人工神经网络对土耳其部分保险公司保费收入的预测

Buse Özgür, U. Yolcu
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引用次数: 0

摘要

保险业可以被视为一个直接影响国家经济和发展的部门,它有能力为金融市场提供资金和应对风险。因此,对构成保险业体量的主要因素——保费规模进行尽可能准确、可靠的预测,间接意味着对国家经济和发展中可能出现的风险进行预测,并采取必要的措施。本研究采用不同的人工神经网络对土耳其部分保险公司的保费产出进行预测,并对预测结果进行比较评价。在这种情况下,基本上,两种不同的人工神经网络(ann),前馈和反馈已被用作保费生产的预测工具。两种训练算法和两种不同的激活函数在使用的人工神经网络结构中被操作。因此,为保险公司保费生产创造了八种不同的预测工具。在测试集上使用误差标准(如均方根误差平方、平均绝对百分位误差和中位数绝对百分位误差)对人工神经网络的预测性能进行了评估。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Prediction of the Premium Production of Some Insurance Companies Operating in Turkey with Artificial Neural Networks
The insurance sector can be seen as a sector that directly affects the country's economy and development with its ability to fund financial markets and meet risks. In this respect, predicting the premium sizes, which is the main factor that constitutes the volume of the insurance sector, as accurately and reliably as possible, indirectly means foreseeing the risks that may arise in terms of the economy and development of the country and taking the necessary measures. In this study, the premium production of some insurance companies operating in Turkey is predicted with different artificial neural networks and evaluated the results comparatively. In this context, basically, two different artificial neural networks (ANNs), feed-forward, and feed-back have been used as predictive tools for insurance premium production. Two training algorithms and two different activation functions have been operated in the structure of the ANNs used. Thus, eight different predictive tools for insurance companies' premium production have been created. The prediction performances of ANNs have been evaluated on the test sets using error criteria such as Root Mean Error Squares, Average Absolute Percentile Error, and Median Absolute Percentile Error.
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