We consider soft constraint problems where some of the preferences may be unspecified. This models, for example, situations with several agents providing the data, or with possible privacy issues. In this context, we study how to find an optimal solution without having to wait for all the preferences. In particular, we define an algorithm to find a solution which is necessarily optimal, that is, optimal no matter what the missing data will be, with the aim to ask the user to reveal as few preferences as possible. Experimental results show that in many cases a necessarily optimal solution can be found without eliciting too many preferences
are “hard ” in the sense that we need to satisfy them all. In many practical situations, however, co...
Preferences and uncertainty are common in many real-life problems. In this article, we consider pref...
We propose new methods of preference elicitation for constraint-based optimization problems based on...
Abstract. We consider soft constraint problems where some of the preferences may be unspecified. Thi...
AbstractWe consider soft constraint problems where some of the preferences may be unspecified. This ...
We consider soft constraint problems where some of the preferences may be unspecified. This models, ...
Fuzzy constraints are a popular approach to handle prefer-ences and over-constrained problems. We co...
Fuzzy constraints are a popular approach to handle preferences and over-constrained problems in sce...
We define interval-valued soft constraints, where users can associate an interval of preference valu...
We review constraint-based approaches to handle preferences. We start by defining the main notions o...
In traditional constraint satisfaction, constraints are ``hard\u27\u27 in the sense that we need to ...
Constraints and quantitative preferences, or costs, are very useful for modelling many real-life pro...
Abstract. We present a novel approach to deal with preferences expressed as a mixture of hard constr...
Constraints and quantitative preferences, or costs, are very useful for modelling many real-life pr...
Keywords:Constraint programming, preferences, uncertainty, possibility theory. Preferences and uncer...
are “hard ” in the sense that we need to satisfy them all. In many practical situations, however, co...
Preferences and uncertainty are common in many real-life problems. In this article, we consider pref...
We propose new methods of preference elicitation for constraint-based optimization problems based on...
Abstract. We consider soft constraint problems where some of the preferences may be unspecified. Thi...
AbstractWe consider soft constraint problems where some of the preferences may be unspecified. This ...
We consider soft constraint problems where some of the preferences may be unspecified. This models, ...
Fuzzy constraints are a popular approach to handle prefer-ences and over-constrained problems. We co...
Fuzzy constraints are a popular approach to handle preferences and over-constrained problems in sce...
We define interval-valued soft constraints, where users can associate an interval of preference valu...
We review constraint-based approaches to handle preferences. We start by defining the main notions o...
In traditional constraint satisfaction, constraints are ``hard\u27\u27 in the sense that we need to ...
Constraints and quantitative preferences, or costs, are very useful for modelling many real-life pro...
Abstract. We present a novel approach to deal with preferences expressed as a mixture of hard constr...
Constraints and quantitative preferences, or costs, are very useful for modelling many real-life pr...
Keywords:Constraint programming, preferences, uncertainty, possibility theory. Preferences and uncer...
are “hard ” in the sense that we need to satisfy them all. In many practical situations, however, co...
Preferences and uncertainty are common in many real-life problems. In this article, we consider pref...
We propose new methods of preference elicitation for constraint-based optimization problems based on...