A Novel Women Safety Analyis and Monitoring Sysetm over Social Media using Machine Learning

A. K, B. Rajalakshmi, Konapalli Sai Chaitanya Reddy, Geetha Priyanka Guggulla, S. B. V.
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Abstract

In the current scenario, women community facing issues like gender discrimination, schooling, child marriage, sexual assault and harassment, and much more, not just from society but also from social media. Women are protected by organizations like the She Team, Disha Act, and many others in society, but these organizations are much less in social media. Social networking sites like Twitter, Instagram, Facebook, etc. cause problems for women. This paper focuses on the safety analysis and monitoring of women using various social media platforms in Indian cities. The posts on Facebook and Instagram, as well as tweets on Twitter, that abuse women are considered and show the percentage of threats that women face from social media, which aids in understanding by the youth of India who misuse the women’s safety and harass them in social medias via tweets, posts, and text should face strict action. People may grasp the threats to women with the help of this, and it demonstrates that women face challenges not only from society but also from social media platforms. The outcome is easily comprehended in the form of a graph and a pie chart. Algorithms such as Nave Bayes (NB) and XGBoost are used in the analysis of women’s safety on various social media sites. The goal is to use classification techniques to categorize or forecast the Type based on dataset properties. Using categorization algorithms, we can determine whether social media content is positive, negative, or neutral. It has been substantiated that Naive Bayes algorithm has proved better accuracy compared to random forest and decision tree algorithms.
一种基于机器学习的新型社交媒体女性安全分析与监控系统
在目前的情况下,女性社区面临着性别歧视、学校教育、童婚、性侵犯和性骚扰等问题,这些问题不仅来自社会,也来自社交媒体。女性受到诸如She Team、Disha Act等社会组织的保护,但这些组织在社交媒体上的数量要少得多。Twitter、Instagram、Facebook等社交网站给女性带来了很多问题。本文主要关注印度城市中使用各种社交媒体平台的女性的安全分析和监测。Facebook和Instagram上的帖子,以及Twitter上的推文,都被认为是虐待女性,并显示了女性面临社交媒体威胁的比例,这有助于印度的年轻人理解,那些滥用女性安全并在社交媒体上通过推文,帖子和文本骚扰女性的人应该面临严厉的行动。人们可以通过这一点来了解女性所面临的威胁,这表明女性不仅面临来自社会的挑战,也面临来自社交媒体平台的挑战。结果很容易用图表和饼状图的形式来理解。Nave Bayes (NB)和XGBoost等算法被用于分析各种社交媒体网站上的女性安全。目标是使用分类技术对基于数据集属性的类型进行分类或预测。使用分类算法,我们可以确定社交媒体内容是积极的、消极的还是中立的。事实证明,与随机森林和决策树算法相比,朴素贝叶斯算法具有更好的准确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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