A Universal Unbiased Method for Classification from Aggregate Observations

06/20/2023
by   Zixi Wei, et al.
0

In conventional supervised classification, true labels are required for individual instances. However, it could be prohibitive to collect the true labels for individual instances, due to privacy concerns or unaffordable annotation costs. This motivates the study on classification from aggregate observations (CFAO), where the supervision is provided to groups of instances, instead of individual instances. CFAO is a generalized learning framework that contains various learning problems, such as multiple-instance learning and learning from label proportions. The goal of this paper is to present a novel universal method of CFAO, which holds an unbiased estimator of the classification risk for arbitrary losses – previous research failed to achieve this goal. Practically, our method works by weighing the importance of each label for each instance in the group, which provides purified supervision for the classifier to learn. Theoretically, our proposed method not only guarantees the risk consistency due to the unbiased risk estimator but also can be compatible with arbitrary losses. Extensive experiments on various problems of CFAO demonstrate the superiority of our proposed method.

READ FULL TEXT
research
12/30/2019

Learning from Multiple Complementary Labels

Complementary-label learning is a new weakly-supervised learning framewo...
research
04/14/2020

Learning from Aggregate Observations

We study the problem of learning from aggregate observations where super...
research
01/13/2020

Multi-Complementary and Unlabeled Learning for Arbitrary Losses and Models

A weakly-supervised learning framework named as complementary-label lear...
research
10/10/2018

Complementary-Label Learning for Arbitrary Losses and Models

In contrast to the standard classification paradigm where the true (or p...
research
03/24/2022

Risk Consistent Multi-Class Learning from Label Proportions

This study addresses a multiclass learning from label proportions (MCLLP...
research
06/02/2022

Progressive Purification for Instance-Dependent Partial Label Learning

Partial label learning (PLL) aims to train multi-class classifiers from ...
research
05/08/2023

Q A Label Learning

Assigning labels to instances is crucial for supervised machine learning...

Please sign up or login with your details

Forgot password? Click here to reset