Share your thoughts, 1 month free Claude Pro on usSee more
WorkDL logo mark

From Global Policies to Local Strategies: Multi-Objective Optimization of Resource-Specific Handover Policies

About

Efficient resource allocation is a key challenge in business process management, with direct implications for cost, throughput time, and utilization. While recent Reinforcement Learning (RL) approaches have shown promise in deriving adaptive allocation policies, they typically neglect inter-resource collaboration patterns that can strongly influence real-world task handovers. Recognizing this, this paper introduces the first approach for multi-objective optimization of resource-level decision-making, enabling the recommendation of person-specific handover policies. To achieve this, our work combines an existing Multi-Agent System-based process simulator with a multi-objective evolutionary algorithm. The resulting approach produces Pareto-optimal, resource-specific policies that optimize the process across multiple objectives. Experimental results on synthetic and real-world datasets show that our approach reduces costs by an average of 37% and waiting time by 58%, consistently outperforming heuristic baselines and demonstrating the potential of leveraging collaboration-aware optimization to improve process performance.

Lukas Kirchdorfer, Artemis Doumeni, Han van der Aa, Hugo A. L\'opez• 2026

Related benchmarks

TaskDatasetResultRank
Automated Process ImprovementP2P
Cost44
6
Automated Process ImprovementC1000
Cost98
6
Automated Process ImprovementC2000
Cost211
6
Resource Handover Policy OptimizationLoan Application AD variant
Cost120
6
Resource Handover Policy OptimizationLoan Application JS variant
Cost166
6
Resource Handover Policy OptimizationLoan Application RC variant
Cost49
6
Resource Handover Policy OptimizationLoan Application SCDT variant
Cost179
6
Resource Handover Policy OptimizationLoan Application ARR variant
Cost53
6
Automated Process ImprovementLoanApp
Cost70
6
Automated Process ImprovementACR
Cost45
6
Showing 10 of 12 rows

Other info

Follow for update