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An Improved Method For Forecasting Enrollments Based On Fuzzy Time Series And Particle Swarm Optimization

机译:基于模糊时间序列和粒子群算法的入学率预测改进方法

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Many forecasting models based on the concept of fuzzy time series have been proposed in the past decades. Two main factors, which are the lengths of intervals and the content of forecast rules, impact the forecasted accuracy of the models. How to find the proper content of the main factors to improve the forecasted accuracy has become an interesting research topic. Some forecasting models, which combined heuristic methods or evolutionary algorithms (such as genetic algorithms and simulated annealing) with the fuzzy time series, have been proposed but their results are not satisfied. In this paper, we use the particle swarm optimization to find the proper content of the main factors. A new hybrid forecasting model which combined particle swarm optimization with fuzzy time series is proposed to improve the forecasted accuracy. The experimental results of forecasting enrollments of students of the University of Alabama show that the new model is better than any existing models, and it can get better quality solutions based on the first-order and the high-order fuzzy time series, respectively.
机译:在过去的几十年中,已经提出了许多基于模糊时间序列概念的预测模型。间隔的长度和预测规则的内容这两个主要因素会影响模型的预测准确性。如何找到合适的主要因素含量来提高预测精度已成为一个有趣的研究课题。提出了一些将启发式方法或进化算法(例如遗传算法和模拟退火算法)与模糊时间序列结合在一起的预测模型,但结果并不令人满意。在本文中,我们使用粒子群算法找到合适的主要因素含量。提出了一种将粒子群算法与模糊时间序列相结合的混合预测模型,以提高预测的准确性。预测阿拉巴马大学学生入学率的实验结果表明,新模型比任何现有模型都要好,并且可以分别基于一阶和高阶模糊时间序列获得更好的质量解决方案。

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