支持向量回归法在全国大宗商品价格预测中的绩效分析

Huzain Azis, Purnawansyah Purnawansyah, Nirwana Nirwana, Felix Andika Dwiyanto
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引用次数: 0

摘要

支持向量回归(SVR)是一种用于预测连续变量值的监督学习算法。支持向量回归算法的基本目标是找到最合适的决策线。SVR已成功地应用于时间序列预测中的几个问题。在本研究中,使用SVR来预测主要商品的价格,由于多种因素使公众难以获得容易到达的杂货,因此价格随时都在不断变化。全国主要商品数据,包括青葱、湖南蒜、大蒜、中粒大米、优质大米、红辣椒、卷红辣椒、红辣椒、肉鸡肉、牛腿筋、砂糖、进口大豆、散装食用油、优质包装食用油、简易包装食用油、肉鸡鸡蛋、小麦粉等17种商品。数据集为过去三年,包括从2020年1月1日到2022年12月31日。数据集中有3个变量,分别是商品、日期和价格。本研究将整个数据集分为80%的训练数据和20%的测试数据。本研究结果表明,使用RBF核的SVR对所有数据集都有较好的预测精度,训练数据的平均均方误差(Mean Square Error, MSE)为6005,而数据测试为6062;训练数据的平均绝对偏差(Mean Absolute Deviation, MAD)为6730,而数据测试为6.6831;平均绝对百分比误差(Mean Absolute Percentage Error, MAPE)训练数据为0.0148,而数据测试为0.0147;
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The Support Vector Regression Method Performance Analysis in Predicting National Staple Commodity Prices
Support Vector Regression (SVR) is a supervised learning algorithm to predict continuous variable values. The basic goal of the SVR algorithm is to find the most suitable decision line. SVR has been successfully applied to several issues in time series prediction. In this research, SVR is used to predict the price of staple commodity, which are constantly changing in price at any time due to several factors making it difficult for the public to get groceries that are easy to reach. National staple commodity data consisting of 17 commodities, including shallots, honan garlic, kating garlic, medium rice, premium rice, red cayenne peppers, curly red chilies, red chili peppers, meat of broiler chicken, beef hamstrings, granulated sugar, imported soybeans, bulk cooking oil, premium packaged cooking oil, simple packaged cooking oil, broiler chicken eggs, and wheat flour. With a data set for the last 3 years, including from January 1, 2020, to December 31, 2022. There are 3 variables in the data set, namely commodity, date, and price. This research divides the entire dataset into 80% training and 20% testing data. The results of this research show that SVR using the RBF kernel produces good forecasting accuracy for all datasets with an average Mean Square Error (MSE) training data of 6,005 while data testing is 6,062, Mean Absolute Deviation (MAD) of training data is 6,730 while data testing is 6.6831, Mean Absolute Percentage Error (MAPE) training data is 0.0148 while data testing is 0.0147, and Root Mean Squared Error (RMSE) training data is 7.772 while data testing is 7.746.
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