Multi-valued Logic for Decision-Making Under Uncertainty

; ;

216,98 €
206,13 €
AGGIUNGI AL CARRELLO
TRAMA
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: Bridges the gap between fuzzy and probability methods Includes examples in the field of machine-learning and robots’ control Defines formal models of subjective judgements and decision-making Presents practical techniques for solving non-probabilistic decision-making problems 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.

SOMMARIO
1. Introduction.- 2. Background.- 3. Probability-generated multi-valued logic.- 4. Muli-valued logic algebra of subjective trusts.- 5. Algebra with non-commutative norms.- 6. Implementation of subjective trusts in control.

AUTORE
Dr. Evgeny Kagan is with the Faculty of Engineering, Ariel University, Israel. Dr. Alexander Rybalov is with the LAMBDA Laboratory, Tel-Aviv University, Israel. Prof. Ronald Yager is with the Machine Learning Institute, Yona College, New York, USA.

ALTRE INFORMAZIONI
  • Condizione: Nuovo
  • ISBN: 9783031747618
  • Collana: Computer Science Foundations and Applied Logic
  • Dimensioni: 235 x 155 mm
  • Formato: Copertina rigida
  • Illustration Notes: VIII, 194 p. 61 illus., 1 illus. in color.
  • Pagine Arabe: 194
  • Pagine Romane: viii