OrgAhead: A Computational Model of Organizational Learning and Decision Making [Version 2.1.5]
Abstract
OrgAhead is a computational model of organizational learning and decision-making. The simulated organization consists of agents whose communication structure resembles hierarchies and whose primary goals are to learn the correct decision or answer to one or more tasks, or objective functions (e.g. typically the majority classification task); we refer to these task functions as the task environment. The organization also seeks to adapt to an optimal structure under the specified, and possibly changing, task environment, by admitting changes in the form of turnover and reassignment of personnel and tasks. OrgAhead can be used to test various aspects of real life organizations, such as complexity in the task environment and constraints on structure and adaptability, under the intellective paradigm of simulation models. An intellective model contains analogous entities, constructs, and complexities of the modeled organizations rather than mimicking each specific behavior.
Document Details
- Document Type
- Technical Report
- Publication Date
- Dec 01, 2004
- Accession Number
- ADA511643
Entities
People
- Ju-sung Lee
- Kathleen Carley
Organizations
- Carnegie Mellon University