Advanced Artificial Intelligence by Zhongzhi Shi

By Zhongzhi Shi

Synthetic intelligence is a department of laptop technological know-how and a self-discipline within the research of laptop intelligence, that's, constructing clever machines or clever platforms imitating, extending and augmenting human intelligence via man made ability and strategies to achieve clever habit. complex synthetic Intelligence includes sixteen chapters. The content material of the booklet is novel, displays the examine updates during this box, and particularly summarizes the author's clinical efforts over decades. The ebook discusses the tools and key know-how from thought, set of rules, process and functions with regards to synthetic intelligence. This publication may be considered as a textbook for senior scholars or graduate scholars within the info box and similar tertiary specialities. it's also compatible as a reference ebook for suitable clinical and technical team of workers.

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3. Single-domain multi-paradigm intelligent system Such systems contain knowledge of only a single domain, yet process problems of multiple paradigms. Examples include compound intelligent system. Generally, knowledge can be acquired through neural network training, and then transformed into production rules to be used in problem solving by inference engines. Multiple mechanisms can be used to process a single problem in problem solving. Take an illness diagnosis system as an example, both symbolic reasoning and artificial neural networks can be used.

Efficiency of the program can be further increased if we replace P1 with the following program P2: max(X, Y, Y) :- X =< Y, !. max(X, Y, X). Logic Foundation of Artificial Intelligence 43 However, althouth the operational semantics of P2 is still the same as that of P1, the declarative semantics of P2 is changed as follows: the maximum value of X and Y is always X, it can also be Y in the case of X≤Y. Obviously, the semantics of P2 is different from our original intention. The “fail” is another predication used by Prolog.

3 SLD resolution SLD resolution is the basic inference rule used in logic programming. It is also the primary computation procedure used in PROLOG. Here the name SLD is an abbreviation of “Linear resolution with Selection function for Definite clauses”. Firstly we introduce definitions on definite clause. 3 A Definite clause is a clause of the form Logic Foundation of Artificial Intelligence 37 A :- B1,B2,…,Bn where the head is a positive literal; the body is composed of zero, one or more literals.

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