articleJan 1, 2024GREEN OA
Selecting Receptive Fields in Deep Networks
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Abstract
Recent deep learning and unsupervised feature learning systems that learn from unlabeled data have achieved high performance in benchmarks by using extremely large architectures with many features (hidden units) at each layer. Unfortunately, for such large architectures the number of parameters can grow quadratically in the width of the network, thus necessitating hand-coded “local receptive fields ” that limit the number of connections from lower level features to higher ones (e.g., based on spatial locality). In this paper we propose a fast method to choose these connections that may be incorporated into a wide variety of unsupervised training methods. Specifically, we choose local receptive fields that…
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1Topics & keywords
Topics
Keywords
- Computer science
- Receptive field
- Locality
- Artificial intelligence
- Scalability
- Quadratic growth
- Pairwise comparison
- Generalization
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