A Study and Analysis of Road Accident in Tamilnadu using Data mining Technique
International Journal of Recent Engineering Science (IJRES) | |
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© 2015 by IJRES Journal | ||
Volume-2 Issue-4 |
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Year of Publication : 2015 | ||
Authors : Shefali Rani, Yogesh Kumar |
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DOI : 10.14445/23497157/IJRES-V2I4P102 |
How to Cite?
Shefali Rani, Yogesh Kumar, "A Study and Analysis of Road Accident in Tamilnadu using Data mining Technique," International Journal of Recent Engineering Science, vol. 2, no. 4, pp. 6-9, 2015. Crossref, https://doi.org/10.14445/23497157/IJRES-V2I4P102
Abstract
In this modern world the usage of automobiles by the people are increasing day by day. As such due to enhanced traffic in urbanized areas such as in highways and roads, Motor vehicle accident and rail accidents are increasing in our state as well as in our country. Though accidents are not wantonly being done ,the causes of the accidents are many such as drunk and drive, violation of traffic rules ,non application of protective appliances, defective roads ,obstacles on the road ,due to workload of continuous driving for hundreds of hours and due to defective mechanism in the motor vehicle. Only few accidents are due to actus reus’. Consequent to the increasing number of accidents there are losses of precious human lives and limbs, loss of properties, Traffic Jam etc., and they are root cause for some social problems. So it is just and necessary to curtail the road accidents. By way of detecting the basic reasons for the occurring accidents it would be easier to prevent the accident in future. It will be useful to the police authorities as well as to the entire society for awareness. So the data analyzing of road accidents being done. This research aims to provide a review to extract useful information by means of Data Mining, in order to find accident hot spots out and predict accident trends for them using data mining techniques.
Keywords
Data mining, Accident, clustering, Classification
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