In Learning with Label Proportions (LLP), the objective is to learn a supervised classifier when, instead of labels, only label proportions for bags of observations are known. This setting has broad practical relevance, in particular for privacy preserving data processing. We first show that the mean operator, a statistic which aggregates all labels, is minimally sufficient for the minimization of many proper scoring losses with linear (or kernelized) classifiers without using labels. We pro-vide a fast learning algorithm that estimates the mean operator via a manifold regularizer with guaranteed approximation bounds. Then, we present an itera-tive learning algorithm that uses this as initialization. We ground this algorithm in Rademacher-s...
We analyze the local Rademacher complexity of empirical risk minimization-based multi-label learning...
We apply Privacy-preserving data mining standards (PPDM) to the Learning from label proportion (LLP)...
13 pages, 7 figures. Submitted for publicationThis paper investigates, from information theoretic gr...
Learning from label proportions (LLP) is a weakly supervised classification problem where data point...
We present one of the preliminary NLP works under the challenging setup of Learning from Label Propo...
Learning a classifier when only knowing the features and marginal distribution of class labels in ea...
The multi-label classification problem has generated significant interest in recent years. However, ...
The multi-label classification problem has gen-erated significant interest in recent years. How-ever...
We study the problem of learning with la-bel proportions in which the training data is provided in g...
Consider the following problem: given sets of unlabeled observations, each set with known label prop...
The multi-label classification problem has gen-erated significant interest in recent years. How-ever...
In learning from label proportions (LLP), the instances are grouped into bags, and the task is to le...
In many real-world classification problems, the labels of training examples are randomly corrupted. ...
As a novel learning paradigm, label distribution learning (LDL) explicitly models label ambiguity wi...
Learning a classifier when only knowing about the features and marginal distribution of class labels...
We analyze the local Rademacher complexity of empirical risk minimization-based multi-label learning...
We apply Privacy-preserving data mining standards (PPDM) to the Learning from label proportion (LLP)...
13 pages, 7 figures. Submitted for publicationThis paper investigates, from information theoretic gr...
Learning from label proportions (LLP) is a weakly supervised classification problem where data point...
We present one of the preliminary NLP works under the challenging setup of Learning from Label Propo...
Learning a classifier when only knowing the features and marginal distribution of class labels in ea...
The multi-label classification problem has generated significant interest in recent years. However, ...
The multi-label classification problem has gen-erated significant interest in recent years. How-ever...
We study the problem of learning with la-bel proportions in which the training data is provided in g...
Consider the following problem: given sets of unlabeled observations, each set with known label prop...
The multi-label classification problem has gen-erated significant interest in recent years. How-ever...
In learning from label proportions (LLP), the instances are grouped into bags, and the task is to le...
In many real-world classification problems, the labels of training examples are randomly corrupted. ...
As a novel learning paradigm, label distribution learning (LDL) explicitly models label ambiguity wi...
Learning a classifier when only knowing about the features and marginal distribution of class labels...
We analyze the local Rademacher complexity of empirical risk minimization-based multi-label learning...
We apply Privacy-preserving data mining standards (PPDM) to the Learning from label proportion (LLP)...
13 pages, 7 figures. Submitted for publicationThis paper investigates, from information theoretic gr...