In this article, we critically examine the role of semantic technology in data driven analysis. We explain why learning from data is more than just analyzing data, including also a number of essential synthetic parts that suggest a revision of George Box's model of data analysis in statistics. We review arguments from statistical learning under uncertainty, workflow reproducibility, as well as from philosophy of science, and propose an alternative, synthetic learning model that takes into account semantic conflicts, observation, biased model and data selection, as well as interpretation into background knowledge. The model highlights and clarifies the different roles that semantic technology may have in fostering reproduction and reuse of d...
We discuss the nature of Big Data and address the role of semantics in analyzing and processing Big ...
In the information age, smart data modelling and data management can be carried out to address the w...
Datification and predictions based on correlations suggest that data– driven procedures in social sc...
In this article, we critically examine the role of semantic technology in data driven analysis. We e...
International audienceThe mathematical foundations, methods or models of an approach, are not a guar...
While catchphrases such as big data, smart data, data-intensive science, or smart dust highlight dif...
Data analytics can be problematic in real-world settings, where data sources are often distributed, ...
We discuss the nature of Big Data and address the role of semantics in analyzing and processing Big ...
This dissertation attempts to address the changing needs of data science and analytics: making it ea...
Data analysis is changing fast. Driven by a vast range of application domains and affordable tools, ...
We start with the ambition -- dating back to the early days of the semantic web -- of assembling a s...
There is a common misconception across the lntelligence Community (IC) to the effect that informatio...
We discuss the nature of Big Data and address the role of semantics in analyzing and processing Big ...
In the information age, smart data modelling and data management can be carried out to address the w...
Datification and predictions based on correlations suggest that data– driven procedures in social sc...
In this article, we critically examine the role of semantic technology in data driven analysis. We e...
International audienceThe mathematical foundations, methods or models of an approach, are not a guar...
While catchphrases such as big data, smart data, data-intensive science, or smart dust highlight dif...
Data analytics can be problematic in real-world settings, where data sources are often distributed, ...
We discuss the nature of Big Data and address the role of semantics in analyzing and processing Big ...
This dissertation attempts to address the changing needs of data science and analytics: making it ea...
Data analysis is changing fast. Driven by a vast range of application domains and affordable tools, ...
We start with the ambition -- dating back to the early days of the semantic web -- of assembling a s...
There is a common misconception across the lntelligence Community (IC) to the effect that informatio...
We discuss the nature of Big Data and address the role of semantics in analyzing and processing Big ...
In the information age, smart data modelling and data management can be carried out to address the w...
Datification and predictions based on correlations suggest that data– driven procedures in social sc...