A holistic approach for resource-constrained neural network architecture search
Metadatos
Mostrar el registro completo del ítemEditorial
Elsevier
Materia
Artificial neural networks Neural architecture search Meta-heuristic
Fecha
2025-03Referencia bibliográfica
Lupión, M., Cruz, N.C., Ortigosa, E.M., Ortigosa, P.M. A holistic approach for resource-constrained neural network architecture search. Applied Soft Computing, 172. 112832 (2025). https://doi.org/10.1016/j.asoc.2025.112832
Patrocinador
IMOCO4.E (EU H2020 RIA-101007311) (PCI2021-1219257) from MCIN/AEI/10.13039/501100011033 and EU NextGenerationEU/PRTR; R+D+i PID2021-123278OB-I00 and PDC2022-133370-I00 from MCI-N/AEI/10.13039/501100 011033; (FPU19/02756); (PAIDI 2021: POSTDOC_21_00124)Resumen
The design of Artificial Neural Networks (ANN) is critical for their performance. The research field called
Neural Network Search (NAS) investigates automated design strategies. This work proposes a novel NAS stack
that stands out in three facets. First, the representation scheme encodes problem-specific ANN as plain vectors
of numbers without needing auxiliary conversion models. Second, it is a pioneer in relying on the TLBO meta-
heuristic. This optimizer supports large-scale problems and only expects two parameters, contrasting with other
meta-heuristics used for NAS. Third, the stack includes a new evaluation predictor that avoids evaluating non-
promising architectures. It combines several machine learning methods that train as the optimizer evaluates
solutions, which avoids preliminary preparing this component and makes it self-adaptive. The proposal has
been tested by using it to build a CIFAR-10 classifier while forcing the architecture to have fewer than
150,000 parameters, assuming that the resulting network must be deployed in a resource-constrained IoT
device. The designs found with and without the predictor achieve validation accuracies of 78.68% and 80.65%,
respectively. Both outperform a larger model from the recent literature. The predictor slightly constraints the
evolution of solutions, but it approximately halves the computational effort. After extending the test to the
CIFAR-100 dataset, the proposal achieves a validation accuracy of 65.43% with 478,006 parameters in its
fastest configuration, competing with current results in the literature.





