Skip to:Content
|
Bottom
Cover image for Soft methods for integrated uncertainty modelling
Title:
Soft methods for integrated uncertainty modelling
Series:
Advances in soft computing,
Publication Information:
Berlin : Springer, 2006
ISBN:
9783540347767
General Note:
Also available online version
Added Author:
Electronic Access:
Full Text
DSP_RESTRICTION_NOTE:
Accessible within UTM campus

Available:*

Library
Item Barcode
Call Number
Material Type
Item Category 1
Status
Searching...
30000010148818 QA76.9.S63 I574 2006 Open Access Book Proceedings, Conference, Workshop etc.
Searching...

On Order

Summary

Summary

The idea of soft computing emerged in the early 1990s from the fuzzy systems c- munity, and refers to an understanding that the uncertainty, imprecision and ig- rance present in a problem should be explicitly represented and possibly even - ploited rather than either eliminated or ignored in computations. For instance, Zadeh de?ned 'Soft Computing' as follows: Soft computing differs from conventional (hard) computing in that, unlike hard computing, it is tolerant of imprecision, uncertainty and partial truth. In effect, the role model for soft computing is the human mind. Recently soft computing has, to some extent, become synonymous with a hybrid approach combining AI techniques including fuzzy systems, neural networks, and biologically inspired methods such as genetic algorithms. Here, however, we adopt a more straightforward de?nition consistent with the original concept. Hence, soft methods are understood as those uncertainty formalisms not part of mainstream s- tistics and probability theory which have typically been developed within the AI and decisionanalysiscommunity.Thesearemathematicallysounduncertaintymodelling methodologies which are complementary to conventional statistics and probability theory.


Go to:Top of Page