Article 61Q6V DeepMind AI Learns Simple Physics Like a Baby

DeepMind AI Learns Simple Physics Like a Baby

by
hubie
from SoylentNews on (#61Q6V)

upstart writes:

Even young babies are aware of the basic physics of everyday objects:

Inspired by research into how infants learn, computer scientists have created a program that can pick up simple physical rules about the behaviour of objects - and express surprise when they seem to violate those rules. The results were published on 11 July in Nature Human Behaviour.

Developmental psychologists test how babies understand the motion of objects by tracking their gaze. When shown a video of, for example, a ball that suddenly disappears, the children express surprise, which researchers quantify by measuring how long the infants stare in a particular direction.

Luis Piloto, a computer scientist at Google-owned company DeepMind in London, and his collaborators wanted to develop a similar test for artificial intelligence (AI). The team trained a neural network - a software system that learns by spotting patterns in large amounts of data - with animated videos of simple objects such as cubes and balls.

[...] Developmental psychologists test how babies understand the motion of objects by tracking their gaze. When shown a video of, for example, a ball that suddenly disappears, the children express surprise, which researchers quantify by measuring how long the infants stare in a particular direction.

Luis Piloto, a computer scientist at Google-owned company DeepMind in London, and his collaborators wanted to develop a similar test for artificial intelligence (AI). The team trained a neural network - a software system that learns by spotting patterns in large amounts of data - with animated videos of simple objects such as cubes and balls.

Journal Reference:
Piloto, Luis S., Weinstein, Ari, Battaglia, Peter, et al. Intuitive physics learning in a deep-learning model inspired by developmental psychology [open], Nature Human Behaviour (DOI: 10.1038/s41562-022-01394-8)

Original Submission

Read more of this story at SoylentNews.

External Content
Source RSS or Atom Feed
Feed Location https://soylentnews.org/index.rss
Feed Title SoylentNews
Feed Link https://soylentnews.org/
Feed Copyright Copyright 2014, SoylentNews
Reply 0 comments