Building a Cognitive Twin Using a Distributed Cognitive System and an Evolution Strategy
- URL: http://arxiv.org/abs/2502.01834v1
- Date: Mon, 03 Feb 2025 21:19:13 GMT
- Title: Building a Cognitive Twin Using a Distributed Cognitive System and an Evolution Strategy
- Authors: Wandemberg Gibaut, Ricardo Gudwin,
- Abstract summary: We show that it's possible to orchestrate many simple physical and virtual devices to achieve good approximations of a person's interaction behavior.
The generated Cognitive Twin may later be used to automate tasks, generate more realistic human-like artificial agents or further investigate its behaviors.
- Score: 0.5586073503694489
- License:
- Abstract: This work presents a technique to build interaction-based Cognitive Twins (a computational version of an external agent) using input-output training and an Evolution Strategy on top of a framework for distributed Cognitive Architectures. Here, we show that it's possible to orchestrate many simple physical and virtual devices to achieve good approximations of a person's interaction behavior by training the system in an end-to-end fashion and present performance metrics. The generated Cognitive Twin may later be used to automate tasks, generate more realistic human-like artificial agents or further investigate its behaviors.
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