Introduction and Assessment of the Addition of Links and Containers to
the Blackboard Architecture
- URL: http://arxiv.org/abs/2306.04289v1
- Date: Wed, 7 Jun 2023 09:41:46 GMT
- Title: Introduction and Assessment of the Addition of Links and Containers to
the Blackboard Architecture
- Authors: Jordan Milbrath, Jeremy Straub
- Abstract summary: This paper proposes and evaluates the inclusion of containers and links in the Blackboard Architecture.
These objects are designed to allow them to model organizational, physical, spatial and other relationships.
- Score: 0.0
- License: http://creativecommons.org/licenses/by-nc-nd/4.0/
- Abstract: The Blackboard Architecture provides a mechanism for storing data and logic
and using it to make decisions that impact the application environment that the
Blackboard Architecture network models. While rule-fact-action networks can
represent numerous types of data, the relationships that can be easily modeled
are limited by the propositional logic nature of the rule-fact network
structure. This paper proposes and evaluates the inclusion of containers and
links in the Blackboard Architecture. These objects are designed to allow them
to model organizational, physical, spatial and other relationships that cannot
be readily or efficiently implemented as Boolean logic rules. Containers group
related facts together and can be nested to implement complex relationships.
Links interconnect containers that have a relationship that is relevant to
their organizational purpose. Both objects, together, facilitate new ways of
using the Blackboard Architecture and enable or simply its use for complex
tasks that have multiple types of relationships that need to be considered
during operations.
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