利用线性回归算法实现数据挖掘预测交付时间

T. Wahyudi, Dava Septya Arroufu
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引用次数: 5

摘要

在当前的现代化时代,网上购物已经成为人们的一种习惯,并与负责将网上购物物品从卖家运送到买家的货运代理服务密切相关。因此,买家需要快速、安全的送货服务,以确保货物按时送到目的地。客户满意度是航运业务中最重要的因素之一。然而,该领域存在一些障碍,导致货物交付延迟。因此,可以用来克服这个问题的一个解决方案是使用数据挖掘技术来预测交付时间。使用由4个属性组成的1000个数据集,将使用线性回归算法的预测技术进行数据处理。通过利用货物被拿走时、货物在途中、到达买方之前的数据,他们可以做出预测或预测,并进行多次分析,以便在未来不会出现交货延误。基于用于生成水平值的RMSE(均方根误差)值,使用该方法的预测结果的误差为0.370%的RMSE值。可以得出结论,使用线性回归算法被证明在预测交付时间方面是准确的。
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Implementation of Data Mining Prediction Delivery Time Using Linear Regression Algorithm
In the current era of modernization, online shopping has become a habit of the people, and is closely related to freight forwarding services in charge of delivering online shopping items from the seller to the buyer. So that buyers need a fast and safe delivery service to ensure the goods sent on time to their destination. Customer satisfaction is one of the most important factors in the shipping business. However, there are several obstacles that occur in the field that cause delays in the delivery of goods. Therefore, one solution that can be used to overcome this problem is to use data mining technology to predict delivery times. Using 1,000 datasets consisting of 4 Attributes, data processing will be carried out with prediction techniques using the Linear Regression algorithm. By utilizing data when the goods are taken, when the goods are on the way, until they reach the buyer, they can produce forecasts or predictions and produce several analyzes so that in the future there will be no delivery delays. Based on the RMSE (Root Mean Square Error) value which serves to generate the level value the error of the prediction results using this method and in an RMSE value of 0.370 %. It can be concluded that using the Linear Regression algorithm is proven to be accurate in predicting delivery times.
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来源期刊
CiteScore
1.50
自引率
0.00%
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审稿时长
4 weeks
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