Multi-Valued Logic for Decision-Making Under Uncertainty
Synopsis
Multi-valued and fuzzy logics provide mathematical and computational tools for handling imperfect information and decision-making with rational collective reasoning and irrational individual judgements.
The suggested implementation of multi-valued logics is based on the uninorm and absorbing norm with generating functions defined by probability distributions. Natural extensions of these logics result in non-commutative and non-distributive logics. In addition to Boolean truth values, these logics handle subjective truth and false values and model irrational decisions. Dynamics of decision-making are specified by the subjective Markov process and learning - by neural network with extended Tsetlin neurons. Application of the suggested methods is illustrated by modelling of irrational economic decisions and biased reasoning in the wisdom-of-the-crowd method, and by control of mobile robots and navigation of their groups.
Topics and features:
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Bridges the gap between fuzzy and probability methods
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Includes examples in the field of machine-learning and robots' control
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Defines formal models of subjective judgements and decision-making
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Presents practical techniques for solving non-probabilistic decision-making problems
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Initiates further research in non-commutative and non-distributive logics
The book forms a basis for theoretical studies and practice of decision-making under uncertainty and will be useful for computer scientists and mathematicians interested in multi-valued and fuzzy logic, as well as for engineers working in the field of data mining and data analysis.
Publisher information
- Publisher: Springer Nature Switzerland
- ISBN: 9783031747618
- Number of pages: 194
- Dimensions: 235 x 155 x 235 mm
- Weight: 457g
- Languages: English
