Cognitive Artificial Intelligence Using Bayesian Computing Based on Hybrid Monte Carlo Algorithm
Sangsung Park,Sung-Hee Jun +1 more
TL;DR: This paper proposes a method to build CAI and uses Bayesian inference and computing based on the hybrid Monte Carlo algorithm for CAI development and creates an experiment to show how the proposed method can be applied to practical problems.
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Abstract: Cognitive artificial intelligence (CAI) is an intelligent machine that thinks and behaves similar to humans. CAI also has an ability to mimic human emotions. With the development of AI in various fields, the interest and demand for CAI are continuously increasing. Most of the current AI research focuses on the realization of intelligence that can make optimal decisions. Existing AI studies have not conducted in-depth research on human emotions and cognitive perspectives. However, in the future, the demand for the use of AI that can imitate human emotions in various fields, such as healthcare and education, will continue. Therefore, we propose a method to build CAI in this paper. We also use Bayesian inference and computing based on the hybrid Monte Carlo algorithm for CAI development. To show how the proposed method for CAI can be applied to practical problems, we create an experiment using simulation data.
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