Research Article

Rough Set Approach for Traffic Rule to Reduce Accident Rate

by  Sujogya Mishra, Shakthi Prasad Mohanty, Sateesh Kumar Pradhan
journal cover
International Journal of Computer Applications
Foundation of Computer Science (FCS), NY, USA
Volume 138 - Issue 11
Published: March 2016
Authors: Sujogya Mishra, Shakthi Prasad Mohanty, Sateesh Kumar Pradhan
10.5120/ijca2016909070
PDF

Sujogya Mishra, Shakthi Prasad Mohanty, Sateesh Kumar Pradhan . Rough Set Approach for Traffic Rule to Reduce Accident Rate. International Journal of Computer Applications. 138, 11 (March 2016), 37-43. DOI=10.5120/ijca2016909070

                        @article{ 10.5120/ijca2016909070,
                        author  = { Sujogya Mishra,Shakthi Prasad Mohanty,Sateesh Kumar Pradhan },
                        title   = { Rough Set Approach for Traffic Rule to Reduce Accident Rate },
                        journal = { International Journal of Computer Applications },
                        year    = { 2016 },
                        volume  = { 138 },
                        number  = { 11 },
                        pages   = { 37-43 },
                        doi     = { 10.5120/ijca2016909070 },
                        publisher = { Foundation of Computer Science (FCS), NY, USA }
                        }
                        %0 Journal Article
                        %D 2016
                        %A Sujogya Mishra
                        %A Shakthi Prasad Mohanty
                        %A Sateesh Kumar Pradhan
                        %T Rough Set Approach for Traffic Rule to Reduce Accident Rate%T 
                        %J International Journal of Computer Applications
                        %V 138
                        %N 11
                        %P 37-43
                        %R 10.5120/ijca2016909070
                        %I Foundation of Computer Science (FCS), NY, USA
Abstract

The idea of the paper conceived looking at present accident rate, this is mainly because of faulty traffic rules. We develop a rule based upon rough set theory, which provide a suggestion to the agencies responsible for traffic control.

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Index Terms
Computer Science
Information Sciences
No index terms available.
Keywords

Rough Set Theory data analysis Granular computing Data mining

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