Improving ontology and precision recall using ontology model, genetic, greedy algorithm semantic similarity calculation and ontology graph 

Abstract

The content is extracted by means of semantic relevancy. The semantic relevancies relate the content of videos based on a certain parameter. The parameter varies between system to system (implementation). The parameter will improve the performance of semantic relevancy and accuracy. This accuracy is obtained after various random experiments. Here a method called concept, sub concept graph method is used to implement the semantic relevancies. A graph algorithm is constructed to improve the relevancies between concepts. The ontology model is created based on the relationship between the vertices. At first relationship between the parent and child are calculated. Then based on all the relationships the diagrammatic representations are done. Based on hit rates the priority of web pages are done and based on the number of relationships the value for the vertices is noted 

Authors and Affiliations

K. Srihari , Dr. V. P. Arunachalam , Dr. S Karthik

Keywords

Related Articles

A Survey on Security in Palmprint Recognition: A Biometric Trait  

Biometric based authentication and recognition, the science of using physical or behavioral characteristic for identity verification is becoming a security principal in many areas. Their utilization as an authentic...

Overview of Impact of Requirement Metrics in Software Development Environment

Requirement engineering is the important area of software development life cycle. Requirements engineering play an important role in maintaining software quality. Software quality depends on many factors like delivery on...

Real Time Static Hand Gesture Recognition System in Simple Background for Devanagari Number System

Hand gesture recognition is one of the key techniques in developing user-friendly interfaces for human-computer interaction. Static hand gestures are the most essential facets of gesture recognition. User independence is...

TaaS: An Evolution of Testing Services using Cloud Computing 

The concept of Cloud Computing has brought about phenomenal changes in the way how the services are delivered to enterprise and consumers. Initially Cloud provided SaaS, IaaS and PaaS to attain Software, Infrastructure...

Extending the UML metamodel to grant prop up for crosscutting concerns  

Aspect-orientation is an idiom used to describe approaches that unambiguously capture, model and implement crosscutting concerns (or aspects). There is presently a quantity of new encoding languages as well as exte...

Download PDF file
  • EP ID EP130918
  • DOI -
  • Views 71
  • Downloads 0

How To Cite

K. Srihari, Dr. V. P. Arunachalam, Dr. S Karthik (2013). Improving ontology and precision recall using ontology model, genetic, greedy algorithm semantic similarity calculation and ontology graph . International Journal of Advanced Research in Computer Engineering & Technology(IJARCET), 2(3), 1229-1252. https://europub.co.uk/articles/-A-130918