AbstractStatistical Reasoning is affected by various sources of Uncertainty: randomness, imprecision, vagueness, partial ignorance, etc. Traditional statistical paradigms (such as Statistical Inference, Exploratory Data Analysis, Statistical Learning) are not capable to account for the complex action of Uncertainty in real life applications of Statistical Reasoning. A conceptual framework, called “Informational Paradigm”, is introduced in order to analyze the role of Information and Uncertainty in these complex contexts. Regression Analysis is taken as the reference problem for developing the discussion. Three basic sources of Uncertainty are considered in this respect: (1) uncertainty about the relationship between response and explanatory...
This book provides a multi-level introduction to Bayesian reasoning (as opposed to "conventional sta...
Dealing with Uncertainties proposes and explains a new approach for the analysis of uncertainties. F...
In decision and risk analysis problems, modelling uncertainty probabilistically provides key insight...
AbstractStatistical Reasoning is affected by various sources of Uncertainty: randomness, imprecision...
peer-reviewedIncreasingly we rely on machine intelligence for reasoning and decision making under un...
Inference under uncertainty plays a crucial role in expert system and receives growing attention fro...
The uncertainty of probabilistic evaluations results from the lack of sufficient information and/or ...
Much of the research done in Artificial Intelligence involves investigating and developing methods o...
Uncertainty is not a new issue in decision making. A wrong decision made of a lack of certainty is e...
Updating beliefs to maintain coherence with observational evidence is a cornerstone of rationality. ...
The contribution proposes to model imprecise and uncertain reasoning by a mental probability logic t...
The contribution proposes to model imprecise and uncertain reasoning by a mental probability logic t...
We review recent advances in the field of decision making under uncertainty or ambiguity.Ambiguity ;...
The aim of this paper is to provide a conceptual basis for the systematic treatment of uncertainty i...
This book presents a philosophical approach to probability and probabilistic thinking, considering t...
This book provides a multi-level introduction to Bayesian reasoning (as opposed to "conventional sta...
Dealing with Uncertainties proposes and explains a new approach for the analysis of uncertainties. F...
In decision and risk analysis problems, modelling uncertainty probabilistically provides key insight...
AbstractStatistical Reasoning is affected by various sources of Uncertainty: randomness, imprecision...
peer-reviewedIncreasingly we rely on machine intelligence for reasoning and decision making under un...
Inference under uncertainty plays a crucial role in expert system and receives growing attention fro...
The uncertainty of probabilistic evaluations results from the lack of sufficient information and/or ...
Much of the research done in Artificial Intelligence involves investigating and developing methods o...
Uncertainty is not a new issue in decision making. A wrong decision made of a lack of certainty is e...
Updating beliefs to maintain coherence with observational evidence is a cornerstone of rationality. ...
The contribution proposes to model imprecise and uncertain reasoning by a mental probability logic t...
The contribution proposes to model imprecise and uncertain reasoning by a mental probability logic t...
We review recent advances in the field of decision making under uncertainty or ambiguity.Ambiguity ;...
The aim of this paper is to provide a conceptual basis for the systematic treatment of uncertainty i...
This book presents a philosophical approach to probability and probabilistic thinking, considering t...
This book provides a multi-level introduction to Bayesian reasoning (as opposed to "conventional sta...
Dealing with Uncertainties proposes and explains a new approach for the analysis of uncertainties. F...
In decision and risk analysis problems, modelling uncertainty probabilistically provides key insight...