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Telemarketing outcome prediction using an Ensemble based machine learning technique

conference contribution
posted on 2024-11-03, 14:10 authored by Shahriar KaisarShahriar Kaisar, Md Mamunur Rashid
Business organisations often use telemarketing, which is a form of direct marketing strategy to reach a wide range of customers within a short time. However, such marketing strategies need to target an appropriate subset of customers to offer them products/services instead of contacting everyone as people often get annoyed and disengaged when they receive pre-emptive communication. Machine learning techniques can aid in this scenario to select customers who are likely to positively respond to a telemarketing campaign. Business organisations can use their CRM-based customer information and embed machine learning techniques in the data analysis process to develop an automated decisionmaking system, which can recommend the set of customers to be communicated. A few works in the literature have used machine learning techniques to predict the outcome of telemarketing, however, the majority of them used a single classifier algorithm or used only a balanced dataset. To address this issue, this article proposes an ensemble-based machine learning technique to predict the outcome of telemarking, which works well even with an imbalanced dataset and achieves 90.29% accuracy.

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Start page

1

End page

11

Total pages

11

Outlet

Proceedings of the Australasian Conference on Information Systems (ACIS 2020)

Name of conference

ACIS 2020

Publisher

Australasian Conference on Information Systems

Place published

Wellington, New Zealand

Start date

2020-12-01

End date

2020-12-04

Language

English

Copyright

Copyright © 2020 authors. This is an open-access article licensed under a Creative Commons Attribution-NonCommercial 3.0 New Zealand

Former Identifier

2006106187

Esploro creation date

2021-06-01

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