Data quality (DQ) has been studied in significant depth over the last two decades and has received attention from both the academic and the practitioner community. Over that period of time a large number of data quality dimensions have been identified in due course of research and practice. While it is important to embrace the diversity of views of data quality, it is equally important for the data quality research and practitioner community to be united in the consistent interpretation of this foundational concept. In this paper, we provide a step towards this consistent interpretation by providing a lens to analyse the dimensions towards developing clear and concise metrics to manage DQ. Through a systematic review of research and practit...
In this chapter, we first introduce the concepts of Linked Data quality and its dimensions and metri...
Data quality (DQ) assessment can be significantly enhanced with the use of the right DQ assessment m...
Recent studies indicated that companies are increasingly experiencing data quality (DQ) related prob...
Achieving high level of data quality is considered one of the most important assets for any small, m...
The growing relevance of data quality has revealed the need for adequate measurement since quantifyi...
The growing relevance of data quality has revealed the need for adequate measurement since quantifyi...
Over the past decades, the topic of data quality became extremely important in various application f...
Data quality is obviously a good thing and an attractive goal to pursue. But what is data quality? ...
Data Quality is, in essence, understood as the degree to which the data of interest satisfies the re...
Nowadays, activities and decisions making in an organization is based on data and information obtain...
High quality data is an important asset in numerous business and organizations. The quality of data,...
Data quality is crucial in measuring and analyzing science, technology and innovation adequately, wh...
Attribute data quality is important object for each databases. If data quality doesn’t useful,...
Nowadays, activities and decisions making in an organization is based on data and information obtain...
Today's methodologies for data quality assessment and improvement are considerably aimed at reducing...
In this chapter, we first introduce the concepts of Linked Data quality and its dimensions and metri...
Data quality (DQ) assessment can be significantly enhanced with the use of the right DQ assessment m...
Recent studies indicated that companies are increasingly experiencing data quality (DQ) related prob...
Achieving high level of data quality is considered one of the most important assets for any small, m...
The growing relevance of data quality has revealed the need for adequate measurement since quantifyi...
The growing relevance of data quality has revealed the need for adequate measurement since quantifyi...
Over the past decades, the topic of data quality became extremely important in various application f...
Data quality is obviously a good thing and an attractive goal to pursue. But what is data quality? ...
Data Quality is, in essence, understood as the degree to which the data of interest satisfies the re...
Nowadays, activities and decisions making in an organization is based on data and information obtain...
High quality data is an important asset in numerous business and organizations. The quality of data,...
Data quality is crucial in measuring and analyzing science, technology and innovation adequately, wh...
Attribute data quality is important object for each databases. If data quality doesn’t useful,...
Nowadays, activities and decisions making in an organization is based on data and information obtain...
Today's methodologies for data quality assessment and improvement are considerably aimed at reducing...
In this chapter, we first introduce the concepts of Linked Data quality and its dimensions and metri...
Data quality (DQ) assessment can be significantly enhanced with the use of the right DQ assessment m...
Recent studies indicated that companies are increasingly experiencing data quality (DQ) related prob...