tr-2000-68-abs.pdf (112.54 kB)
A temporal reinforcement learning architecture for problems with hidden-state
reportposted on 2022-08-31, 02:20 authored by M W Mitchell
This report describes the method of constructing temporal representations for hidden-state problems in TRACA (Temporal Reinforcement Learning and Classification Architecture). The hidden-state problem is described followed by a description of the structures TRACA develops for a sample letter prediction problem. The sample prediction problem is sufficient to demonstrate TRACAs ability to represent problems with hidden-state. The development of TRACA's representational structures is presented step-by-step followed by an explanation of the final actual results produced by TRACA for the sample problem.