Policy making has the strict requirement to rely on quantitative and high quality information. This paper will address the data quality issue for policy making by showing how to deal with Big Data quality in the different steps of a processing pipeline, with a focus on the integration of Big Data sources with traditional sources. In this respect, a relevant role is played by metadata and in particular by ontologies. Integration systems relying on ontologies enable indeed a formal quality evaluation of inaccuracy, inconsistency and incompleteness of integrated data. The paper will finally describe data confidentiality as a Big Data quality dimension, showing the main issues to be faced for its assurance
Data governance is a subject that is becoming increasingly important in business and government. In ...
Enterprises that are venturing into the technical environment of big data and are attempting to crea...
This study presents a systematic review in investigating the adoption of ontology in managing data q...
Big data has made its appearance in many fields, including scientific research, business, public adm...
This article investigates the evolution of data quality issues from traditional structured data mana...
In this paper, we discuss the application of concept of data quality to big data by highlighting how...
Big Data architectures allow to flexibly store and process heterogeneous data, from multiple sources...
Beyond the hype of Big Data, something within business intelligence projects is indeed changing. Thi...
In the Big Data Era, data is one of the most important core elements for any governmental, instituti...
Big Data architectures allow to flexibly store and process heterogeneous data, from multiple sources...
10th International Conference on the Quality of Information and Communications Technology, QUATIC 20...
This paper argues that big data can possess different characteristics, which affect its quality. Dep...
This study presents a systematic review in investigating the adoption of ontology in managing data q...
Data quality is obviously a good thing and an attractive goal to pursue. But what is data quality? ...
With a continuously increasing amount and complexity of data being produced and captured, traditiona...
Data governance is a subject that is becoming increasingly important in business and government. In ...
Enterprises that are venturing into the technical environment of big data and are attempting to crea...
This study presents a systematic review in investigating the adoption of ontology in managing data q...
Big data has made its appearance in many fields, including scientific research, business, public adm...
This article investigates the evolution of data quality issues from traditional structured data mana...
In this paper, we discuss the application of concept of data quality to big data by highlighting how...
Big Data architectures allow to flexibly store and process heterogeneous data, from multiple sources...
Beyond the hype of Big Data, something within business intelligence projects is indeed changing. Thi...
In the Big Data Era, data is one of the most important core elements for any governmental, instituti...
Big Data architectures allow to flexibly store and process heterogeneous data, from multiple sources...
10th International Conference on the Quality of Information and Communications Technology, QUATIC 20...
This paper argues that big data can possess different characteristics, which affect its quality. Dep...
This study presents a systematic review in investigating the adoption of ontology in managing data q...
Data quality is obviously a good thing and an attractive goal to pursue. But what is data quality? ...
With a continuously increasing amount and complexity of data being produced and captured, traditiona...
Data governance is a subject that is becoming increasingly important in business and government. In ...
Enterprises that are venturing into the technical environment of big data and are attempting to crea...
This study presents a systematic review in investigating the adoption of ontology in managing data q...