Use of ontologies for metadata records analysis in big data
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Institute for Information Recording of the National Academy of Sciences of Ukraine
Анотація
Big Data deals with the sets of information (structured, unstructured,
or semi structured) so large that traditional ways and approaches (based on
business intelligence decisions and database management systems) cannot be
applied to them. Big Data is characterized by phenomenal acceleration of data
accumulation and its complication. In different contexts Big Data often means
both data of large volume and a set of tools and methods for their processing.
Big Data sets are accompanied by metadata which contains a large amount of
information about the data, including significant descriptive text information
whose understanding by machines lead to better results of Big Data processing.
Methods of artificial intelligence and intelligent Web-technologies improve
the efficiency of all stages of Big Data processing. Most often this integration
concerns the use of machine learning that provides the knowledge acquisition
from Big Data and ontological analysis that formalizes for domain knowledge
for Big Data analysis.
In the paper, the authors present a method for analyzing the Big Data
metadata which allows selecting those blocks of information among the
heterogeneous sources and data repositories that are pertinent for solving the
customer task. Much attention is paid to the matching of the text part of the
metadata (metadata annotations) with the text describing the task. We suggest
to use for these purposes the methods and instruments of natural language
analysis and the Big Data ontology which contains knowledge about the specifics of this domain.