Abstract

Quality of a product determines the customer loyalty and it can be measured by conducting a survey. Company ‘X’ that sells three kinds of product (low, medium and high price) collected very large dataset through an online survey and recorded customer defection and their characteristic. The measured variables are Update Accumulation, Product Price, Customer Type, Delivery Status and Customer Defection. The data has an imbalanced response that could mislead the accuracy of classification if it is analyzed using standard approaches. Selective Sampling (SS) and Random Undersampling (RU) have been applied to draw a sample from imbalance response in order to obtain more balance data. Furthermore, Support Vector Machine (SVM) has been applied to classify the sampled data. The performance of the SS-SVM and SS-RU to classify sampled data has been evaluated and compared with the result of classifying the raw dataset. The RU yields on exact balance (50%:50%) response class, while SS reduce the imbalance proportion significantly (around 52%:48%). Nevertheless, the SS-SVM outperforms RU-SVM in the sense that it is capable to run the process effectively, where the SS-SVM reduces the duration of classification process 3 to 20 h shorter than using RU-SVM, with slightly different accuracy rate. Moreover, the SS-SVM maintains the basic characteristics of raw data better than RU-SVM.

Highlights

  • Customer loyalty is highly influenced by the quality of product and service provided by the company

  • The fact that the class proportion of the sampled data is not perfectly balanced (50%:50%) provides an interesting feature of the Selective Sampling procedure. It shows that the Selective Sampling algorithm involves of optimizing an objective function as indicated in the previous section

  • Sampling methods are able to provide less amount of data compared to raw data with more balance class

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Summary

Introduction

Customer loyalty is highly influenced by the quality of product and service provided by the company. Studying customer loyalty can be conducted through an online survey. Statistic data shows that currently there has been a significant increase (around 36%) on the number of the cloud-based company in 2016 (Columbus, 2013). This growth shows that internet based company should think smartly to provide comfort and convenience service to the customers in order to maintain the customer loyalty. Company “X” is a big cloud company based in Japan which has to maintain their customer loyalty and the company conducts a survey to study their customer behavior towards defection case. The collected data has characteristic of imbalanced response between defective and nondefective customers

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