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A concentrated study of these papers helps to understand that Soft Computing will be able to play a key role in the future development of science and technology.
The inference formalism is flexible and robust, and well-suited to implementation.
Therefore, complicated concepts such as human intelligence and also imagination and inference procedures may appear as natural abilities of the proposed soft computer.
Book ChapterDOI
Oleg Kiselyov, Chung-chieh Shan 
02 Jul 2009
109 Citations
Inference algorithms can easily be embedded in probabilistic programs themselves.
We argue its inclusion as a complementary tool in the arsenal of soft computing techniques.
Proceedings ArticleDOI
Swapna Singh, Ragini Karwayun 
12 Apr 2010
33 Citations
It will enable to differentiate among different types of inference engines which may be beneficial to realize the various proposed prototype systems with different ideas and views on what an inference engine for semantic web should do.
The algorithm is expected to be computationally manageable and therefore amenable to implementation in a functioning inference engine.
It is shown that it is a generalization of the concept of inference in binary logic.
There are evidences that soft computing has been able to address some of the problems associated with previous models.
MonographDOI
R. A. Aliev, Rafik A. Aliev 
01 Sep 2001
165 Citations
This book is the first to provide a systematic account of the major concepts and methodologies of soft computing, presenting a unified framework that makes the subject more accessible to students and practitioners.

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