Receptive Field Reliant Zero-Cost Proxies for Neural Architecture Search
Prateek Keserwani (Samsung Research Institute Bangalore); Srinivas S Miriyala (Samsung Research Institute Bangalore); Vikram Nelvoy Rajendiran (samsung Research Institute Bangalore); Pradeep Nelahonne Shivamurthappa (Samsung R & D Institute Banglore)
-
SPS
IEEE Members: $11.00
Non-members: $15.00
Neural Architecture Search (NAS) is a fast growing technology for automatic design of deep-learning architectures. NAS includes three stages: search space design, search strategy, and evaluation criterion. Among these, the evaluation of various architectures is very cost-intensive task. In this work, we have proposed a set of receptive field reliant zero-cost proxies which need only one iteration of training and thereby reduce the computational time associated with evaluation criterion during the NAS. The proposed zero-cost proxies are based on layer-wise binding of the prune-at-initialization score with its receptive field for more effective measure as compared to the vanilla counterparts to achieve generalizability. The proposed zero-cost proxies are validated on the set of PyTorchCV models, and NAS-Bench-201 benchmarking datasets. The proposed zero-cost proxies have performed better for set of PyTorchCV models and competitively with vanilla counterparts for NAS-Bench-201. The efficiency of the proposed method is also demonstrated in NAS on NAS-Bench-201 using Aging Evolution as controller.