一种基于一阶模糊规则的距离测度金融市场预测系统

IF 0.7 Q2 MATHEMATICS
S. G. Hassan, TranThi KieuVan, Shuangyin Liu, Harish Garg, Munawar Hassan, Shafqat Iqbal
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引用次数: 0

摘要

对金融、大气科学、电力、工业、农业和其他科学的精确估计有助于政府和机构在经济上制定有关进出口、需求、消费、储存和地方工业的相关政策。由于数据序列在时间方面的不确定性和不确定性行为,最重要的挑战是开发和确定处理上述复杂问题的实用方法。本文分析了一种新的模糊时间序列(FTS)预测方法,并与传统的革兰脉产量预测模型进行了比较。结合模糊集理论、FTS理论、模糊规则理论、三角隶属函数理论、距离测度理论和修正加权平均方法,提出了一种鲁棒有效的基于模糊规则的作物产量和股票价格时序数据预测方法。采用传统的统计预测方法,如Holt的线性趋势、Holt的指数趋势和Holt的阻尼指数趋势模型,对时间序列数据进行比较。为了确定建模和预测的首要性,使用均方根误差(RMSE)和平均绝对误差(MAE)技术作为标准。RMSE和MAE的数值分别为106.51和74.8897,表明所提出的基于模糊规则的方法对于不确定环境下的生产和市场份额价格预测具有较强的鲁棒性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Novel First-Order Fuzzy Rules-Based Forecasting System Using Distance Measures Approach for Financial Market Forecasting
The precise estimates about finance, atmospheric science, power sector, industries, agriculture, and other science help governments and institutions economically in making the relevant policies regarding import-export, demand, consumption, storage, and local industries. Due to the uncertainty and nondeterministic behavior of data series with respect to time, the foremost challenge is to develop and identify the practical method to handle the above stated complex issues. As an illustration, this study presented an analysis of a new fuzzy time-series (FTS) approach and comparison with traditional forecasting models for prediction of gram pulse production. Taking into consideration the theory of fuzzy sets, FTS, fuzzy rules, triangular membership functions, distance measures, and modified weighted average method, a robust and effective fuzzy rules-based methodology was developed for the prediction of time-series data regarding crop production and share prices. Conventional statistical forecasting methods such as Holt’s linear trend, Holt’s exponential trend, and Holt’s damped exponential trend models were also applied on time-series data for comparison. To identify the primacy of modeling and forecasting, the techniques of root mean squared error (RMSE) and mean absolute error (MAE) were used as a criterion. The numerical values of RMSE and MAE such as 106.51 and 74.8897 clearly demonstrated that the proposed fuzzy rules-based method is robust for forecasting of production and market share prices in the environment of uncertainty.
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