Interactive evolutionary computation for analyzing human characteristics

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Reference

Hideyuki Takagi: Interactive evolutionary computation for analyzing human characteristics. Symposium on Emergent Trends in Artificial Intelligence & Robotics, (SETINAIR2013), Kosice, Slovakia, (Sept. 15-17, 2013).

DOI

http://dx.doi.org/10.1155/2012/694836

Abstract

We discuss the importance of establishing awareness science and show the idea of using interactive evolutionary computation (IEC) as a tool for analyzing awareness mechanism and making awareness models. First, we describe the importance of human factors in computational intelligence and that IEC is one of approaches for the so-called humanized computational intelligence. Second, we show examples that IEC is used as an analysis tool for human science. As analyzing human awareness mechanism is in this kind of analyzing human characteristics and capabilities, IEC may be able to be used for this purpose. Based on this expectation, we express one idea for analyzing the awareness mechanism. This idea is to make an equivalent model of an IEC user using a learning model and find latent variables that connect inputs and outputs of the user model and that help to understand or explain the inputs-outputs relationship. Although there must be several definitions of awareness, this idea is based on one definition that awareness is to find out unknown variables that helps our understanding. If we establish a method for finding the latent variables automatically, we can realize an awareness model in computer.

Extended Abstract

Bibtex

Used References

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