
Learning and Intelligent Optimization
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The two-volume set LNCS 15744 + 15745 constitutes the proceedings of the 19th International Conference on Learning and Intelligent Optimization, LION 2025, which was held in Prague, Czech Republic, during June 15-19, 2025.
The 40 full papers included in the proceedings were carefully reviewed and selected from 70 submissions. They focus on exploring the intersections of Artificial Intelligence, Machine Learning, and Operations Research.
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Content
.- Multi-Agent Soft Actor-Critic with Coordinated Loss for Autonomous Mobility-on-Demand Fleet Control.
.- Do LLMs Understand Constraint Programming? Zero-Shot Constraint Programming Model Generation Using LLMs.
.- Learning to Solve the Min-Max Mixed-Shelves Picker-Routing Problem via Hierarchical and Parallel Decoding.
.- Automated Refutation with Monte Carlo Search of Graph Theory Conjectures on the Maximum Laplacian Eigenvalue.
.- Demand Selection for VRP with Emission Quota.
.- Multi-target tree regression approach for surrogate-based optimisation.
.- Information Preserving Line Search via Bayesian Optimization.
.- Bayesian Optimisation Against Climate Change: Applications and Benchmarks.
.- Empirical Analysis of Upper Bounds of Robustness Distributions using Adversarial Attacks.
.- e$^2$HPO: energy efficient Hyperparameter Optimization via energy-aware multiple information source Bayesian optimization.
.- Reinforcement Learning for Dynamic Pricing with resource constraints in a competitive context.
.- Decision Maker Preferences in Surrogate-based Multi-Objective Optimization: A Survey.
.- Deep Reinforcement Learning Based Genetic Framework for Flexible Job-Shop Scheduling under Practical Constraints.
.- Solving influence diagrams: efficient mixed-integer programming formulation and heuristic.
.- Mixed-Integer Linear Optimization via Learning-Based Two-Layer Large Neighborhood Search.
.- Geometrically Invariant and Equivariant Graph Neural Networks for TSP Algorithm Selection and Hardness Prediction.
.- Time-Varying Multi-Objective Optimization: Tradeoff Regret Bounds.
.- Vector Bin Packing with Bin Clusters, Variable Bin Sizes and Costs - A Model and Heuristics for Cloud Capacity Planning.
.- SchedulExpert: Graph Attention Meets Mixture-of-Experts for JSSP.
.- Reinforcement Learning for AMR Charging Decisions: The Impact of Reward and Action Space Design.
.- The Post-Enrollment Course Timetabling Problem with Flexible Teacher Assignments.
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