Please use this identifier to cite or link to this item: http://hdl.handle.net/11718/21911
Title: Distribution of traffic accident times in India - some insights using circular data analysis
Other Titles: International Journal of Business Analytics and Intelligence
Authors: Laha, Arnab Kumar
A. C., Pravida Raja
Ghosh, Dilip Kumar
Keywords: Circular Statistics;Kato-Jones Distribution;Mixture Distribution
Issue Date: 2017
Citation: Laha, A.K., Raja, P., & Ghosh, D.K. (2017). Distribution of Traffic Accident Times in India - Some Insights using Circular Data Analysis . International Journal of Business Analytics and Intelligence , 5(1), 26-35.
Abstract: Traffic accidents are a major hazard for travellers on Indian roads. These are caused by a variety of reasons including the bad condition of roads, traffic density, lack of proper training of drivers, slack in enforcement of traffic rules, poor road lighting etc. It is further known that certain times of the day are more prone to traffic accidents than others. In this paper we investigate the distribution of traffic accident times using the data published annually by the National Crime Records Bureau (NCRB) over the period 2001-2014 using the tools of circular data analysis. It is seen that the observed distribution of the traffic accident times in most years is bimodal. Thus, several modelling strategies for bimodal distributions are tried which include fitting of mixture of von-Mises distributions and mixture of Kato-Jones distribution. It is seen from this analysis that the distribution of the traffic accident times are changing over the years. Notably, the proportion of accidents happening in late night has reduced over the years while the same has increased for late evening hours. Some more insights obtained from this analysis are also discussed.
URI: http://hdl.handle.net/11718/21911
Appears in Collections:Journal Articles

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