One approach to preference learning, based on linear support vector machines, involves choosing a weight vector whose associated hyperplane has maximum margin with respect to an input set of preference vectors, and using this to compare feature vectors. However, as is well known, the result can be sensitive to how each feature is scaled, so that rescaling can lead to an essentially different vector. This gives rise to a set of possible weight vectorsâ which we call the rescale-optimal onesâ considering all possible rescalings. From this set one can define a more cautious preference relation, in which one vector is preferred to another if it is preferred for all rescale-optimal weight vectors. In this paper, we analyse which vectors are r...
Abstract. Situations when only a limited amount of labeled data and a large amount of unlabeled data...
We consider scalarization issues for vector problems in the case where the preference relation is re...
Preference learning (PL) plays an important role in machine learning research and practice. PL works...
One approach to preference learning, based on linear support vector machines, involves choosing a we...
In a decision-making problem, where we need to choose a particular decision from a set of possible c...
In the task of preference learning, there can be natural invariance properties that one might often ...
One natural way to express preferences over items is to represent them in the form of pairwise compa...
Learning of preference relations has recently received significant attention in machine learning com...
Abstract. A relaxed setting for Feature Selection is known as Feature Ranking in Machine Learning. T...
The mathematical representation of human preferences has been a subject of study for researchers in ...
Learning preferences between objects constitutes a challenging task that notably differs from standa...
Abstract. A formal model of machine learning by considering user preference of attributes is propose...
With personalisation becoming more prevalent, it can often be useful to be able to infer additional ...
In this paper we investigate the problem of learning a preference relation from a given set of ranke...
Modelling and reasoning about preference is necessary for applications such as recommendation and de...
Abstract. Situations when only a limited amount of labeled data and a large amount of unlabeled data...
We consider scalarization issues for vector problems in the case where the preference relation is re...
Preference learning (PL) plays an important role in machine learning research and practice. PL works...
One approach to preference learning, based on linear support vector machines, involves choosing a we...
In a decision-making problem, where we need to choose a particular decision from a set of possible c...
In the task of preference learning, there can be natural invariance properties that one might often ...
One natural way to express preferences over items is to represent them in the form of pairwise compa...
Learning of preference relations has recently received significant attention in machine learning com...
Abstract. A relaxed setting for Feature Selection is known as Feature Ranking in Machine Learning. T...
The mathematical representation of human preferences has been a subject of study for researchers in ...
Learning preferences between objects constitutes a challenging task that notably differs from standa...
Abstract. A formal model of machine learning by considering user preference of attributes is propose...
With personalisation becoming more prevalent, it can often be useful to be able to infer additional ...
In this paper we investigate the problem of learning a preference relation from a given set of ranke...
Modelling and reasoning about preference is necessary for applications such as recommendation and de...
Abstract. Situations when only a limited amount of labeled data and a large amount of unlabeled data...
We consider scalarization issues for vector problems in the case where the preference relation is re...
Preference learning (PL) plays an important role in machine learning research and practice. PL works...