Author: Dr. David Lowemann

Associative Learning Should Go Deep

Conditioning, how animals learn to associate two or more events, is one of the most influential paradigms in learning theory. It is nevertheless unclear how current models of associative learning can accommodate complex phenomena without ad hoc representational assumptions. We propose to embrace deep neural networks to negotiate this problem. Read Full Article (External Site) […]

Published on July 12, 2017

Mind Games: Game Engines as an Architecture for Intuitive Physics

We explore the hypothesis that many intuitive physical inferences are based on a mental physics engine that is analogous in many ways to the machine physics engines used in building interactive video games. We describe the key features of game physics engines and their parallels in human mental representation, focusing especially on the intuitive physics […]

Published on July 12, 2017