On the visual analytic intelligence of neural networks

Author:

Woźniak StanisławORCID,Jónsson Hlynur,Cherubini Giovanni,Pantazi Angeliki,Eleftheriou Evangelos

Abstract

AbstractVisual oddity task was conceived to study universal ethnic-independent analytic intelligence of humans from a perspective of comprehension of spatial concepts. Advancements in artificial intelligence led to important breakthroughs, yet excelling at such abstract tasks remains challenging. Current approaches typically resort to non-biologically-plausible architectures with ever-growing models consuming substantially more energy than the brain. Motivated by the brain’s efficiency and reasoning capabilities, we present a biologically inspired system that receives inputs from synthetic eye movements – reminiscent of saccades, and processes them with neuronal units incorporating dynamics of neocortical neurons. We introduce a procedurally generated visual oddity dataset to train an architecture extending conventional relational networks and our proposed system. We demonstrate that both approaches are capable of abstract problem-solving at high accuracy, and we uncover that both share the same essential underlying mechanism of reasoning in seemingly unrelated aspects of their architectures. Finally, we show that the biologically inspired network achieves superior accuracy, learns faster and requires fewer parameters than the conventional network.

Funder

IBM Research

Publisher

Springer Science and Business Media LLC

Subject

General Physics and Astronomy,General Biochemistry, Genetics and Molecular Biology,General Chemistry,Multidisciplinary

Reference32 articles.

1. Russakovsky, O. et al. ImageNet large scale visual recognition challenge. Int. J. Comput. Vis. 115, 211–252 (2015).

2. Silver, D. et al. Mastering the game of Go with deep neural networks and tree search. Nature 529, 484–489 (2016).

3. Thompson, N. C., Greenewald, K., Lee, K. & Manso, G. F. The computational limits of deep learning in Ninth Computing within Limits 2023 (2023).

4. Kety, S. S. in Neurochemistry (eds Elliott, K. A. C., Page, I. H., & Quastel, J. H.) 113–127 (Charles C Thomas, 1962).

5. Barrett, D., Hill, F., Santoro, A., Morcos, A. & Lillicrap, T. Measuring abstract reasoning in neural networks. in Proc. ICML 511–520 (2018).

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