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Call Center Call Count Prediction Model by Machine LearningCall Center Call Count Prediction Model by Machine Learning

Other Titles
Call Center Call Count Prediction Model by Machine Learning
Authors
Yunhwan KeonHyuna KimJin Young Choi김동호Su Young KimSeonho Kim
Issue Date
Jul-2018
Publisher
한국정보기술학회
Keywords
machine learning; prediction model; classification; random forest
Citation
한국정보기술학회 영문논문지, v.8, no.1, pp 31 - 42
Pages
12
Indexed
KCICANDI
Journal Title
한국정보기술학회 영문논문지
Volume
8
Number
1
Start Page
31
End Page
42
URI
https://scholarworks.dongguk.edu/handle/sw.dongguk/9333
DOI
10.14801/JAITC.2018.8.1.31.
ISSN
2234-1072
2234-0963
Abstract
This paper is to introduce efficient human resource management in call center industry by coming up with a model that predicts how much the staffing is most appropriate at such a call center for a given hour period. The project aims to understand the characteristics of call center data through exploratory data analysis, and to test the effectiveness of call center staffing by formulating the rule based on a machine learning model. We initially conducted exploratory data analysis to find insights and implemented a machine learning model to predict the value of the target variable which consequently translated into the number of human receptionists preferred. From our intensive experiments, we found that Random Forest gave the best performance for call center data analysis.
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