TR 41-2015

Data quality metrics


说明:

  • 此图仅显示与当前标准最近的5级引用;
  • 鼠标放置在图上可以看到标题编号;
  • 此图可以通过鼠标滚轮放大或者缩小;
  • 表示标准的节点,可以拖动;
  • 绿色表示标准:TR 41-2015 , 绿色、红色表示本平台存在此标准,您可以下载或者购买,灰色表示平台不存在此标准;
  • 箭头终点方向的标准引用了起点方向的标准。

 

 

非常抱歉,我们暂时无法提供预览,您可以试试: 免费下载 TR 41-2015 前三页,或者稍后再访问。

点击下载后,生成下载文件时间比较长,请耐心等待......

 



标准号
TR 41-2015
发布日期
实施日期
废止日期
国际标准分类号
03.120.01;35.020;35.240
发布单位
SG-SPRING SG1
适用范围
This set of guidelines articulates and defines a common set of domain agnostic data quality metrics for structured and machine-readable datasets. The data may include: - Historic data containing past information (e.g. library book loan, transaction records); - Live data containing current information (e.g. library book availability). The data may be made available as: - Spot data, which is collected or recorded from time to time at some discrete time intervals or - A data stream, which includes continuous, steady streams or a sequence of information. Examples include stock prices, market data feeds, sensory feeds and video feeds. Data quality metrics for unstructured datasets are currently out of the scope of this document and the suggested guidelines may or may not be applicable to unstructured datasets. Industry agnosticism and generality are fundamental concerns in the selection process for inclusion in the base set of quality metrics. While other metrics may exemplify data quality in datasets used by some industries, if they may not be easily applied across the board, they are not included in these guidelines. Data providers are, however, encouraged to adopt the methodology described in 4.2, The Goal-Question-Metric methodology, to develop additional metrics that help to convey particular aspects of data quality that help potential buyers in their assessment of the dataset on offer. The following are outside of the scope of the Technical Reference: - Metrics that are subject to interpretation or address concerns that constitute part of the buyer's evaluation process are also outside of the scope of these guidelines. - Metrics that are derived from more than one basic metric where the method of calculation or derivation may vary according to the needs of the user are also not included. For example, ratio of non-empty records to maximum possible number of records can give an indication of the completeness or extensiveness of a dataset. However, since there may not be a maximum number or expected number of records for certain types of datasets, it would be up to the users evaluating the dataset to contextualise the published metrics against their requirements and expectations. - Recommendations on ways to apply the published metrics in order to answer higher order questions that pertain to data quality. It is noted that some of the metrics included are not intrinsic to the data, e.g. access cost and support. However, they have been included as part of the guidelines as they are important considerations and provide useful indicators to the feasibility of a dataset for the user.




Copyright ©2007-2022 ANTPEDIA, All Rights Reserved
京ICP备07018254号 京公网安备1101085018 电信与信息服务业务经营许可证:京ICP证110310号