School of Healthcare Sciences, Midwifery Department, University of Western Macedonia, 50100 Kozani, Greece.
Department of Business Administration, University of Western Macedonia, 50100 Kozani, Greece.
Int J Environ Res Public Health. 2024 Jun 27;21(7):841. doi: 10.3390/ijerph21070841.
The total fertility rate is influenced over an extended period of time by shifts in population socioeconomic characteristics and attitudes and values. However, it may be impacted by macroeconomic trends in the short term, although these effects are likely to be minimal when fertility is low. With the objective of forecasting monthly deliveries, this study concentrates on the analysis of registered births in Scotland. Through this approach, we examine the significance of precisely forecasting fertility trends, which can subsequently aid in the anticipation of demand in diverse sectors by allowing policymakers to anticipate changes in population dynamics and customize policies to tackle emerging demographic challenges. Consequently, this has implications for fiscal stability, national economic accounts and the environment. In conducting our analysis, we incorporated non-linear machine learning methods alongside traditional statistical approaches to forecast monthly births in an out-of-sample exercise that occurs one step in advance. The outcomes underscore the efficacy of machine learning in generating precise predictions within this particular domain. In sum, this research will comprehensively demonstrate a cutting-edge model of machine learning that utilizes several attributes to assist in clinical decision-making, predict potential complications during pregnancy and choose the appropriate delivery method, as well as help in medical diagnosis and treatment.
总生育率受到人口社会经济特征和态度价值观变化的长期影响。然而,它可能会受到短期宏观经济趋势的影响,尽管在生育率较低的情况下,这些影响可能很小。本研究旨在预测每月分娩量,因此专注于分析苏格兰的注册出生数据。通过这种方法,我们研究了准确预测生育率趋势的重要性,这有助于预测不同领域的需求,使政策制定者能够预测人口动态的变化,并制定政策应对新出现的人口挑战。因此,这对财政稳定、国民经济核算和环境都有影响。在进行分析时,我们结合了非线性机器学习方法和传统统计方法,在提前一步的样本外练习中预测每月的出生人数。结果突出了机器学习在这一特定领域生成准确预测的有效性。总之,这项研究将全面展示一种使用多个属性来协助临床决策、预测怀孕期间潜在并发症并选择适当分娩方式以及帮助医疗诊断和治疗的先进机器学习模型。