菲律宾咖啡生产预测模型的评估

Teresita R. Tolentino, A. Hernandez
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引用次数: 1

摘要

这是一项正在进行的研究,旨在开发一个咖啡生态市场,在菲律宾选定的省份为不同的咖啡利益相关者进行在线竞标。本文的目的是比较使用五年咖啡生产数据的三种不同的预测模型。这三个模型探索和评估指数平滑、移动平均和回归。数据中存在季节性、趋势性和不规则性等不同成分。因此,原始数据通过去除季节分量、趋势分量和不规则分量进行调整。预测值的计算采用MS Excel数据分析工具。用于衡量这三个模型的准确性的标准是MAE、MSE和MAPE。三种模型中,移动平均模型以9%的误差准确率排名第一,其次是指数平滑模型,误差准确率为12%,最后是回归模型,误差准确率为14%。
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Assessment of Predictive Models for Coffee Production in the Philippines
This is a research-in-progress of developing a coffee eco-market with online bidding for different coffee stakeholders in selected provinces in the Philippines. The objective of this paper is to compare three different forecasting models using a five-year coffee production data. The three models explore and assess exponential smoothing, moving average, and regression. Different components such as seasonal, trend and irregular components are present in the data. Thus, the original data is adjusted by removing the seasonal component, trend component, and irregular component. For the computation of the forecasted values, the MS Excel data analysis tool is used. The standards used to measure the accuracy of each three model for comparison are the MAE, the MSE, and the MAPE. Among the three model, the moving average model rank first with a 9% error accuracy percentage, the next is the exponential smoothing with 12% error accuracy percentage, then the last is the regression with 14% error accuracy percentage.
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