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Hauptverfasser: Zheng, Yujun, Chen, Xinya, Lu, Xueqin, Sheng, Weiguo, Chen, Shengyong
Format: Preprint
Veröffentlicht: 2025
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Online-Zugang:https://arxiv.org/abs/2510.16406
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author Zheng, Yujun
Chen, Xinya
Lu, Xueqin
Sheng, Weiguo
Chen, Shengyong
author_facet Zheng, Yujun
Chen, Xinya
Lu, Xueqin
Sheng, Weiguo
Chen, Shengyong
contents Emotional stress often has a significant effect on the working performance of staff, but this effect is commonly neglected in existing staff scheduling methods. We study a call-center staff scheduling problem, which considers the evolution of work performance of staff under emotional stress. First, we present an emotional stress driven model that estimates the working performance of call-center employees based on not only skill levels but also emotional states. On the basis of the model, we formulate a combined short-term and long-term call-center staff scheduling problem aiming at maximizing the customer service level, which depends on the working performance of employees. We then propose a memetic optimization algorithm combining global mutation and neighborhood search assisted by deep reinforcement learning to efficiently solve this problem. Experimental results on real-world problem instances of bank call-center staff scheduling demonstrate the performance advantages of the proposed method over selected popular staff scheduling methods. By explicitly modeling and incorporating emotional stress, our method reflects a more realistic understanding and utilization of human behavior in staff scheduling.
format Preprint
id arxiv_https___arxiv_org_abs_2510_16406
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Call-Center Staff Scheduling Considering Performance Evolution under Emotional Stress
Zheng, Yujun
Chen, Xinya
Lu, Xueqin
Sheng, Weiguo
Chen, Shengyong
Neural and Evolutionary Computing
Emotional stress often has a significant effect on the working performance of staff, but this effect is commonly neglected in existing staff scheduling methods. We study a call-center staff scheduling problem, which considers the evolution of work performance of staff under emotional stress. First, we present an emotional stress driven model that estimates the working performance of call-center employees based on not only skill levels but also emotional states. On the basis of the model, we formulate a combined short-term and long-term call-center staff scheduling problem aiming at maximizing the customer service level, which depends on the working performance of employees. We then propose a memetic optimization algorithm combining global mutation and neighborhood search assisted by deep reinforcement learning to efficiently solve this problem. Experimental results on real-world problem instances of bank call-center staff scheduling demonstrate the performance advantages of the proposed method over selected popular staff scheduling methods. By explicitly modeling and incorporating emotional stress, our method reflects a more realistic understanding and utilization of human behavior in staff scheduling.
title Call-Center Staff Scheduling Considering Performance Evolution under Emotional Stress
topic Neural and Evolutionary Computing
url https://arxiv.org/abs/2510.16406