应用模糊时间序列预测CPO的MAPE精度

Arif Ridho Lubis, S. Prayudani, Y. Fatmi, M. Lubis, Al-Khowarizmi
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引用次数: 4

摘要

为了从预测结果中找出会发生多少误差,需要每种预测的准确性。预测过程包含在数据挖掘过程中,将数据转化为新的知识。预测也被大宗商品商业参与者广泛使用,如棕榈油(粗棕榈油)。CPO是人类生活的主要内容,因此需要一种技术来增加业务。从CPO可以预测的一件事是CPO的价格。通过使用时间序列,可以预测CPO价格。可用于预测的精度度量是MAPE(平均绝对百分比误差)。在测试中,使用的时间序列数据是2010年12月至2021年4月期间CPO价格的月平均收益率多达125个数据。在本文中,我们测试了60%的训练数据和40%的测试数据,得到的MAPE为0.03463929%,80%的训练数据和20%的测试数据得到的MAPE为0.04392103%。MAPE的结果似乎没有太大的不同,因此它可以在各种其他精度技术中进行测试
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MAPE accuracy of CPO Forecasting by Applying Fuzzy Time Series
Accuracy in each forecasting is needed in order to find out how much error will occur from the forecasting results. The forecasting process is included in the data mining process, which is to convert data into new knowledge. Forecasting is also widely used by commodity business players such as CPO (Crude Palm Oil). CPO is a staple of human life so there is a need for a technique to increase the business. one of the things that can be forecasted from CPO is the price of CPO. By using the times series, it is possible to predict CPO prices. The accuracy measurement that can be used is MAPE (Mean Absolute Percentage Error) for forecasting. In the test, the time series data used is the average monthly yield of CPO prices starting from December 2010 to April 2021 as many as 125 data. In this article, we tested 60% of the training data and 40% of the test data, and the MAPE obtained was 0.03463929%, and the MAPE obtained with 80% of the training data and 20% of the test data was 0.04392103%. The result of MAPE does not seem that much different so that it can be tested in various other accuracy techniques
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