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Review paper

A COMPREHENSIVE ANALYTICAL MODEL FOR DETECTING AND MAPPING CRIMES AGAINST WOMEN IN INDIA

By
Aby Rose Varghese Orcid logo ,
Aby Rose Varghese

Karpagam Academy of Higher Education , Coimbatore , India

N. V. Chinnaswam Orcid logo
N. V. Chinnaswam

Karpagam Academy of Higher Education , Coimbatore , India

Abstract

Women's crimes in India are a serious social issue, and new-age solutions to their detection and prevention are essential. The article introduces an analytical model using modern data and geography tools to identify and map cases of violence against women in India. It uses several different types of sources such as police reports, social media and demographic statistics, to provide a thorough picture of the situation of gender-based violence in India. This model is used to look for early-warning signs of gender-based violence by analyzing many different sources of unstructured text. Using geospatial analysis makes it possible to build a predictive model that lets users spot high-risk areas more easily. To conclude the article, we highlight the results of using the model in real law enforcement, public safety and policy issues and discuss its usefulness. The outcomes let us see the how and when of these crimes, making it possible to direct resources and create focused ways to prevent them. This study is necessary to find solutions for women’s crime in India. This study highlights how using advanced analysis helps create effective, data-driven ways to keep women safe.

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Citation

This is an open access article distributed under the  Creative Commons Attribution Non-Commercial License (CC BY-NC) License which permits unrestricted use, distribution, and reproduction in any medium, provided the original work is properly cited. 

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