The multi-label classification problem has generated significant interest in recent years. However, existing approaches do not adequately address two key challenges: (a) the ability to tackle problems with a large number (say millions) of labels, and (b) the ability to handle data with missing labels. In this paper, we directly address both these problems by studying the multi-label problem in a generic empirical risk minimization (ERM) framework. Our framework, despite being simple, is surprisingly able to encompass several recent label-compression based methods which can be derived as special cases of our method. To optimize the ERM problem, we develop techniques that exploit the structure of specific loss functions- such as the squared l...
In Learning with Label Proportions (LLP), the objective is to learn a supervised classifier when, in...
Multi-label learning has attracted much attention during the past few years. Many multi-label learni...
We analyze the local Rademacher complexity of empirical risk minimization (ERM)-based multi-label le...
The multi-label classification problem has gen-erated significant interest in recent years. How-ever...
The multi-label classification problem has gen-erated significant interest in recent years. How-ever...
The multi-label classification problem has gen-erated significant interest in recent years. How-ever...
International audienceThe problem of multi-label classification with missing labels (MLML) is a comm...
The goal in extreme multi-label classification (XMC) is to learn a classifier which can assign a sma...
Multi-label learning deals with the classification prob-lems where each instance can be assigned wit...
Multi-label learning deals with the classification prob-lems where each instance can be assigned wit...
© 2016 ACM. Tail labels in the multi-label learning problem undermine the low-rank assumption. Never...
Many real-world applications involve multilabel classification, in which the labels can have strong ...
13 pages, 7 figures. Submitted for publicationThis paper investigates, from information theoretic gr...
Directly applying single-label classification methods to the multi-label learning problems substanti...
Existing research into online multi-label classification, such as online sequential multi-label extr...
In Learning with Label Proportions (LLP), the objective is to learn a supervised classifier when, in...
Multi-label learning has attracted much attention during the past few years. Many multi-label learni...
We analyze the local Rademacher complexity of empirical risk minimization (ERM)-based multi-label le...
The multi-label classification problem has gen-erated significant interest in recent years. How-ever...
The multi-label classification problem has gen-erated significant interest in recent years. How-ever...
The multi-label classification problem has gen-erated significant interest in recent years. How-ever...
International audienceThe problem of multi-label classification with missing labels (MLML) is a comm...
The goal in extreme multi-label classification (XMC) is to learn a classifier which can assign a sma...
Multi-label learning deals with the classification prob-lems where each instance can be assigned wit...
Multi-label learning deals with the classification prob-lems where each instance can be assigned wit...
© 2016 ACM. Tail labels in the multi-label learning problem undermine the low-rank assumption. Never...
Many real-world applications involve multilabel classification, in which the labels can have strong ...
13 pages, 7 figures. Submitted for publicationThis paper investigates, from information theoretic gr...
Directly applying single-label classification methods to the multi-label learning problems substanti...
Existing research into online multi-label classification, such as online sequential multi-label extr...
In Learning with Label Proportions (LLP), the objective is to learn a supervised classifier when, in...
Multi-label learning has attracted much attention during the past few years. Many multi-label learni...
We analyze the local Rademacher complexity of empirical risk minimization (ERM)-based multi-label le...