Prediksi Persediaan Obat Untuk Proses Penjualan Menggunakan Metode Decision Tree Pada Apotek

Febriana Putri Dewanti, Setiyowati Setiyowati, S. Harjanto
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引用次数: 5

Abstract

Inventory of drugs in a pharmacy is information that is needed to see the availability of drugs for the sales process. Oftentimes, the stock of drugs that are needed by the community is empty, while drugs that are not needed are actually abundant in stock in the warehouse. The unavailability of the drugs needed, of course, disappointed the people who were in dire need of these drugs. Meanwhile, the abundance of drugs that are not needed will cause losses because the drugs have expired due to being stored in the warehouse for too long. Another problem is that pharmacies feel overwhelmed in predicting which drugs are needed a lot and which drugs are not needed by the community. Considering that the prediction process is still manual, it is only by estimating it without any mathematical calculations.Based on these problems, the authors decided to design a drug inventory prediction system for the drug sales process using the decision tree method. The purpose of this study is how to build an application to predict drug sales that can be used to optimize drug stock control and increase sales at pharmacies.The Decision Tree algorithm is used because it is a suitable algorithm for classification problems and data mining, mapping attribute values into classes that can be applied to new classifications. The concept of the Decision Tree Algorithm is to convert data into a decision tree and decision rules. The Decision Tree Algorithm was introduced by (Quinlan, C.45: Programs for Machine Learning, 1993) which is a development of the ID3 Algorithm, the algorithm is used to form a decision tree. Decision tree is considered as one of the most popular approaches.The results of functional testing indicate that the application can run properly according to its design. The results of the validity test stated that the Prediction of Drug Sales at Pharmacies with the C.45 Method with 30 samples of sales transaction data had an accuracy of 89%, thus indicating that the system that has been created has a fairly good performance and can be used by pharmacies to predict drug sales in the future. which will come.
对药房使用Decision Tree方法进行销售的药品库存的预测
药房的药品库存是查看销售过程中药品可用性所需的信息。通常,社区需要的药物库存是空的,而不需要的药物实际上在仓库中有充足的库存。当然,所需药物的缺乏令急需这些药物的人们感到失望。同时,大量不需要的药品也会因为药品在仓库存放时间过长而过期而造成损失。另一个问题是,药店在预测社区非常需要哪些药物和不需要哪些药物时感到不知所措。考虑到预测过程仍然是人工的,只是通过估计,没有任何数学计算。基于这些问题,作者决定采用决策树方法设计一个药品销售过程的药品库存预测系统。本研究的目的是如何建立一个预测药品销售的应用程序,以优化药品库存控制,提高药店的销售额。之所以使用Decision Tree算法,是因为它是一种适合分类问题和数据挖掘的算法,可以将属性值映射到可以应用于新分类的类中。决策树算法的概念是将数据转换成决策树和决策规则。决策树算法由(Quinlan, C.45: Programs for Machine Learning, 1993)提出,是对ID3算法的发展,该算法用于形成决策树。决策树被认为是最流行的方法之一。功能测试结果表明,该应用程序能够按照设计要求正常运行。效度检验结果表明,使用C.45方法对30个销售交易数据样本进行的药店药品销售预测准确率为89%,表明所建立的系统具有较好的性能,可用于药店未来的药品销售预测。会来的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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