咖啡因成瘾预测的模糊界面系统

Archit Aggarwal, Garima Aggrawal
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引用次数: 1

摘要

咖啡因是一种兴奋剂,可以防止或延迟困倦或困倦的感觉。咖啡因在世界上大部分地区都是一种不受管制的物质,因此有上瘾的危险。咖啡因成瘾和戒断的症状定义很好,但数量很多,有时与其他疾病的相同症状分不开。模糊逻辑可以用来综合许多这样的症状,并得出一定的结论。本文旨在基于一定的预测因子,运用模糊逻辑预测功能正常成人的咖啡因成瘾风险。该系统考虑了四个这样的预测因素。在不同的情况下,所提出的模型给出了足够的结果,精度在80%到100%之间。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Fuzzy Interface System for the Prediction of Caffeine Addiction
Caffeine is a stimulant which enables the prevention or delay of drowsiness or a feeling of sleepiness. Caffeine is an unregulated substance in most parts of the world and hence poses a threat of addiction. The symptoms of caffeine addiction and withdrawal are defined well but are large in number and sometimes inseparable from the same symptoms of other conditions. Fuzzy logic can be used to combine many such symptoms and arrive at a certain conclusion. This paper aims to implement fuzzy logic to predict the risk caffeine addiction in functioning adults based on certain predictors. The system takes into account four such predictors. The proposed model gives adequate results with an accuracy of eighty to hundred percent under different scenarios.
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