Redirecting to original paper in 30 seconds...
Click below to go immediately or wait for automatic redirect
π Abstract
Abstract: This paper introduces TuneNSearch, a hybrid transfer learning and local
search approach for addressing diverse variants of the vehicle routing problem
(VRP). Our method uses reinforcement learning to generate high-quality
solutions, which are subsequently refined by an efficient local search
procedure. To ensure broad adaptability across VRP variants, TuneNSearch begins
with a pre-training phase on the multi-depot VRP (MDVRP), followed by a
fine-tuning phase to adapt it to other problem formulations. The learning phase
utilizes a Transformer-based architecture enhanced with edge-aware attention,
which integrates edge distances directly into the attention mechanism to better
capture spatial relationships inherent to routing problems. We show that the
pre-trained model generalizes effectively to single-depot variants, achieving
performance comparable to models trained specifically on single-depot
instances. Simultaneously, it maintains strong performance on multi-depot
variants, an ability that models pre-trained solely on single-depot problems
lack. For example, on 100-node instances of multi-depot variants, TuneNSearch
outperforms a model pre-trained on the CVRP by 44%. In contrast, on 100-node
instances of single-depot variants, TuneNSearch performs similar to the CVRP
model. To validate the effectiveness of our method, we conduct extensive
computational experiments on public benchmark and randomly generated instances.
Across multiple CVRPLIB datasets, TuneNSearch consistently achieves performance
deviations of less than 3% from the best-known solutions in the literature,
compared to 6-25% for other neural-based models, depending on problem
complexity. Overall, our approach demonstrates strong generalization to
different problem sizes, instance distributions, and VRP formulations, while
maintaining polynomial runtime complexity despite the integration of the local
search algorithm.
Authors (5)
Arthur CorrΓͺa
CristΓ³vΓ£o Silva
Liming Xu
Alexandra Brintrup
Samuel Moniz
Key Contributions
JSON parse error: Unexpected token i in JSON at position 53128