AbstractsComputer Science

Autonomously Learning About Meaningful Actions from Exploratory Behaviour

by Heidi Newton




Institution: Victoria University of Wellington
Department:
Year: 2015
Keywords: Artificial intelligence; Machine learning; Autonomous agents
Record ID: 1303040
Full text PDF: http://hdl.handle.net/10063/4270


Abstract

The thesis addresses the problem of creating an autonomous agent that is able to learn about and use meaningful hand motor actions in a simulated world with realistic physics, in a similar way to human infants learning to control their hand. A recent thesis by Mugan presented one approach to this problem using qualitative representations, but suffered from several important limitations. This thesis presents an alternative design that breaks the learning problem down into several distinct learning tasks. It presents a new method for learning rules about actions based on the Apriori algorithm. It also presents a planner inspired by infants that can use these rules to solve a range of tasks. Experiments showed that the agent was able to learn meaningful rules and was then able to successfully use them to achieve a range of simple planning tasks.