预期寿命的机器学习模型

Deepanshi Jalan, Anandita Tuli, Vanshika Chaudhary, N. Sharma, Manik Rakhra
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引用次数: 0

摘要

预期寿命(LE)模型提供了许多方法来改善与社会相关的医疗保健和其他社会福利。预期寿命模型为诸如如何决定退休年龄或管理与公共事务有关的财务问题等问题提供了解决方案。这些模式在许多地区正变得突出,因为它们被政府机构和私营部门广泛用于决策和发展卫生综合系统。因此,本文旨在分析世界上约72个国家在16年间的预期寿命趋势,即从2000年到2015年。该研究提供了诸如预期寿命、国内生产总值、婴儿死亡率、成人死亡率等属性的图表,这将有助于各国了解一段时间内的预期寿命趋势,并建议应重点关注的领域,以有效提高其人口的预期寿命。通过使用各种Python库,如pandas, numpy, matplotlib(用于绘制图形),seaborn(用于绘制3d图形和Python的高级可视化功能),sklearn(用于处理缺失数据)和plotly express(用于绘制choropleth),在谷歌Collab中完成模拟。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Machine Learning Models for Life Expectancy
Life expectancy (LE) models provide a lot of ways to improve healthcare and other social welfares related to society. Life expectancy models provide solutions to problems like how to decide on retirement age or manage financial issues related to public matters. These models are becoming prominent in many regions as they are being widely used by government bodies and private sector for their policy making and developing health integrated systems. Thus, this paper aims to analyze the Trends in Life Expectancy in about 72 countries of the world over a span of 16 years, i.e., from 2000-2015. The study gives plots of attributes such as life expectancy, GDP, infant deaths, adult mortality, etc. across year which would help the countries understand the life expectancy trends over the course of time and suggest areas which should be focused upon to efficiently increase the life expectancy of its population. The simulations are done in Google Collab by using various Python libraries like pandas, numpy, matplotlib (used for plotting graphs), seaborn (used for plotting 3-D graphs and advanced visualization features of python), sklearn (used for handling missing data), and plotly express (used for plotting choropleth).
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