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Entropy-based and trapezoid fuzzification-based fuzzy time series approaches for forecasting IT project cost

机译:基于熵和梯形模糊化的模糊时间序列预测IT项目成本

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摘要

A main drawback of existing fuzzy time series forecasting methods is that they lack persuasiveness in determining universe of discourse and the length of intervals. Two approaches are proposed for overcoming the problem, and the proposed approaches are more objective and reasonable to improve the persuasiveness in determining the universe of discourse, length of intervals and membership functions of fuzzy time series. The first approach is using Minimize Entropy Principle Approach (MEPA) to partition the universe of discourse and build membership functions, and the second is using Trapezoid Fuzzification Approach (TFA). Monthly amount data of IT project expenditure of a company are used to evaluate the performance of the proposed approaches. The forecasting accuracies of the proposed approaches are better than those of previous methods.
机译:现有的模糊时间序列预测方法的主要缺点是,它们在确定话语范围和间隔长度方面缺乏说服力。提出了两种方法来克服该问题,并且所提出的方法在提高话语的确定性,区间长度和模糊时间序列的隶属函数方面更具客观性和合理性。第一种方法是使用最小化熵原理方法(MEPA)来划分话语范围并建立隶属函数,第二种方法是使用梯形模糊化方法(TFA)。公司的IT项目支出的每月金额数据用于评估所提出方法的性能。所提出的方法的预测精度优于以前的方法。

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