利用杏核数据挖掘算法改进销售模式

Chairil Adam, Koko Handoko
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引用次数: 0

摘要

医药是卖给病人的人的必需品。因此,每个药房或医院都必须有一个数据处理系统,以便每笔交易的数据都可以用来制作报告。从这个报告中将产生一个有用的结果,以确定哪些药物是最经常购买和销售的,从而能够确定药房的库存数量。但目前药品销售交易数据每天都在不断增加,由于所使用的系统是一种存储或归档记账系统,而没有利用交易数据,因此积累了大量的数据,而且经常出现的问题是,由于消费者正在寻找的药品或需求仍然没有得到,药房缺乏最大限度的客户服务。先验算法作为可能的商品组合的候选,然后测试该组合是否满足最小支持度和最小置信度参数(即用户给出的阈值),从而找到经常一起购买的产品或在交易中倾向于一起出现的产品的形式。 & # x0D;
本文章由计算机程序翻译,如有差异,请以英文原文为准。
IMPLEMENTASI DATA MINING MENGGUNAKAN ALGORITMA APRIORI UNTUK MENINGKATKAN POLA PENJUALAN
Medicine is a necessity for someone who is sold to people with disease. Therefore, every pharmacy or hospital must have a data processing system so that each transaction data can be used to make reports. From this report a useful result will be created to determine which drugs are most frequently purchased and sold so as to be able to determine the amount of stock at the pharmacy. But at the present time drug sales transaction data continues to increase every day so that it has accumulated because the system used is a system for storing or archiving bookkeeping without utilizing the transaction data, besides that the problem that often arises is the lack of maximum customer service at pharmacies because the drugs or needs that consumers are looking for are still not available. The a priori algorithm functions as a candidate for possible item combinations, then tests whether the combination meets the minimum support and minimum confidence parameters which are the threshold values ​​given by the user, so that it finds patterns in the form of products that will often be purchased together or products that tend to appear together in a transaction.
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