DDS-NAS: Dynamic Data Selection within Neural Architecture Search via On-line Hard Example Mining applied to Image Classification
Journal:
arXiv
Published Date:
Jun 17, 2025
Abstract
In order to address the scalability challenge within Neural Architecture
Search (NAS), we speed up NAS training via dynamic hard example mining within a
curriculum learning framework. By utilizing an autoencoder that enforces an
image similarity embedding in latent space, we construct an efficient kd-tree
structure to order images by furthest neighbour dissimilarity in a
low-dimensional embedding. From a given query image from our subsample dataset,
we can identify the most dissimilar image within the global dataset in
logarithmic time. Via curriculum learning, we then dynamically re-formulate an
unbiased subsample dataset for NAS optimisation, upon which the current NAS
solution architecture performs poorly. We show that our DDS-NAS framework
speeds up gradient-based NAS strategies by up to 27x without loss in
performance. By maximising the contribution of each image sample during
training, we reduce the duration of a NAS training cycle and the number of
iterations required for convergence.