12-28
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