基于遗传模糊度量技术(GFT)的学生建议决策预测学生未来GPA

I. Kouatli
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引用次数: 9

摘要

采用遗传算法和模糊逻辑等智能技术的决策制定和/或决策支持系统(DSS)在许多新的应用中越来越受欢迎。结合这些技术可以增强任何决策支持系统(DSS)的能力。本文讨论了一种实现遗传模糊系统的模块化方法,称为“遗传模糊度量技术”(GFT)。该技术利用输入重要因子将模块化结构结合到最终决策过程中。这种组合的目标是提供系统在环境中以与人类决策者相同的方式进行交互和“做出决策”的能力。在不确定的情况下,数学模型不存在或不足以做出适当的决策时,该系统是理想的。现实生活中的大多数决策过程都存在这种不确定性。其中一个问题是在大学录取过程中决定学生的预测GPA水平。这主要取决于高中(HS)成绩,大二考试(SE)成绩和英语考试(EEE)成绩。看看学生的历史数据,模糊逻辑可以在这些数据的基础上制定规则。采用遗传算法对系统性能进行优化。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Student advising decision to predict student's future GPA based on Genetic Fuzzimetric Technique (GFT)
Decision making and/or Decision Support Systems (DSS) using intelligent techniques like Genetic Algorithm and fuzzy logic is becoming popular in many new applications. Combining these techniques provides an enhanced capability of any decision support systems (DSS. This paper discusses a modular approach toward implementing Genetic Fuzzy system termed as “Genetic Fuzzimetric Technique” (GFT). The technique utilizes input importance factor to combine the modular structure into final decision process. The objective of this combination provides the ability of the system to interact and “take decision” in an environment in the same manner as the human decision maker would do. This proposed system is ideal in cases where mathematical modeling either does not exist or insufficient for appropriate decision making under uncertainty. Most of real life decision making processes are of that type of uncertainty. One such problem is to decide on the predicted GPA level for students during the admission process to the university. This is mainly dependent on High School (HS) performance, Sophomore Exam (SE) results and English exam (EEE) performance. Looking at the historical data of students, fuzzy logic can be used to develop rules based on these data. Genetic Algorithm would be used to optimize the performance of the system.
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