基于参数优化支持向量回归的主食价格预测模型

Mungki Astiningrum, V. N. Wijayaningrum, Ika Kusumaning Putri
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引用次数: 0

摘要

大量印尼人将大米作为主要食物,这使得大米价格成为决定其他主食价格的基准。由于气候变化或其他不可控因素造成的米价不稳定,使得印尼人难以估计米价,尤其是对穷人而言。本研究提出利用改进的乌鸦搜索算法(ICSA)对支持向量回归(SVR)参数进行优化,建立主食价格预测的回归模型。预测过程基于4年11个主要指标的时间序列数据进行。提出的ICSA对SVR中使用的6个参数进行优化,形成回归模型,包括lambda、epsilon、sigma、学习率、软边际常数和迭代次数。通过比较主食的实际价格和预测结果,采用MAPE和NRMSE来衡量算法的性能,得到错误率。在此参数优化机制下,给出的预测结果较好,误差值较小,MAPE为17.081,NRMSE为1.594。MAPE值在10 ~ 20之间表示预测结果可以接受,NRMSE值小于10表示预测精度很好。在乌鸦搜索算法的基础上改进支持向量回归算法,提高了支持向量回归在主食价格预测中的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Forecasting Model of Staple Food Prices Using Support Vector Regression with Optimized Parameters
Received October 20, 2021 Revised November 28, 2021 Accepted December 21, 2021 The large number of Indonesians who consume rice as their primary food makes rice price a benchmark for determining the other staple food prices. The instability of rice prices due to climate change or other uncontrollable factors makes it difficult for Indonesians to estimate the rice prices, especially for the poor. This study proposes the usage of the Improved Crow Search Algorithm (ICSA) to optimize the Support Vector Regression (SVR) parameter in building a regression model to predict the price of staple foods. The forecasting process is carried out based on time series data of 11 staples for four years. The proposed ICSA optimizes the six parameters used in the SVR to form a regression model, consisting of lambda, epsilon, sigma, learning rate, soft margin constant, and the number of iterations. Algorithm performance is measured using MAPE and NRMSE by comparing the actual price of staple foods and forecasting results to get the error rate. With this parameter optimization mechanism, the forecasting results given are good enough with a small error value, in the form of MAPE of 17.081 and NRMSE of 1.594. A MAPE value between 10 and 20 indicates that the forecasting result is acceptable, while an NRMSE value of less than 10 indicates that the forecasting accuracy is excellent. The improvised technique on Crow Search Algorithm is proven to improve the performance of Support Vector Regression in forecasting the price of staple foods.
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