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Decision Support System for Selection of Staples Food and Food Commodity Price Prediction Post-COVID-19 Using Simple Additive Weighting and Multiple Linear Regression Methods

机译:决策支持系统选择订书钉食品和食品商品价格预测后Covid-19使用简单的添加剂和多元线性回归方法

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In the pandemic after the occurrence of COVID-19, there are significant changes in economic statistics, this is influenced by economic activity that is not stable compared to before. The price of food staples was also affected by the pandemic, meetings between buyers and traders, usually held in traditional and modern markets, were hampered due to government restrictions on the territory. This causes a decrease in existing transactions in the market, therefore foodstuffs have the possibility of price volatility. Multiple Linear Regression (MLR) algorithm is a method that can overcome predictions with the type of seasonal dataset prediction, therefore the MLR algorithm is implemented to predict food prices, especially in the modern market, based on the predicted prices, then a decision support system is made to make an alternative ranking of food selection accumulation. Based on the available food ingredients there are nutrients contained in these foods, therefore experts are needed to determine the weighting of nutrition in each food ingredient. Simple Additive Weighting (SAW) method is a method that can do weighting and ranking of alternatives. Therefore the SAW method is applied to rank alternative food staples that have nutritional weight and price. Based on the application of MLR, the error level testing concluded that the prediction of the price of food “Rice” has the least error results compared to other foodstuffs with the value of MSE 21261.04, MAE 145.79, RMSE 145.812, MAPE 0.81 while for the best R2 values found at food ingredients “Garlic” with a value of 0.576. Based on testing of the application of SAW, the same results are obtained between manual calculations and calculations provided by the system, so that the accuracy of the system can be ascertained.
机译:在COVID-19发生后的大流行,也有经济统计显著的变化,这是由经济活动相比之前是不是稳定的影响。主食的价格也受艾滋病影响的,采购商和贸易商,通常在传统与现代市场举行会晤,受阻由于对领土政府的限制。这导致在市场现有的交易减少,因此食品价格有波动的可能性。多元线性回归(MLR)算法是可以克服季节性数据集预测的类型预测的方法,因此MLR算法实现预测食品价格,尤其是在现代市场的基础上,预测的价格,那么决策支持系统由作出另类排名食物选择的积累。根据现有的食品配料有包含在这些食物中的营养物质,因此需要专家来确定每种食品的营养成分的权重。简单加权(SAW)方法是,可以做加权和替换的排序的方法。因此,SAW方法应用于具有营养重量和价格秩替代主食。根据国土资源部的应用程序,错误级别测试的结论是,食品“大米”的价格预测有误差最小结果进行了比较与MSE 21261.04,MAE 145.79,RMSE 145.812,MAPE 0.81,而对于价值等食品最好的R2值在食品配料“大蒜”发现与0.576的值。基于SAW的应用的测试中,手工计算和由系统提供的计算之间得到相同的结果,因此,系统的精度可被确定。

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