INTERNATIONAL RESEARCH JOURNAL OF SCIENCE ENGINEERING AND TECHNOLOGY

( Online- ISSN 2454 -3195 ) New DOI : 10.32804/RJSET

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DETECTING AND FORECASTING TYPE OF CRIME AND DETERMINING LOCATION USING CLUSTERING TECHNIQUES

    1 Author(s):  MINAKSHI PATHANIA

Vol -  9, Issue- 2 ,         Page(s) : 50 - 53  (2019 ) DOI : https://doi.org/10.32804/RJSET

Abstract

The use of technology is growing in this era. Technology is used in almost every area of the life. Now days computer and technology is also used in the detection of the regions in which crime takes place. Also it can be used to forecast the region in which crime is going to take place. In the proposed paper we will study the use of fuzzy rules and clustering mechanism in order to detect the regions of crime and then it will be shown with the help of a map. We will use Google Map for this purpose. The proposed model use the concept of Zero R clustering will be used to plot the similar type of crime into common group.

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