Predictive methods are becoming increasingly popular for
representing world knowledge in autonomous agents. A recently
introduced predictive method that shows particular promise is the
General Value Function (GVF), which is more flexible than previous
predictive methods and can more readily capture regularities in the
agent's sensorimotor stream. The goal of the current paper is to
investigate the ability of these GVFs (also called "forecasts") to
capture such regularities. We generate focused sets of forecasts and
measure their capacity for generalization. We then compare the
results with a closely related predictive method (PSRs) already
shown to have good generalization abilities. Our results indicate
that forecasts provide a substantial improvement in generalization,
producing features that lead to better value-function approximation
(when computed with linear function approximators) than PSRs and
better generalization to as-yet-unseen parts of the state space.
Last modified: Mon May 18 02:14:54 PDT 2015