Chitra Annamalai

Work place: PSG College of Technology, Department of Computer Applications, Coimbatore, 641004, India

E-mail: ctr.psg@gmail.com

Website:

Research Interests: Computer systems and computational processes, Data Structures and Algorithms, Analysis of Algorithms

Biography

Chitra Annamalai has completed Bachelors of Engineering in electrical and electronics engineering from PSG College of Technology, Bharathiar University in 1987, followed by Master of Engineering and Ph.D in Computer Science and Engineering from PSG College of Technology affiliated to Anna University.

With over 25 years of teaching and research experience, she is currently heading the department of Computer Applications, PSG College of Technology as Professor and Head. She has published over 75 technical papers in reputed journals and conferences. Dr. Chitra has received MN Saha Award, ISTE National Award for Outstanding Academician and The Tamil Nadu Young Women Scientist Award in Engineering and Technology. Her research interests include Data Structures and Algorithms, Compilers, Soft Computing, Agent Technology, and Cognitive modeling.

Dr. Chitra is life member of CSI, ISTE, FIE and ACCS, and is secretary of ACCS, Coimbatore chapter, India.

Author Articles
Graph Models for Knowledge Representation and Reasoning for Contemporary and Emerging Needs – A Survey

By Engels Rajangam Chitra Annamalai

DOI: https://doi.org/10.5815/ijitcs.2016.02.02, Pub. Date: 8 Feb. 2016

Reasoning is the fundamental capability which requires knowledge. Various graph models have proven to be very valuable in knowledge representation and reasoning. Recently, explosive data generation and accumulation capabilities have paved way for Big Data and Data Intensive Systems. Knowledge Representation and Reasoning with large and growing data is extremely challenging but crucial for businesses to predict trends and support decision making. Any contemporary, reasonably complex knowledge based system will have to consider this onslaught of data, to use appropriate and sufficient reasoning for semantic processing of information by machines. This paper surveys graph based knowledge representation and reasoning, various graph models such as Conceptual Graphs, Concept Graphs, Semantic Networks, Inference Graphs and Causal Bayesian Networks used for representation and reasoning, common and recent research uses of these graph models, typically in Big Data environment, and the near future needs and challenges for graph based KRR in computing systems. Observations are presented in a table, highlighting suitability of the surveyed graph models for contemporary scenarios.

[...] Read more.
Other Articles