基于功能神经网络方法的中国区域死亡格局影响因素及机制研究

IF 1 4区 社会学 Q3 DEMOGRAPHY
Tiantian Li, Handong Li
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引用次数: 0

摘要

特定年龄死亡概率的变化与人口、社会经济和地理因素密切相关。本研究采用功能神经网络回归模型,从非线性角度考察了这些因素对中国区域死亡模式的影响,并特别关注40岁及以上的个体。与传统的线性模型相比,该方法可以更有效地捕捉死亡模式中存在的复杂关系,从而提高预测性能和结果的可解释性。主要发现包括:(1)确定了影响区域死亡模式的15个关键因素,其中性别和城乡状况的影响最为显著。(2)教育程度对40 ~ 44岁人群的死亡概率有显著影响。45岁以后,概率越来越多地受到气候和经济条件的影响,而对于60岁及以上的人来说,医疗保健变得至关重要。(3)某些因素对不同年龄组死亡概率的影响程度不同。(4)各因素之间的相互作用,特别是城乡状况与其他因素之间的相互作用,会影响模型的输出。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Research on the influencing factors and mechanism of regional death pattern in China based on functional neural network method.

The variation in age-specific death probability is closely linked to demographic, socioeconomic, and geographical factors. The present study employs a functional neural network regression model to examine the influence of these factors on regional death patterns in China, with a specific focus on individuals aged 40 and above, from a nonlinear perspective. In comparison with conventional linear models, this approach is shown to more effectively capture the intricate relationships present in death patterns, thereby enhancing both the predictive performance and the interpretability of the results. Key findings include: (1) Fifteen key factors influencing regional death patterns are identified, with gender and urban-rural status emerging as the most significant. (2) Educational level has a significant impact on death probability in the 40-44 age group. After the age of 45, probabilities are increasingly affected by climate and economic conditions, while healthcare becomes crucial for those aged 60 and above. (3) Some factors exert different levels of influence on death probability across age groups. (4) Interactions between factors, particularly between urban-rural status and other factors, affect model outputs.

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来源期刊
CiteScore
1.50
自引率
0.00%
发文量
14
期刊介绍: Biodemography and Social Biology is the official journal of The Society for the Study of Social Biology, devoted to furthering the discussion, advancement, and dissemination of knowledge about biological and sociocultural forces affecting the structure and composition of human populations. This interdisciplinary publication features contributions from scholars in the fields of sociology, demography, psychology, anthropology, biology, genetics, criminal justice, and others. Original manuscripts that further knowledge in the area of social biology are welcome, along with brief reports, review articles, and book reviews.
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