04213nam 22006495 450 991098306080332120250217115400.09783031747625303174762310.1007/978-3-031-74762-5(CKB)37627721600041(MiAaPQ)EBC31910921(Au-PeEL)EBL31910921(DE-He213)978-3-031-74762-5(OCoLC)1503844525(EXLCZ)993762772160004120250217d2025 u| 0engur|||||||||||txtrdacontentcrdamediacrrdacarrierMulti-valued Logic for Decision-Making Under Uncertainty /by Evgeny Kagan, Alexander Rybalov, Ronald Yager1st ed. 2025.Cham :Springer Nature Switzerland :Imprint: Birkhäuser,2025.1 online resource (296 pages)Computer Science Foundations and Applied Logic,2731-57629783031747618 3031747615 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.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. Dr. Evgeny Kagan is with the Faculty of Engineering, Ariel University, Israel; Dr. Alexander Rybalov is with the LAMBDA Laboratory, Tel-Aviv University, Israel; and Prof. Ronald Yager is with the Machine Learning Institute, Yona College, New York, USA.Computer Science Foundations and Applied Logic,2731-5762Computer scienceAlgebraic logicComputer scienceMathematicsMathematical statisticsComputer Science Logic and Foundations of ProgrammingAlgebraic LogicProbability and Statistics in Computer ScienceComputer science.Algebraic logic.Computer scienceMathematics.Mathematical statistics.Computer Science Logic and Foundations of Programming.Algebraic Logic.Probability and Statistics in Computer Science.004.0151Kagan Evgeny1785625Rybalov Alexander1785626Yager Ronald1785627MiAaPQMiAaPQMiAaPQBOOK9910983060803321Multi-valued Logic for Decision-Making Under Uncertainty4317147UNINA