unsymbolic
Unsymbolic is a term used in artificial intelligence and cognitive science to describe approaches that do not rely on explicit symbolic representations and rule-based manipulation. Instead, unsymbolic methods use distributed, sub-symbolic representations and learning processes that extract patterns from data. This stands in contrast to symbolic AI, which uses discrete symbols and logic to represent knowledge and perform reasoning.
Origin and scope: The distinction emerged in debates about the limitations of hand-crafted symbolic systems in
Techniques and characteristics: Core techniques include neural networks, deep learning, convolutional and recurrent architectures, unsupervised and
Applications and limitations: Unsymbolic methods are prominent in computer vision, speech recognition, natural language processing, robotics,
Relation to symbolic AI: Many researchers explore hybrid approaches, combining unsymbolic learning with symbolic reasoning in
Notable associations: Pioneering work in sub-symbolic learning has been advanced by researchers such as Geoffrey Hinton,