There are many applications in which it is desirable to order rather than classify instances. Here we consider the problem of learning how to order instances given feedback in the form of preference judgments, i.e., statements to the effect that one instance should be ranked ahead of another. We outline a two-stage approach in which one first learns by conventional means a binary preference function indicating whether it is advisable to rank one instance before another. Here we consider an on-line algorithm for learning preference functions that is based on Freund and Schapire's "Hedge" algorithm. In the second stage, new instances are ordered so as to maximize agreement with the learned preference function. We show that the ...
We consider the problem of learning users' preferential orderings for a set of items when only a lim...
This paper makes a first step toward the integration of two subfields of machine learning, namely pr...
This paper makes a first step toward the integration of two subfields of machine learning, namely pr...
There are many applications in which it is desirable to order rather than classify instances. Here w...
Preference learning is a challenging problem that involves the prediction of complex structures, suc...
Learning of preference relations has recently received significant attention in machine learning com...
AbstractPreference learning is an emerging topic that appears in different guises in the recent lite...
In this paper, we give a novel theoretical analysis which explains why a setwise loss function exhib...
Abstract. We introduce a generalization of lexicographic orders and argue that this generalization c...
AbstractWe study the problem of label ranking, a machine learning task that consists of inducing a m...
Abstract. A relaxed setting for Feature Selection is known as Feature Ranking in Machine Learning. T...
Object ranking or "learning to rank" is an important problem in the realm of preference learning. On...
Relevance ranking consists in sorting a set of objects with respect to a given criterion. However, i...
In this paper we investigate the problem of learning a preference relation from a given set of ranke...
In this paper, we present a connectionist approach to preference learning. In particular, a neural n...
We consider the problem of learning users' preferential orderings for a set of items when only a lim...
This paper makes a first step toward the integration of two subfields of machine learning, namely pr...
This paper makes a first step toward the integration of two subfields of machine learning, namely pr...
There are many applications in which it is desirable to order rather than classify instances. Here w...
Preference learning is a challenging problem that involves the prediction of complex structures, suc...
Learning of preference relations has recently received significant attention in machine learning com...
AbstractPreference learning is an emerging topic that appears in different guises in the recent lite...
In this paper, we give a novel theoretical analysis which explains why a setwise loss function exhib...
Abstract. We introduce a generalization of lexicographic orders and argue that this generalization c...
AbstractWe study the problem of label ranking, a machine learning task that consists of inducing a m...
Abstract. A relaxed setting for Feature Selection is known as Feature Ranking in Machine Learning. T...
Object ranking or "learning to rank" is an important problem in the realm of preference learning. On...
Relevance ranking consists in sorting a set of objects with respect to a given criterion. However, i...
In this paper we investigate the problem of learning a preference relation from a given set of ranke...
In this paper, we present a connectionist approach to preference learning. In particular, a neural n...
We consider the problem of learning users' preferential orderings for a set of items when only a lim...
This paper makes a first step toward the integration of two subfields of machine learning, namely pr...
This paper makes a first step toward the integration of two subfields of machine learning, namely pr...