Most of reasoning for decision making in daily life is based on preferences. As other kinds of reasoning processes, there are many formalisms trying to capture preferences, however none of them is able to capture all the subtleties of the human reasoning. In this paper we analyze how to formalize the preferences expressed by humans and how to reason with them to produce rankings. Particularly, we show that qualitative preferences are best represented with a combination of reward logics and conditional logics. We propose a new algorithm based on ideas of similarity between objects commonly used in case-based reasoning. We see that the new approach produces rankings close to the ones expressed by users. © 2016 Elsevier B.V.This research is pa...
In the context of practical reasoning, such as decision making and negotiation, it is necessary to m...
Learning of preference relations has recently received significant attention in machine learning com...
Preference learning (PL) plays an important role in machine learning research and practice. PL works...
Preferences are part of every day life driving to choice and action. We consider that there is a gap...
International audienceQualitative and comparative preference statements of the form “prefer α to β” ...
This paper provides the reader with a presentation of preference modelling fundamental notions aswel...
Modelling and reasoning about preference is necessary for applications such as recommendation and de...
It is a truth universally acknowledged that e-commerce platform users in search of an item that best...
International audiencePreferences are useful in many real-life problems, guiding human decision maki...
The research reported on in this thesis is part of a larger research project that aims to develop a ...
Abstract. In this paper we develop a language for representing complex qualitative preferences among...
Case-based reasoning (CBR) is a well-established problem solving paradigm that has been used in a w...
■ I consider how to represent and reason with users ’ preferences. While areas of economics like soc...
The tutorial aims at introducing the general field that deals with techniques for representing, lear...
This paper makes a first step toward the integration of two subfields of machine learning, namely pr...
In the context of practical reasoning, such as decision making and negotiation, it is necessary to m...
Learning of preference relations has recently received significant attention in machine learning com...
Preference learning (PL) plays an important role in machine learning research and practice. PL works...
Preferences are part of every day life driving to choice and action. We consider that there is a gap...
International audienceQualitative and comparative preference statements of the form “prefer α to β” ...
This paper provides the reader with a presentation of preference modelling fundamental notions aswel...
Modelling and reasoning about preference is necessary for applications such as recommendation and de...
It is a truth universally acknowledged that e-commerce platform users in search of an item that best...
International audiencePreferences are useful in many real-life problems, guiding human decision maki...
The research reported on in this thesis is part of a larger research project that aims to develop a ...
Abstract. In this paper we develop a language for representing complex qualitative preferences among...
Case-based reasoning (CBR) is a well-established problem solving paradigm that has been used in a w...
■ I consider how to represent and reason with users ’ preferences. While areas of economics like soc...
The tutorial aims at introducing the general field that deals with techniques for representing, lear...
This paper makes a first step toward the integration of two subfields of machine learning, namely pr...
In the context of practical reasoning, such as decision making and negotiation, it is necessary to m...
Learning of preference relations has recently received significant attention in machine learning com...
Preference learning (PL) plays an important role in machine learning research and practice. PL works...