Human interaction with the world is dominated by uncertainty. Probability theory is a valuable tool to face such uncertainty. According to the Bayesian definition, probabilities are personal beliefs. Experimental evidence supports the notion that human behavior is highly consistent with Bayesian probabilistic inference in both the sensory and motor and cognitive domain. All the higher-level psychophysical functions of our brain are believed to take the activities of interconnected and distributed networks of neurons in the neocortex as their physiological substrate. Neurons in the neocortex are organized in cortical columns that behave as fuzzy sets. Fuzzy sets theory has embraced uncertainty modeling when membership functions have been rei...
summary:A degree of probabilistic dependence is introduced in the classical logic using the Frank f...
In this paper, quantum logic is contrasted with both classical and fuzzy logics in order to highligh...
Item does not contain fulltextThis chapter provides an introduction to Bayesian models and their app...
Probabilistic graphical models such as Bayesian Networks are one of the most power-ful structures kn...
Probabilistic graphical models such as Bayesian Networks are one of the most powerful structures kno...
It has been proposed that the general function of the brain is inference, which corresponds quantita...
A new trend taking shape in psychological science not only uses quantum physics to explain humans &a...
What type of probability theory best describes the way humans make judgments under uncertainty and d...
Computational intelligence algorithms are currently capable of dealing with simple cognitive process...
A quantum probability model is introduced and used to explain human probability judgment errors incl...
Uncertainties enter into a complex problem from many sources: variability, errors, and lack of knowl...
Probability theory and fuzzy logic have been presented as quite distinct theoretical foundations for...
Empirical findings from cognitive psychology indicate that, in scenarios under high levels of uncert...
In this review we consider how Bayesian logic can help neuroscientists to understand behaviour and b...
Free to read on publisher website We propose a new quantum Bayesian Network model in order to comput...
summary:A degree of probabilistic dependence is introduced in the classical logic using the Frank f...
In this paper, quantum logic is contrasted with both classical and fuzzy logics in order to highligh...
Item does not contain fulltextThis chapter provides an introduction to Bayesian models and their app...
Probabilistic graphical models such as Bayesian Networks are one of the most power-ful structures kn...
Probabilistic graphical models such as Bayesian Networks are one of the most powerful structures kno...
It has been proposed that the general function of the brain is inference, which corresponds quantita...
A new trend taking shape in psychological science not only uses quantum physics to explain humans &a...
What type of probability theory best describes the way humans make judgments under uncertainty and d...
Computational intelligence algorithms are currently capable of dealing with simple cognitive process...
A quantum probability model is introduced and used to explain human probability judgment errors incl...
Uncertainties enter into a complex problem from many sources: variability, errors, and lack of knowl...
Probability theory and fuzzy logic have been presented as quite distinct theoretical foundations for...
Empirical findings from cognitive psychology indicate that, in scenarios under high levels of uncert...
In this review we consider how Bayesian logic can help neuroscientists to understand behaviour and b...
Free to read on publisher website We propose a new quantum Bayesian Network model in order to comput...
summary:A degree of probabilistic dependence is introduced in the classical logic using the Frank f...
In this paper, quantum logic is contrasted with both classical and fuzzy logics in order to highligh...
Item does not contain fulltextThis chapter provides an introduction to Bayesian models and their app...