Article ID Journal Published Year Pages File Type
383657 Expert Systems with Applications 2012 7 Pages PDF
Abstract

This study presents an approach to predict the performance of sales agents of a call center dedicated exclusively to sales and telemarketing activities. This approach is based on a naive Bayesian classifier. The objective is to know what levels of the attributes are indicative of individuals who perform well. A sample of 1037 sales agents was taken during the period between March and September of 2009 on campaigns related to insurance sales and service pre-paid phone services, to build the naive Bayes network. It has been shown that, socio-demographic attributes are not suitable for predicting performance. Alternatively, operational records were used to predict production of sales agents, achieving satisfactory results. In this case, the classifier training and testing is done through a stratified tenfold cross-validation. It classified the instances correctly 80.60% of times, with the proportion of false positives of 18.1% for class no (does not achieve minimum) and 20.8% for the class yes (achieves equal or above minimum acceptable). These results suggest that socio-demographic attributes has no predictive power on performance, while the operational information of the activities of the sale agent can predict the future performance of the agent.

► We model a naive Bayesian classifier to predict the job performance of sales agents of a Call center. ► We show that socio-demographic attributes are not suitable for predicting performance. ► Daily operational records were used to predict production of sales agents with satisfactory results. ► Inference made on the naive Bayesian network permits to establish particular minimum conditions of operation of the sales agent to remain in the firm.

Related Topics
Physical Sciences and Engineering Computer Science Artificial Intelligence
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