We demonstrate that a deep model can be reparametrized as a linear combination of several randomly initialized and frozen deep models in the weight space. During training, we seek local minima that reside within the subspace spanned by these random models (i.e., basis' networks). Our framework, PRANC, enables significant compaction of a deep model. The model can be reconstructed using a single scalar seed,' employed to generate the pseudo-random `basis' networks, together with the learned linear mixture coefficients. In practical applications, PRANC addresses the challenge of efficiently storing and communicating deep models, a common bottleneck in several scenarios, including multi-agent learning, continual learners, federated systems, and edge devices, among others. In this study, we employ PRANC to condense image classification models and compress images by compacting their associated implicit neural networks. PRANC outperforms baselines with a large margin on image classification when compressing a deep model almost $100$ times. Moreover, we show that PRANC enables memory-efficient inference by generating layer-wise weights on the fly. The source code of PRANC is here: \url{https://github.com/UCDvision/PRANC}
PRANC: Pseudo RAndom Networks for Compacting deep models
PRANC reparametrizes deep models as a linear combination of random deep models, enabling efficient compaction, storage, and inference for tasks such as image classification.
- Year
- 2022
- Venue
- ICCV 2023 1
- Authors
- 7
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- Abstract onlyARXIV-DEFAULT
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- arxiv.org/abs/2206.08464v2ARXIV-DEFAULT
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