Scientific Features of Top Machine

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Most of the research on the relationship between Artificial Intelligence (AI) and Complexity argued the possibility and reality from a philosophical point of view. Recently A few papers popped up to explored AI Science through Complex System Theory. In fact, Dr.Bais conception of the Top Machine (TM), which was firstly proposed in his dissertation Generalized Symbolism and Knowledge Presentation of Hyper Topology Structure in 1999, may comprise the following three fundamental points. He proposed this idea, defined it, and established the Wave and High Jump Principles. This paper intended to explore the scientific features of the TM Model in relation to the three concerned points, and drew the conclusion that TM model is worth in-depth study not only because it visualized the complexity of AI Science, but also it could be an abstract conceptual model of Intelligent System (IS).

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4387-4391

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February 2014

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© 2014 Trans Tech Publications Ltd. All Rights Reserved

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