Optimizing Iron Price Forecasting with Linear Regression Analysis and RapidMiner

Rahmatul Istiqomah, Rita Ambarwati
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Abstract

Competition in companies often occurs in price, advertising and promotion, and quality. Price is very influential on competition in a business. The price of a product is one of the things that influences buyers to want to buy a product or not; therefore, price is very important to determine. There are two objectives in this study; the first objective is to predict the right iron price to be used in the following year so that it can be used to increase the competitiveness of the company. The second objective is to determine the attributes that affect the price. This research uses a linear regression algorithm to predict prices and measure the attributes' relationship using the RapidMiner tool. RapidMiner is software that functions as a learning tool in data mining science in which various data processing models are ready to be used easily. From the test results on the training data, an accuracy value of 95% was obtained with a threshold value of 30, which stated that the results were accurate. Then, the factors that affect the price produce factors from the size variable (mm) and unit (kg); between the two variables that affect the price, there are results from the variables that most affect the price, namely size (mm). For the performance of the linear regression model calculated using the root mean square error (RMSE) produces a value of 199,291.
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利用线性回归分析和 RapidMiner 优化铁矿石价格预测
企业竞争通常体现在价格、广告和促销以及质量方面。价格对企业竞争的影响很大。产品价格是影响买家是否购买产品的因素之一;因此,价格的确定非常重要。本研究有两个目标:第一个目标是预测下一年使用的正确铁价,以便用来提高公司的竞争力。第二个目标是确定影响价格的属性。本研究使用线性回归算法预测价格,并使用 RapidMiner 工具测量属性之间的关系。RapidMiner 是一款数据挖掘科学学习工具软件,其中的各种数据处理模型都可以轻松使用。从训练数据的测试结果来看,准确率为 95%,阈值为 30,说明结果是准确的。然后,影响价格的因素产生于尺寸变量(毫米)和单位(公斤);在影响价格的两个变量之间,有影响价格最大的变量,即尺寸(毫米)的结果。使用均方根误差(RMSE)计算的线性回归模型的性能值为 199 291。
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来源期刊
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204
审稿时长
4 weeks
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