CVFeb 9, 2018

Cognitive Deficit of Deep Learning in Numerosity

arXiv:1802.05160v412 citations
Originality Incremental advance
AI Analysis

This highlights a cognitive deficit in DL for a fundamental visual intelligence task, with implications for improving AI by incorporating human-like cognitive priors.

The study investigated whether deep learning (DL) can perform subitizing, an innate human ability to sense small numbers, and found that standard DL fails due to its inability to abstract numbers from visual variations, but a modified recurrent neural network with encoded mathematical morphology achieved some success.

Subitizing, or the sense of small natural numbers, is an innate cognitive function of humans and primates; it responds to visual stimuli prior to the development of any symbolic skills, language or arithmetic. Given successes of deep learning (DL) in tasks of visual intelligence and given the primitivity of number sense, a tantalizing question is whether DL can comprehend numbers and perform subitizing. But somewhat disappointingly, extensive experiments of the type of cognitive psychology demonstrate that the examples-driven black box DL cannot see through superficial variations in visual representations and distill the abstract notion of natural number, a task that children perform with high accuracy and confidence. The failure is apparently due to the learning method not the CNN computational machinery itself. A recurrent neural network capable of subitizing does exist, which we construct by encoding a mechanism of mathematical morphology into the CNN convolutional kernels. Also, we investigate, using subitizing as a test bed, the ways to aid the black box DL by cognitive priors derived from human insight. Our findings are mixed and interesting, pointing to both cognitive deficit of pure DL, and some measured successes of boosting DL by predetermined cognitive implements. This case study of DL in cognitive computing is meaningful for visual numerosity represents a minimum level of human intelligence.

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