An ensemble method with cost function on churn prediction

Accurate customer churn classification is vital in any business organisation due to the higher cost involved in getting new customers. In telecommunication businesses, companies have used various types of single classifiers to classify customer churn, but the classification accuracy is still relat...

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Main Authors: Mohd Khalid, Awang, Mohammad Afendee, Mohamed, Mokhairi, Makhtar
Format: Conference or Workshop Item
Language:English
English
Published: 2019
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Online Access:http://eprints.unisza.edu.my/1874/1/FH03-FIK-20-36862.pdf
http://eprints.unisza.edu.my/1874/2/FH03-FIK-20-36863.pdf
http://eprints.unisza.edu.my/1874/
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Institution: Universiti Sultan Zainal Abidin
Language: English
English
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spelling my-unisza-ir.18742020-11-23T08:36:57Z http://eprints.unisza.edu.my/1874/ An ensemble method with cost function on churn prediction Mohd Khalid, Awang Mohammad Afendee, Mohamed Mokhairi, Makhtar HG Finance Accurate customer churn classification is vital in any business organisation due to the higher cost involved in getting new customers. In telecommunication businesses, companies have used various types of single classifiers to classify customer churn, but the classification accuracy is still relatively low. However, the classification accuracy can be improved by integrating decisions from multiple classifiers through an ensemble method. Despite having the ability to produce higher classification accuracy, the ensemble method tends to produce similar or redundant classifiers. Therefore, this paper aims to achieve higher classification accuracy and at the same time, minimising ensemble classifiers by constructing a new ensemble method based on dimensionality reduction in soft set theory. The combination of ensemble classifier is calculated based on the simple majority voting algorithm. The performance measure used in determining the optimal subset of classifiers is the combination of Accuracy (ACC), True Negative Rate (TNR) and True Positive Rate (TPR). The proposed soft set ensemble methods (SSPN and SSSC) are systematically evaluated using customer churn data set taken from one of the local Telco companies in Malaysia. The selection and combination algorithm (SSSC) has proven its supremacy by producing accuracy (ACC) of 87.0% for local Telco data set and 94.0% for UCI data set, which is better than any other single classifier. This work proved that the proposed soft ensemble method could search for the minimum number of classifiers in the ensemble repository while at the same time improving the classification performance. In conclusion, the proposed soft ensemble method not only reduces the number of members of the ensemble but is also able to produce the highest classification accuracy 2019 Conference or Workshop Item NonPeerReviewed text en http://eprints.unisza.edu.my/1874/1/FH03-FIK-20-36862.pdf text en http://eprints.unisza.edu.my/1874/2/FH03-FIK-20-36863.pdf Mohd Khalid, Awang and Mohammad Afendee, Mohamed and Mokhairi, Makhtar (2019) An ensemble method with cost function on churn prediction. In: 2019 The 3rd International Conference on Advances in Artificial Intelligence (ICAAI 2019), 26-28 October 2019, Istanbul, Turkey.
institution Universiti Sultan Zainal Abidin
building UNISZA Library
collection Institutional Repository
continent Asia
country Malaysia
content_provider Universiti Sultan Zainal Abidin
content_source UNISZA Institutional Repository
url_provider https://eprints.unisza.edu.my/
language English
English
topic HG Finance
spellingShingle HG Finance
Mohd Khalid, Awang
Mohammad Afendee, Mohamed
Mokhairi, Makhtar
An ensemble method with cost function on churn prediction
description Accurate customer churn classification is vital in any business organisation due to the higher cost involved in getting new customers. In telecommunication businesses, companies have used various types of single classifiers to classify customer churn, but the classification accuracy is still relatively low. However, the classification accuracy can be improved by integrating decisions from multiple classifiers through an ensemble method. Despite having the ability to produce higher classification accuracy, the ensemble method tends to produce similar or redundant classifiers. Therefore, this paper aims to achieve higher classification accuracy and at the same time, minimising ensemble classifiers by constructing a new ensemble method based on dimensionality reduction in soft set theory. The combination of ensemble classifier is calculated based on the simple majority voting algorithm. The performance measure used in determining the optimal subset of classifiers is the combination of Accuracy (ACC), True Negative Rate (TNR) and True Positive Rate (TPR). The proposed soft set ensemble methods (SSPN and SSSC) are systematically evaluated using customer churn data set taken from one of the local Telco companies in Malaysia. The selection and combination algorithm (SSSC) has proven its supremacy by producing accuracy (ACC) of 87.0% for local Telco data set and 94.0% for UCI data set, which is better than any other single classifier. This work proved that the proposed soft ensemble method could search for the minimum number of classifiers in the ensemble repository while at the same time improving the classification performance. In conclusion, the proposed soft ensemble method not only reduces the number of members of the ensemble but is also able to produce the highest classification accuracy
format Conference or Workshop Item
author Mohd Khalid, Awang
Mohammad Afendee, Mohamed
Mokhairi, Makhtar
author_facet Mohd Khalid, Awang
Mohammad Afendee, Mohamed
Mokhairi, Makhtar
author_sort Mohd Khalid, Awang
title An ensemble method with cost function on churn prediction
title_short An ensemble method with cost function on churn prediction
title_full An ensemble method with cost function on churn prediction
title_fullStr An ensemble method with cost function on churn prediction
title_full_unstemmed An ensemble method with cost function on churn prediction
title_sort ensemble method with cost function on churn prediction
publishDate 2019
url http://eprints.unisza.edu.my/1874/1/FH03-FIK-20-36862.pdf
http://eprints.unisza.edu.my/1874/2/FH03-FIK-20-36863.pdf
http://eprints.unisza.edu.my/1874/
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