The paper presents the presumably correct decision sets as a tool to analyze uncertainty in the form of inconsistency in decision systems. As a first step, problem instances are gathered into three regions containing weak members, borderline members, and strong members. This is accomplished by using the membership degrees of instances to their neighborhoods while neglecting their actual labels. As a second step, we derive the presumably correct and incorrect sets by contrasting the decision classes determined by a neighborhood function with the actual decision classes. We extract these sets from either the regions containing strong members or the whole universe, which defines the strict andrelaxed versions of our theoretical formalism. Thes...
We present theoretical foundations and computational procedures of a theory for analysing decisions ...
Decision theory is a cornerstone of Statistics, providing a principled framework in which to act und...
Prescriptive Bayesian decision making has reached a high level of maturity and is well-supported alg...
The paper presents the presumably correct decision sets as a tool to analyze uncertainty in the form...
The paper presents the presumably correct decision sets as a tool to analyze uncertainty in the form...
The choice of implication as a representation for empirical associations and for deduction as a mode...
In this paper we consider models which are commonly proposed for decision-aid or negotiation-aid. By...
For the time when we deal with the difficulty of determining a decision attribute among several cand...
Recent advances in decision making have incorporated both risk and ambiguity in decision theory and ...
This work analyzes the problem of individual choice of actions under complete uncertainty. In this c...
Abstract. Rough sets have traditionally been applied to decision (classification) problems. We sugge...
Every day decision making and decision making in complex human-centric systems are characterized by ...
(rédaction : août 2004)Some decision problems can be formulated as sorting models which consist in a...
This paper presents a data pre-processing algorithm to tackle class imbalance in classification prob...
Using Machine Learning systems in the real world can often be problematic, with inexplicable black-b...
We present theoretical foundations and computational procedures of a theory for analysing decisions ...
Decision theory is a cornerstone of Statistics, providing a principled framework in which to act und...
Prescriptive Bayesian decision making has reached a high level of maturity and is well-supported alg...
The paper presents the presumably correct decision sets as a tool to analyze uncertainty in the form...
The paper presents the presumably correct decision sets as a tool to analyze uncertainty in the form...
The choice of implication as a representation for empirical associations and for deduction as a mode...
In this paper we consider models which are commonly proposed for decision-aid or negotiation-aid. By...
For the time when we deal with the difficulty of determining a decision attribute among several cand...
Recent advances in decision making have incorporated both risk and ambiguity in decision theory and ...
This work analyzes the problem of individual choice of actions under complete uncertainty. In this c...
Abstract. Rough sets have traditionally been applied to decision (classification) problems. We sugge...
Every day decision making and decision making in complex human-centric systems are characterized by ...
(rédaction : août 2004)Some decision problems can be formulated as sorting models which consist in a...
This paper presents a data pre-processing algorithm to tackle class imbalance in classification prob...
Using Machine Learning systems in the real world can often be problematic, with inexplicable black-b...
We present theoretical foundations and computational procedures of a theory for analysing decisions ...
Decision theory is a cornerstone of Statistics, providing a principled framework in which to act und...
Prescriptive Bayesian decision making has reached a high level of maturity and is well-supported alg...