ITTI, Bydgoszcz, Poland.
UTP University of Science and Technology, Bydgoszcz, Poland.
PLoS One. 2020 May 15;15(5):e0232771. doi: 10.1371/journal.pone.0232771. eCollection 2020.
At present, many researchers see hope that artificial intelligence, machine learning in particular, will improve several aspects of the everyday life for individuals, cities and whole nations alike. For example, it has been speculated that the so-called machine learning could soon relieve employees of part of the duties, which may improve processes or help to find the most effective ways of performing tasks. Consequently, in the long run, it would help to enhance employees' work-life balance. Thus, workers' overall quality of life would improve, too. However, what would happen if machine learning as such were employed to try and find the ways of achieving work-life balance? This is why the authors of the paper decided to utilize a machine learning tool to search for the factors that influence the subjective feeling of one's work-life balance. The possible results could help to predict and prevent the occurrence of work-life imbalance in the future. In order to do so, the data provided by an exceptionally sizeable group of 800 employees was utilised; it was one of the largest sample groups in similar studies in Poland so far. Additionally, this was one of the first studies where so many employees had been analysed using an artificial neural network. In order to enable replicability of the study, the specific setup of the study and the description of the dataset are provided. Having analysed the data and having conducted several experiments, the correlations between some factors and work-life balance have indeed been identified: it has been found that the most significant was the relation between the feeling of balance and the actual working hours; shifting it resulted in the tool predicting the switch from balance to imbalance, and vice versa. Other factors that proved significant for the predicted WLB are the amount of free time a week the employee has for themselves, working at weekends only, being self-employed and the subjective assessment of one's financial status. In the study the dataset gets balanced, the most important features are selected with the selectKbest algorithm, an artificial neural network of 2 hidden layers with 50 and 25 neurons, ReLU and ADAM is constructed and trained on 90% of the dataset. In tests, it predicts WLB based on the prepared dataset and selected features with 81% accuracy.
目前,许多研究人员看到了希望,他们认为人工智能特别是机器学习将改善个人、城市和整个国家的日常生活的多个方面。例如,有人推测,所谓的机器学习很快就能减轻员工的部分工作负担,这可能会改善流程或帮助找到执行任务的最有效方法。因此,从长远来看,这有助于提高员工的工作与生活平衡。因此,员工的整体生活质量也会提高。然而,如果将机器学习用于尝试寻找实现工作与生活平衡的方法,会发生什么情况呢?这就是本文作者决定利用机器学习工具来搜索影响工作与生活平衡主观感受的因素的原因。可能的结果有助于预测和预防未来工作与生活失衡的发生。为了做到这一点,利用了一个由 800 名员工组成的异常大的群体提供的数据;这是迄今为止波兰类似研究中最大的样本组之一。此外,这是首次使用人工神经网络分析如此多员工的研究之一。为了使研究具有可重复性,提供了研究的具体设置和数据集的描述。在分析了数据并进行了多次实验之后,确实确定了一些因素与工作与生活平衡之间的相关性:发现最显著的是平衡感与实际工作时间之间的关系;这种关系的转变导致该工具预测从平衡到失衡的转变,反之亦然。对预测 WLB 具有重要意义的其他因素是员工每周为自己安排的自由时间、只在周末工作、个体经营以及对自己财务状况的主观评估。在研究中对数据集进行了平衡处理,使用 selectKbest 算法选择最重要的特征,构建了具有 2 个隐藏层的人工神经网络,包含 50 和 25 个神经元、ReLU 和 ADAM,并在 90%的数据集上进行训练。在测试中,它根据准备好的数据集和选定的特征以 81%的准确率预测 WLB。