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Brain-Like Object Recognition with High-Performing Shallow Recurrent ANNs

Neural Information Processing Systems

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 shallow ANN with four anatomically mapped areas and recurrent connectivity, guided by Brain-Score, a new large-scale composite of neural and behavioral benchmarks for quantifying the functional fidelity of models of the primate ventral visual stream.


Reviews: Brain-Like Object Recognition with High-Performing Shallow Recurrent ANNs

Neural Information Processing Systems

Although the idea of a functional correspondence between ANN components and brain regions is a key motivating idea in this paper, it has to be noted that brain "areas" can be functionally and anatomically heterogeneous. Therefore, the one-to-one mapping between the number of model components and the number of brain regions may be a bit arbitrary and simplistic. Can we really say for sure it should be four areas, and not five or six? Moreover, the assumption that the circuitry does not differ across regions seems simplistic. Lines 89-101: How are these architecture details decided on?


Reviews: Brain-Like Object Recognition with High-Performing Shallow Recurrent ANNs

Neural Information Processing Systems

There was a robust discussion on the merits and novelty of this work after the rebuttal from the authors. There was some confusion as to whether this work is truly the first to-be-published work that introduces BrainScore. We concluded that given the pre-print only versions of the work thus far, this qualifies as a genuinely new contribution (wrt. With that in mind: the authors would do well do describe the details of the BrainScore in more detail in the camera ready version. Otherwise, everyone is excited about the novel aspects (architecture, experiments, metric etc) of this work so I wholeheartedly recommend this work to be accepted at NeurIPS.


Brain-Like Object Recognition with High-Performing Shallow Recurrent ANNs

Neural Information Processing Systems

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 shallow ANN with four anatomically mapped areas and recurrent connectivity, guided by Brain-Score, a new large-scale composite of neural and behavioral benchmarks for quantifying the functional fidelity of models of the primate ventral visual stream.


Brain-Like Object Recognition with High-Performing Shallow Recurrent ANNs

Kubilius, Jonas, Schrimpf, Martin, Kar, Kohitij, Rajalingham, Rishi, Hong, Ha, Majaj, Najib, Issa, Elias, Bashivan, Pouya, Prescott-Roy, Jonathan, Schmidt, Kailyn, Nayebi, Aran, Bear, Daniel, Yamins, Daniel L., DiCarlo, James J.

Neural Information Processing Systems

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 shallow ANN with four anatomically mapped areas and recurrent connectivity, guided by Brain-Score, a new large-scale composite of neural and behavioral benchmarks for quantifying the functional fidelity of models of the primate ventral visual stream.