Author:
Terim Asli,Çağlayan Sumeyye Nur,Kıvılcım Aytaç,Aktaş Mehmet
Abstract
Call Centers are the principal point of product and service providers, where they influence the customers. The fluctuations in the emotional states of the call center personnel directly affect the customers. These fluctuations may cause positive/negative results for the company in places where customer interaction is intense. Today, the supervision and evaluation of the activities of the agent, who is in contact with the customers, is essential in measuring and increasing the quality of the service.The system of rewarded bonuses is a way to encourage the employee. However, in the last decades, we have also observed that the emotional state´s effects are essential in the employee's performance. At present, analyzing, determining, and understanding agents' emotional states and work performance is highly necessary. This project has been started to measure the customer representatives´ emotional state and activities. This project addresses the need to evaluate customer representatives that work at Call Centers. Within the context of this research, we predict the emotional state of the customer representative while dialing in with the customer. According to the prototype software of the proposed methodology, customer representatives´ emotional situations on the dials are convenient to transfer as data to the Performance Evaluating Systems. With this project, it will be possible to score customer representatives according to their emotional states in the calls evaluated in quality evaluation and performance measurements, as well as personal support inferences for the personnel.
Publisher
Orclever Science and Research Group
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