Brain-Like Object Recognition with High-Performing Shallow Recurrent ANNs
Jonas Kubilius, Martin Schrimpf, Kohitij Kar, Ha Hong, Najib J. Majaj,, Rishi Rajalingham, Elias B. Issa, Pouya Bashivan, Jonathan Prescott-Roy,, Kailyn Schmidt, Aran Nayebi, Daniel Bear, Daniel L. K. Yamins, and James J., DiCarlo

TL;DR
This paper introduces CORnet-S, a shallow, recurrent neural network that aligns well with brain anatomy and achieves top performance on both neuroscience benchmarks and image classification tasks.
Contribution
The development of CORnet-S, a biologically-inspired, shallow recurrent ANN that outperforms deeper models on brain-alignment and object recognition benchmarks.
Findings
CORnet-S achieves top scores on Brain-Score and ImageNet.
Recurrence is a key factor for high performance and brain-like behavior.
Temporal neural dynamics in CORnet-S resemble monkey IT population dynamics.
Abstract
Deep convolutional artificial neural networks (ANNs) are the leading class of candidate models of the mechanisms of visual processing in the primate ventral stream. While initially inspired by brain anatomy, over the past years, these ANNs have evolved from a simple eight-layer architecture in AlexNet to extremely deep and branching architectures, demonstrating increasingly better object categorization performance, yet bringing into question how brain-like they still are. In particular, typical deep models from the machine learning community are often hard to map onto the brain's anatomy due to their vast number of layers and missing biologically-important connections, such as recurrence. Here we demonstrate that better anatomical alignment to the brain and high performance on machine learning as well as neuroscience measures do not have to be in contradiction. We developed CORnet-S, a…
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Taxonomy
TopicsDomain Adaptation and Few-Shot Learning · Neural dynamics and brain function · Visual Attention and Saliency Detection
Methods1x1 Convolution · Convolution · Local Response Normalization · Grouped Convolution · *Communicated@Fast*How Do I Communicate to Expedia? · Dropout · Dense Connections · Max Pooling · Softmax · How do I speak to a person at Expedia?-/+/
