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Bibliographic Details
Main Authors: Don, Thilina Pathirage, Neumann, Aneta, Neumann, Frank
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2604.13469
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author Don, Thilina Pathirage
Neumann, Aneta
Neumann, Frank
author_facet Don, Thilina Pathirage
Neumann, Aneta
Neumann, Frank
contents The travelling thief problem (TTP) is a well-known multi-component optimisation problem that captures the interdependence between two components: the tour across cities and the packing of items. The packing while travelling problem (PWT) is an NP-hard subproblem of TTP where the packing of items should be optimised for a given fixed tour. In many solvers, the packing component is often addressed using greedy heuristics. Here, the use of suitable greedy functions is essential for the success of greedy algorithms. In this paper, we introduce new reward functions tailored to the PWT and extend them to a hyper-heuristic framework to achieve further advantage. Furthermore, we investigate the chance constrained PWT for greedy approaches and adopt the newly introduced reward functions for stochastic weights. The experimental results clearly demonstrate the benefit of the tailored heuristics over the standard heuristics in both deterministic and stochastic constraints.
format Preprint
id arxiv_https___arxiv_org_abs_2604_13469
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Greedy Approaches for Packing While Travelling with Deterministic and Stochastic Constraints
Don, Thilina Pathirage
Neumann, Aneta
Neumann, Frank
Neural and Evolutionary Computing
The travelling thief problem (TTP) is a well-known multi-component optimisation problem that captures the interdependence between two components: the tour across cities and the packing of items. The packing while travelling problem (PWT) is an NP-hard subproblem of TTP where the packing of items should be optimised for a given fixed tour. In many solvers, the packing component is often addressed using greedy heuristics. Here, the use of suitable greedy functions is essential for the success of greedy algorithms. In this paper, we introduce new reward functions tailored to the PWT and extend them to a hyper-heuristic framework to achieve further advantage. Furthermore, we investigate the chance constrained PWT for greedy approaches and adopt the newly introduced reward functions for stochastic weights. The experimental results clearly demonstrate the benefit of the tailored heuristics over the standard heuristics in both deterministic and stochastic constraints.
title Greedy Approaches for Packing While Travelling with Deterministic and Stochastic Constraints
topic Neural and Evolutionary Computing
url https://arxiv.org/abs/2604.13469