Adapting A Vector-Symbolic Memory for Lisp ACT-R
Meera Ray, Christopher L. Dancy

TL;DR
This paper presents an adaptation of holographic declarative memory (HDM) for Lisp ACT-R, enabling vector-based memory operations and retrieval in ACT-R models, with promising preliminary results and future development plans.
Contribution
It introduces a novel adaptation of HDM for Lisp ACT-R, allowing existing models to utilize vector-symbolic memory with minimal modifications.
Findings
Enables chunk recall without storing actual chunks
Maintains scalability and similarity advantages of HDM
Allows integration with existing ACT-R models
Abstract
Holographic Declarative Memory (HDM) is a vector-symbolic alternative to ACT-R's Declarative Memory (DM) system that can bring advantages such as scalability and architecturally defined similarity between DM chunks. We adapted HDM to work with the most comprehensive and widely-used implementation of ACT-R (Lisp ACT-R) so extant ACT-R models designed with DM can be run with HDM without major changes. With this adaptation of HDM, we have developed vector-based versions of common ACT-R functions, set up a text processing pipeline to add the contents of large documents to ACT-R memory, and most significantly created a useful and novel mechanism to retrieve an entire chunk of memory based on a request using only vector representations of tokens. Preliminary results indicate that we can maintain vector-symbolic advantages of HDM (e.g., chunk recall without storing the actual chunk and other…
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Taxonomy
TopicsFerroelectric and Negative Capacitance Devices · Photorefractive and Nonlinear Optics · Handwritten Text Recognition Techniques
