International audienceIn ranking with the pairwise classification approach, the loss associated to a predicted ranked list is the mean of the pairwise classification losses. This loss is inadequate for tasks like information retrieval where we prefer ranked lists with high precision on the top of the list. We propose to optimize a larger class of loss functions for ranking, based on an ordered weighted average (OWA) (Yager, 1988) of the classification losses. Convex OWA aggregation operators range from the max to the mean depending on their weights, and can be used to focus on the top ranked elements as they give more weight to the largest losses. When aggregating hinge losses, the optimization problem is similar to the SVM for interdepende...
Learning to rank from relevance judgment is an active research area. Itemwise score regression, pair...
Structural algorithms incorporate the interdependence of outputs into the prediction, the loss, or b...
There has been much interest recently in the problem of rank aggregation from pairwise data. A natur...
The paper is concerned with learning to rank, which is to construct a model or a function for rankin...
This paper investigates the theoretical relation between loss criteria and the optimal ranking funct...
The goal in Learning to Rank (LETOR) is to learn to order a novel set of items, given training data ...
Making recommendations by learning to rank is becoming an increasingly studied area. Approaches that...
AbstractWe study the problem of label ranking, a machine learning task that consists of inducing a m...
We propose a multi-prototype-based algorithm for online learning of soft pairwise-preferences over l...
Learning to Rank is an area of application in machine learning, typically supervised, to build ranki...
Learning to rank is an important area at the interface of machine learning, information retrieval an...
Preference learning is a challenging problem that involves the prediction of complex structures, suc...
Ranking a set of retrieved documents according to their rel-evance to a given query has become a pop...
Learning to rank has become an important research topic in machine learning. While most learning-to-...
Object ranking is one of the most relevant problems in the realm of preference learning and ranking....
Learning to rank from relevance judgment is an active research area. Itemwise score regression, pair...
Structural algorithms incorporate the interdependence of outputs into the prediction, the loss, or b...
There has been much interest recently in the problem of rank aggregation from pairwise data. A natur...
The paper is concerned with learning to rank, which is to construct a model or a function for rankin...
This paper investigates the theoretical relation between loss criteria and the optimal ranking funct...
The goal in Learning to Rank (LETOR) is to learn to order a novel set of items, given training data ...
Making recommendations by learning to rank is becoming an increasingly studied area. Approaches that...
AbstractWe study the problem of label ranking, a machine learning task that consists of inducing a m...
We propose a multi-prototype-based algorithm for online learning of soft pairwise-preferences over l...
Learning to Rank is an area of application in machine learning, typically supervised, to build ranki...
Learning to rank is an important area at the interface of machine learning, information retrieval an...
Preference learning is a challenging problem that involves the prediction of complex structures, suc...
Ranking a set of retrieved documents according to their rel-evance to a given query has become a pop...
Learning to rank has become an important research topic in machine learning. While most learning-to-...
Object ranking is one of the most relevant problems in the realm of preference learning and ranking....
Learning to rank from relevance judgment is an active research area. Itemwise score regression, pair...
Structural algorithms incorporate the interdependence of outputs into the prediction, the loss, or b...
There has been much interest recently in the problem of rank aggregation from pairwise data. A natur...