Skip to yearly menu bar Skip to main content


Poster

Learning Partially Observable Models Using Temporally Abstract Decision Trees

Erik Talvitie

Harrah’s Special Events Center 2nd Floor

Abstract:

This paper introduces timeline trees, which are partial models of partially observable environments. Timeline trees are given some specific predictions to make and learn a decision tree over history. The main idea of timeline trees is to use temporally abstract features to identify and split on features of key events, spread arbitrarily far apart in the past (whereas previous decision-tree-based methods have been limited to a finite suffix of history). Experiments demonstrate that timeline trees can learn to make high quality predictions in complex, partially observable environments with high-dimensional observations (e.g. an arcade game).

Live content is unavailable. Log in and register to view live content