基于监督学习的电信产品客户决策分类算法比较研究

Jhon Kristian Vieri, Tb Ai Munandar, Dwi Budi Srisulistiowati, Dwipa Handayani, Achmad No’eman, Tyastuti Sri Lestari
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摘要

客户是所有业务领域的主要目标,没有客户,公司将无法继续或竞争在业务领域,即使公司有辉煌的产品,如果它没有增加客户的数量,业务将无法发展,甚至破产。因此,有必要进行观察并制作能够预测哪些客户将订阅的应用程序,以便公司可以正确预测哪些客户将订阅,而不必等待可能性仍然未知的客户的确认。这对任何公司都非常有用,因为公司不再需要随机寻找客户,而寻找客户只需要花费时间。PT. Telekomunikasi Indonesia及其产品(Indihome)在电信和互联网领域的商业世界中难以竞争。因此,对该应用程序进行研究和开发,使PT. indonesia电信可以快速获得客户,而无需花费大量的资金和精力。制作此应用程序使用基于客户历史数据的机器学习技术的分类方法。该分类方法具有许多强大的算法来预测具有多于1个标签的变量。使用的一些算法是逻辑回归、随机森林分类器、支持向量机和决策树,这些算法由python编程语言(即SkLearn)中的模块提供。四种算法将使用Smote算法的过采样方法进行数据平衡测试,以获得自动预测客户的最佳结果。
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Comparative Study of Classification Algorithms for Customer Decisions on Telecommunication Products Using Supervised Learning
Customers are the main goal of all business fields, without customers the company will not be able to continue or compete in the business field it is in, even though the company has brilliant products, if it does not have an increase in the number of customers the business will not be able to develop or even go bankrupt. Therefore, it is necessary to make observations and make applications that are able to predict customers who will subscribe so that companies can predict customers who will subscribe correctly without having to wait for confirmation from customers whose possibilities are still unknown. This can be very useful for any company because companies no longer need to look for random customers where it only takes time to find customers. PT. Telekomunikasi Indonesia with its product (Indihome) which is struggling to compete in the business world in the telecommunications and internet sector. Therefore research and development of this application are carried out so that PT. Indonesian telecommunications can get its customers quickly without having to spend a lot of money and effort. Making this application uses a classification method from machine learning technology based on customer historical data. The classification method has many strong algorithms for predicting variables that have more than 1 label. Some of the algorithms used are Logistic Regression, Random Forest Classifier, Support Vector Machine and Decision Tree which are provided by modules in the python programming language, namely SkLearn. The four algorithms will be tested with data balanced using the Oversampling method from the Smote algorithm to get optimal results in automatically predicting customers.
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