Preference Inference involves inferring additional user preferences from elicited or observed preferences, based on assumptions regarding the form of the user's preference relation. In this paper we consider a situation in which alternatives have an associated vector of costs, each component corresponding to a different criterion, and are compared using a kind of lexicographic order, similar to the way alternatives are compared in a Hierarchical Constraint Logic Programming model. It is assumed that the user has some (unknown) importance ordering on criteria, and that to compare two alternatives, firstly, the combined cost of each alternative with respect to the most important criteria are compared; only if these combined costs are equal, a...
If a decision maker prefers x to y to z, would he choose orderd set [x;z] or [y;x]? This article stu...
User-defined preferences allow personalized ranking of query results. A user provides a declarative ...
We consider the problem of learning a user's ordinal preferences on a multiattribute domain, assumin...
Preference Inference involves inferring additional user preferences from elicited or observed prefer...
In this paper, we construct and compare algorithmic approaches to solve the Preference Consistency P...
A basic task in preference reasoning is inferring a preference between a pair of outcomes (alternati...
In this paper, we consider Preference Inference based on a generalised form of Pareto order. Prefere...
With personalisation becoming more prevalent, it can often be useful to be able to infer additional ...
We analyse preference inference, through consistency, for general preference languages based on lexi...
A fundamental task for reasoning with preferences is the following: given input preference informati...
International audienceThis paper considers the task of learning users' preferences on a combinatoria...
Preferences play a crucial part in decision making. When supporting a user in making a decision, it ...
Well-behaved preferences (e.g., total pre-orders) are a cornerstone of several areas in artificial i...
In this thesis we present a theory for learning and inference of user preferences with a novel hier...
The fundamental operation of dominance testing, i.e., determining if one alternative is preferred to...
If a decision maker prefers x to y to z, would he choose orderd set [x;z] or [y;x]? This article stu...
User-defined preferences allow personalized ranking of query results. A user provides a declarative ...
We consider the problem of learning a user's ordinal preferences on a multiattribute domain, assumin...
Preference Inference involves inferring additional user preferences from elicited or observed prefer...
In this paper, we construct and compare algorithmic approaches to solve the Preference Consistency P...
A basic task in preference reasoning is inferring a preference between a pair of outcomes (alternati...
In this paper, we consider Preference Inference based on a generalised form of Pareto order. Prefere...
With personalisation becoming more prevalent, it can often be useful to be able to infer additional ...
We analyse preference inference, through consistency, for general preference languages based on lexi...
A fundamental task for reasoning with preferences is the following: given input preference informati...
International audienceThis paper considers the task of learning users' preferences on a combinatoria...
Preferences play a crucial part in decision making. When supporting a user in making a decision, it ...
Well-behaved preferences (e.g., total pre-orders) are a cornerstone of several areas in artificial i...
In this thesis we present a theory for learning and inference of user preferences with a novel hier...
The fundamental operation of dominance testing, i.e., determining if one alternative is preferred to...
If a decision maker prefers x to y to z, would he choose orderd set [x;z] or [y;x]? This article stu...
User-defined preferences allow personalized ranking of query results. A user provides a declarative ...
We consider the problem of learning a user's ordinal preferences on a multiattribute domain, assumin...