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Volume 1 | Issue 1 | Year 2023 | Article Id: AIR-V1I1P105 DOI: https://doi.org/10.59232/AIR-V1I1P105
The Six Emotional Dimension (6DE) Model: A Multidimensional Approach to Analyzing Human Emotions and Unlocking the Potential of Emotionally Intelligent Artificial Intelligence (AI) via Large Language Models (LLM)
Jeremiah Ratican, James Hutson
| Received | Revised | Accepted | Published |
|---|---|---|---|
| 02 May 2023 | 17 Jun 2023 | 30 Jun 2023 | 07 Jul 2023 |
Citation
Jeremiah Ratican, James Hutson. “The Six Emotional Dimension (6DE) Model: A Multidimensional Approach to Analyzing Human Emotions and Unlocking the Potential of Emotionally Intelligent Artificial Intelligence (AI) via Large Language Models (LLM).” DS Journal of Artificial Intelligence and Robotics, vol. 1, no. 1, pp. 44-51, 2023.
Abstract
Keywords
Brain science-inspired AI, Complex adaptive systems, Psychology-based social robotics, Conversational AI
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