On the visual analytic intelligence of neural networks
- URL: http://arxiv.org/abs/2209.14017v1
- Date: Wed, 28 Sep 2022 11:50:29 GMT
- Title: On the visual analytic intelligence of neural networks
- Authors: Stanis{\l}aw Wo\'zniak, Hlynur J\'onsson, Giovanni Cherubini, Angeliki
Pantazi, Evangelos Eleftheriou
- Abstract summary: We present a biologically realistic system that receives inputs from synthetic eye movements - saccades, and processes them with neurons incorporating dynamics of neocortical neurons.
We show that the biologically inspired network achieves superior accuracy, learns faster and requires fewer parameters than the conventional network.
- Score: 0.463732827131233
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Visual oddity task was conceived as a universal ethnic-independent analytic
intelligence test for humans. Advancements in artificial intelligence led to
important breakthroughs, yet competing with humans on such analytic
intelligence tasks remains challenging and typically resorts to
non-biologically-plausible architectures. We present a biologically realistic
system that receives inputs from synthetic eye movements - saccades, and
processes them with neurons 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. Both approaches surpass the human accuracy, and we uncover that both
share the same essential underlying mechanism of reasoning. Finally, we show
that the biologically inspired network achieves superior accuracy, learns
faster and requires fewer parameters than the conventional network.
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