A Significant Big Data Interpretation Using Map Reduce Algorithm

Authors(2) :-Bheemisetty Venkata Sivaiah, Dr. M. Rudra Kumar

Hadoop is an open source file system that can have a framework is processed over the big data. The fast growth of ontologies nowadays that can grow significantly performs normally and also some major issues in the efficiency and scalability reasoning methods. The traditional and centralized reasoning methods do not handle large ontologies. The system proposed a large scale ontologies for healthcare is applied to use map reduce and hadooframework. Semantic inference method attracts much attention of users from all fields. Many inference engines have been developed to support the reasoning over semantic web. The system also proposed a transfer inference forest and effective assertional triples for reduce the storage for reasoning methods and also simplified and accelerate. The Ontology Web Language which provides the semantic web access to all the relationships maintained by the syntaxes, specifications and expressions. With a large volume of Semantic Web data and their fast growth, diverse applications have emerged in a plurality of domains poses new challenges for ontology mapping. Ontology mapping can provide more correct results if the mapping process can deal with uncertainty effectively that is caused by the incomplete and inconsistent information used and produced by the mapping process. As it is evolving into a global knowledge-based framework, supporting knowledge searching over such a big and increasing dataset has become an important issue. A survey was made for different reasoning approaches that focus on semantic inferences. This paper describes about how the reasoning approaches process on users’ queries. This paper proposes an incremental and distributed inference method for large-scale Ontologies by using MapReduce, which realizes high-performance reasoning and runtime searching, especially for incremental knowledge base. By constructing transfer inference forest and effective assertional triples, the storage is largely reduced and the reasoning process is simplified and accelerated.

Authors and Affiliations

Bheemisetty Venkata Sivaiah
Department of CSE, Annamacharya Institute of Technology & Sciences, Rajampet, Kadapa, Andhra Pradesh, India
Dr. M. Rudra Kumar
Professor, Department of CSE, Annamacharya Institute of Technology & Sciences, Rajampet, Kadapa, Andhra Pradesh, India

Semantic Web, Transfer Inference Forest, Ontology bases, Effective Assertional Triple, RDF, MapReduce.

  1. G. Antoniou and A. Bikakis DR-Prolog: A system for defensible reasoning with rules and Ontologies on the Semantic Web IEEE Trans Know Data Eng., vol. 19, no. 2, pp. 233-245, Feb. 2007.
  2. J. Cheng, C. Liu, M. C. Zhou, Q. Zeng, and A. Yla- Automatic Composition of Semantic Web services based on fuzzy predicate Petrinets, IEEE Trans. Autom Science Eng., Nov. 2013, to be published.
  3. J. Dean and S. Ghemawat, MapReduce: Simplified data processing on large clusters, Commun. ACM, 2008.
  5. J. Guo, L. Xu, Z. Gong, C.-P. Che, and S. S.Chaudhry, Semantic Inference on heterogeneous e- Marketplace activities, IEEE Trans. Syst., Man, Cybern. A, Syst,Humans, vol. 42, no. 2, pp. 316-Mar. 2012.
  6. M. J. Iba nez, J. Fabra, P. Álvarez, and J. Ezpeleta, Model checking analysis of semantically annotated business processes, IEEE Trans. Syst.,Man, Cybern. A, Syst., Humans, vol. 42, no. 4, pp. 854-867, Jul. 2012.
  7. D. Kourtesis, J. M. Alvarez-Rodriguez, and I. Paraskakis, Semantic based QoS management in systems: Current status and future challenges, Future Gener. Comput. Syst., vol. 32, pp. 307-323, Mar.2014.
  8. M.S. Marshall, Emerging practices for mapping and linking life science data using RDF—A case series, Jul. 2012.
  9. M. Nagy and M. Vargas-Vera, Multiagent Ontology mapping framework for the Semantic Web, IEEE Trans. Syst., Man, Cybern. A, Syst., Humans, vol. 41, no. 4, pp. 693-704, Jul. 2011.
  10. H. Paulheim and C. Bizer, Type inference on noisy RDF data, in Proc.ISWC, Sydney, NSW, Australia, 2013, pp. 510-525.
  11. V. R. L. Shen, Correctness in hierarchical knowledge-based requirements, IEEE Trans. Syst., Man, Cyber. B, Cybern., vol. 30, no. 4,pp. 625-631, Aug. 2000
  12. J. Urbani, S. Kotoulas, E. Oren, and F. Harmelen Scalable distributed reasoning using MapReduce , in Proc. 8th Int. Semantic Web Conf.,Chantilly, VA, USA, Oct. 2009, pp. 634-649
  13. J. Urbani, S. Kotoulas, J. Maassen , F. V. Harmelen, and H. Bal,WebPIE : A web-scale parallel inference engine using
  14. J. Web Semantics, vol. 10, pp. 59-75, Jan. 2012.
  15. J. Weaver and J. Hendler, Parallel materialization of the finite RDF Closure for hundreds of millions of triples, in Proc. ISWC, Chantilly,VA , USA, 2009, pp. 682-697

Publication Details

Published in : Volume 2 | Issue 4 | July-August 2017
Date of Publication : 2017-08-31
License:  This work is licensed under a Creative Commons Attribution 4.0 International License.
Page(s) : 608-614
Manuscript Number : CSEIT1724151
Publisher : Technoscience Academy

ISSN : 2456-3307

Cite This Article :

Bheemisetty Venkata Sivaiah, Dr. M. Rudra Kumar, "A Significant Big Data Interpretation Using Map Reduce Algorithm", International Journal of Scientific Research in Computer Science, Engineering and Information Technology (IJSRCSEIT), ISSN : 2456-3307, Volume 2, Issue 4, pp.608-614, July-August-2017.
Journal URL : http://ijsrcseit.com/CSEIT1724151

Article Preview