The accuracy of information retrieval systems is often measured using complex loss functions such as the average precision (AP) or the normalized discounted cumulative gain (NDCG). Given a set of positive and negative samples, the parameters of a retrieval system can be estimated by minimizing these loss functions. However, the non-differentiability and non-decomposability of these loss functions does not allow for simple gradient based optimization algorithms. This issue is generally circumvented by either optimizing a structured hinge-loss upper bound to the loss function or by using asymptotic methods like the direct-loss minimization framework. Yet, the high computational complexity of loss-augmented inference, which is necessary for bo...
In the past decade, neural networks have demonstrated impressive performance in supervised learning....
Many machine learning technologies such as Support Vector Machines, Boosting, and Neural Networks ha...
Loss functions play a key role in machine learning optimization problems. Even with their widespread...
The accuracy of information retrieval systems is often measured using complex loss functions such as...
Learning to rank is an important area at the interface of machine learning, information retrieval an...
International audienceThe accuracy of information retrieval systems is often measured using average ...
The accuracy of information retrieval systems is often measured using average precision (AP). Given ...
Learning to rank from relevance judgment is an active research area. Itemwise score regression, pair...
Modern applications in sensitive domains such as biometrics and medicine frequently require the use ...
Modern applications in sensitive domains such as biometrics and medicine frequently require the use ...
Learning to rank from relevance judgment is an active research area. Itemwise score regression, pair...
International audienceIn image retrieval, standard evaluation metrics rely on score ranking, e.g. av...
We present a general boosting method extending functional gradient boosting to optimize complex loss...
We consider two broad families of non-additive loss functions covering a large number of application...
Learning to rank has become an important research topic in machine learning. While most learning-to-...
In the past decade, neural networks have demonstrated impressive performance in supervised learning....
Many machine learning technologies such as Support Vector Machines, Boosting, and Neural Networks ha...
Loss functions play a key role in machine learning optimization problems. Even with their widespread...
The accuracy of information retrieval systems is often measured using complex loss functions such as...
Learning to rank is an important area at the interface of machine learning, information retrieval an...
International audienceThe accuracy of information retrieval systems is often measured using average ...
The accuracy of information retrieval systems is often measured using average precision (AP). Given ...
Learning to rank from relevance judgment is an active research area. Itemwise score regression, pair...
Modern applications in sensitive domains such as biometrics and medicine frequently require the use ...
Modern applications in sensitive domains such as biometrics and medicine frequently require the use ...
Learning to rank from relevance judgment is an active research area. Itemwise score regression, pair...
International audienceIn image retrieval, standard evaluation metrics rely on score ranking, e.g. av...
We present a general boosting method extending functional gradient boosting to optimize complex loss...
We consider two broad families of non-additive loss functions covering a large number of application...
Learning to rank has become an important research topic in machine learning. While most learning-to-...
In the past decade, neural networks have demonstrated impressive performance in supervised learning....
Many machine learning technologies such as Support Vector Machines, Boosting, and Neural Networks ha...
Loss functions play a key role in machine learning optimization problems. Even with their widespread...