Although contemporary research relies to a large extent on data, data quality in Information Systems research is a subject that has not received much attention until now. In this paper, a framework is presented for the measurement of scientific data quality using the principles of rule-based measurement. The proposed framework is capable of handling data quality problems due to both incorrect execution and incorrect description of data collection and validation processes. It is then argued that uncertainty can arise during the measurement, which complicates data quality assessment. The framework is therefore extended to handle uncertainty about the truth value of predicates. Instead of a numerical quality level, data quality is then express...
Large and over the years grown databases are a persistent concern in the field of data quality. Data...
By its nature, the term “data quality” with its generic meaning “fitness for use” has both subjectiv...
Data quality is crucial in measuring and analyzing science, technology and innovation adequately, wh...
The ever growing capabilities of data storage systems have created the need to assess the quality of...
The ever growing capabilities of data storage systems have created the need to assess the quality of...
We present the old-but-also-new problem of data quality from a statistical perspective, in part with...
The quality of data is important in research working with data sets because poor data quality may le...
The issue of data quality is as old as data itself. However, the proliferation of diverse, large-sca...
The World Wide Web has brought a wave of revolutionary changes for people and organizations to gener...
The body of knowledge on data and information quality is highly diversified, primarily due to the cr...
International audienceOne challenging aspects of data quality modeling and management is to provide ...
International audienceOne challenging aspects of data quality modeling and management is to provide ...
International audienceOne challenging aspects of data quality modeling and management is to provide ...
International audienceOne challenging aspects of data quality modeling and management is to provide ...
Large and over the years grown databases are a persistent concern in the field of data quality. Data...
Large and over the years grown databases are a persistent concern in the field of data quality. Data...
By its nature, the term “data quality” with its generic meaning “fitness for use” has both subjectiv...
Data quality is crucial in measuring and analyzing science, technology and innovation adequately, wh...
The ever growing capabilities of data storage systems have created the need to assess the quality of...
The ever growing capabilities of data storage systems have created the need to assess the quality of...
We present the old-but-also-new problem of data quality from a statistical perspective, in part with...
The quality of data is important in research working with data sets because poor data quality may le...
The issue of data quality is as old as data itself. However, the proliferation of diverse, large-sca...
The World Wide Web has brought a wave of revolutionary changes for people and organizations to gener...
The body of knowledge on data and information quality is highly diversified, primarily due to the cr...
International audienceOne challenging aspects of data quality modeling and management is to provide ...
International audienceOne challenging aspects of data quality modeling and management is to provide ...
International audienceOne challenging aspects of data quality modeling and management is to provide ...
International audienceOne challenging aspects of data quality modeling and management is to provide ...
Large and over the years grown databases are a persistent concern in the field of data quality. Data...
Large and over the years grown databases are a persistent concern in the field of data quality. Data...
By its nature, the term “data quality” with its generic meaning “fitness for use” has both subjectiv...
Data quality is crucial in measuring and analyzing science, technology and innovation adequately, wh...