Integrating Learning into Models of Human Memory: The Hebbian Recurrent Network
Nothing Special   »   [go: up one dir, main page]

Skip to main content
eScholarship
Open Access Publications from the University of California

Integrating Learning into Models of Human Memory: The Hebbian Recurrent Network

Abstract

We develop an interactive model of human mem- ory called the Hebbian Recurrent Network ( HRN ) which integrates work in the mathematical modeling of memory with that in error correcting connection- ist networks. It incorporates the Matrix Model (Pike, 1984) into the Simple Recurrent Network (SRN, El- man, 1989). The result is an architecture which has the desirable memory characteristics of the matrix model such as low interference and massive general- ization, but which is able to learn appropriate en- codings for items, decision criteria and the control functions of memory which have traditionally been chosen a priori in the mathematical memory litera- ture. Simulations demonstrate that the HRN is well suited to a recognition task inspired by typical mem- ory peiradigms. In comparison to the SRN , the HRN is able to learn longer lists, and is not degraded sig- nificantly by increasing the vocabulary size.

Main Content
For improved accessibility of PDF content, download the file to your device.
Current View