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Predicting performance analysis of garments women working status in Bangladesh using machine learning approaches

机译:使用机器学习方法预测孟加拉国服装妇女工作状态的绩效分析

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In Bangladesh, the garment industry has played an important role in economically uplifting a diverse community of poor and marginalized people. There are now 4,825 garment factories that employ more than three million people. Completely 85% of these employees are female. But most of the female workers work to support their family and also contribute his family to lead a minimum life. In this paper, we try to find out relation between their health status, their family earning, their family member information, their working time or how many year they work in this sector and how many time they want to work. The dataset is collected from the Ashulia and Gazipur area garments of Bangladesh. This research work has observed that most of the female workers work at finishing, swing, helper, and cleaner sector. In this sector they cannot get huge salary that's why their income is limited and the range of their salaries is very low. It has also been found that, some women manage their whole family with their own income. Besides they are feeling bored with the same work. Nowadays machine learning and data mining tools play a vital role in finding the measurement of some important factors. This paper analyses the women working performance based on their previous activity and use some machine learning algorithms likely: Decision Tree Classifier(DTC), Logistic Regression(LR), Random Forest Classifier(RFC), and Stochastic Gradient Descent(SGD) we get the best result from Logistic Regression(LR) and it is 69%.
机译:在孟加拉国,服装行业在经济上升高的贫困和边缘化人民社区中发挥了重要作用。现在有4,825件服装厂,雇用了超过300万人。完全85%的这些员工是女性。但大多数女工都努力支持他们的家人,也为他的家人提供了最低的生活。在本文中,我们试图在他们的健康状况,家庭收入,家庭会员信息,工作时间或他们在本领域工作的工作之间以及他们想要工作有多少时间之间的关系。该数据集是从孟加拉国的班卓景和古普浦地区衣服收集的。这项研究工作已经指出,大多数女性工作人员在整理,摇摆,助手和清洁部门工作。在这个部门中,他们无法获得巨大的薪水,这就是他们的收入有限的原因,并且其工资的范围很低。还有人发现,一些女性以自己的收入管理他们的全家。除了他们感到厌倦了同样的工作。如今机器学习和数据挖掘工具在寻找一些重要因素的测量方面发挥着至关重要的作用。本文根据其先前的活动分析了妇女的工作业绩,并使用某些机器学习算法可能:决策树分类器(DTC),Logistic回归(LR),随机林分类器(RFC)和随机梯度下降(SGD)我们得到了Logistic回归(LR)的最佳结果,它是69%。

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