Researchers today have found out the importance of Artificial Intelligence, and Machine Learning in our daily lives, as well as they can be used to improve the quality of our lives as well as the cities and nations alike. An example of this is that it is currently speculated that ML can provide ways to relieve workers as it can predict effective working schedules and patterns which increase the efficiency of the workers. Ultimately this is leading to a Work-Life Balance for the workers. But how is this possible? It is practically possible with the Machine Learning algorithms to predict, calculate the factors affecting the feelings of the worker's work-life balance. In order to actually do this, a sizeable amount of 12,756 people's data has been taken under consideration. Upon analysing the data and calculating under various factors, we have found out the correlation of various factors and WLB(Work-Life Balance in short). There are some factors that have to be taken into serious consideration as they play a major role in WLB. We have trained 80% of our data with Random Forest Classifier, SVM and Naive Bayes algorithms. Upon testing, the algorithms predict the WLB with 71.5% as the best accuracy.
翻译:今天,研究人员已经发现人工智能和机器学习在我们日常生活中的重要性,以及它们可用于改善我们生活质量以及城市和国家的生活质量。这方面的一个例子是,目前人们推测ML能够提供减轻工人负担的方法,因为它能够预测提高工人效率的有效工作时间表和模式。这最终导致工人的工作-生活平衡。但是这怎么可能呢?机器学习算法可以预测、计算影响工人工作-生活平衡的因素。为了做到这一点,正在考虑大量12 756人的数据。在分析数据和计算各种因素时,我们发现各种因素和WLB(短期的工作-生活平衡)的关联性。在WLB(工作-生活平衡)中发挥重要作用时,必须认真考虑一些因素。我们用随机森林分类、SVM(SVM)和Nive Bayes算算法培训了80%的数据。在测试时,算法预测了WLB(71.5)的准确性,作为最佳的精确性。