LGAICVNEMLOct 14, 2022

Neural Attentive Circuits

arXiv:2210.08031v28 citationsh-index: 169
AI Analysis

This work addresses the problem of balancing modularity and general-purpose design in neural networks for researchers and practitioners, offering incremental improvements in efficiency and robustness.

The paper tackles the challenge of creating a general-purpose neural architecture that is also modular, introducing Neural Attentive Circuits (NACs) which jointly learn parameterization and sparse connectivity without domain knowledge. Results include a 10% improvement in low-shot adaptation, 2.5% better OOD robustness, an 8x inference speedup with less than 3% performance loss, and competitive performance across diverse data modalities.

Recent work has seen the development of general purpose neural architectures that can be trained to perform tasks across diverse data modalities. General purpose models typically make few assumptions about the underlying data-structure and are known to perform well in the large-data regime. At the same time, there has been growing interest in modular neural architectures that represent the data using sparsely interacting modules. These models can be more robust out-of-distribution, computationally efficient, and capable of sample-efficient adaptation to new data. However, they tend to make domain-specific assumptions about the data, and present challenges in how module behavior (i.e., parameterization) and connectivity (i.e., their layout) can be jointly learned. In this work, we introduce a general purpose, yet modular neural architecture called Neural Attentive Circuits (NACs) that jointly learns the parameterization and a sparse connectivity of neural modules without using domain knowledge. NACs are best understood as the combination of two systems that are jointly trained end-to-end: one that determines the module configuration and the other that executes it on an input. We demonstrate qualitatively that NACs learn diverse and meaningful module configurations on the NLVR2 dataset without additional supervision. Quantitatively, we show that by incorporating modularity in this way, NACs improve upon a strong non-modular baseline in terms of low-shot adaptation on CIFAR and CUBs dataset by about 10%, and OOD robustness on Tiny ImageNet-R by about 2.5%. Further, we find that NACs can achieve an 8x speedup at inference time while losing less than 3% performance. Finally, we find NACs to yield competitive results on diverse data modalities spanning point-cloud classification, symbolic processing and text-classification from ASCII bytes, thereby confirming its general purpose nature.

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