This paper addresses the repeated acquisition of labels for data items when the labeling is imperfect. We examine the improvement (or lack thereof) in data quality via repeated labeling, and focus especially on the improvement of training labels for supervised induction. With the outsourcing of small tasks becoming easier, for example via Amazon's Mechanical Turk, it often is possible to obtain less-than-expert labeling at low cost. With low-cost labeling, preparing the unlabeled part of the data can become considerably more expensive than labeling. We present repeated-labeling strategies of increasing complexity, and show several main results. (i) Repeated-labeling can improve label quality and model quality, but not always. (ii) When labe...
Noisy labels are an unavoidable consequence of labeling processes and detecting them is an important...
When labeling objects via Internet-based outsourcing systems, the labelers may have bias, because th...
Over the past decades, deep neural networks have achieved unprecedented success in image classificat...
This paper addresses the repeated acquisition of labels for data items when the labeling is imperfec...
This paper addresses the repeated acquisition of labels for data items when the labeling is imperfec...
This paper addresses the repeated acquisition of labels for data items when the labeling is imperfec...
Abstract This paper addresses the repeated acquisition of labels for data items when the labeling is...
One of the most popular uses of crowdsourcing is to provide training data for supervised machine lea...
Learning with noisy labels is a vital topic for practical deep learning as models should be robust t...
Multi-label learning is one of the hot problems in the field of machine learning. The deep neural ne...
Multi-label classification is crucial to several practical applications including document categoriz...
The rawly collected training data often comes with separate noisy labels collected from multiple imp...
Most studies on learning from noisy labels rely on unrealistic models of i.i.d. label noise, such as...
Creating large-scale high-quality labeled datasets is a major bottleneck in supervised machine learn...
The Problem: Learning from data with both labeled training points (x,y pairs) and unlabeled training...
Noisy labels are an unavoidable consequence of labeling processes and detecting them is an important...
When labeling objects via Internet-based outsourcing systems, the labelers may have bias, because th...
Over the past decades, deep neural networks have achieved unprecedented success in image classificat...
This paper addresses the repeated acquisition of labels for data items when the labeling is imperfec...
This paper addresses the repeated acquisition of labels for data items when the labeling is imperfec...
This paper addresses the repeated acquisition of labels for data items when the labeling is imperfec...
Abstract This paper addresses the repeated acquisition of labels for data items when the labeling is...
One of the most popular uses of crowdsourcing is to provide training data for supervised machine lea...
Learning with noisy labels is a vital topic for practical deep learning as models should be robust t...
Multi-label learning is one of the hot problems in the field of machine learning. The deep neural ne...
Multi-label classification is crucial to several practical applications including document categoriz...
The rawly collected training data often comes with separate noisy labels collected from multiple imp...
Most studies on learning from noisy labels rely on unrealistic models of i.i.d. label noise, such as...
Creating large-scale high-quality labeled datasets is a major bottleneck in supervised machine learn...
The Problem: Learning from data with both labeled training points (x,y pairs) and unlabeled training...
Noisy labels are an unavoidable consequence of labeling processes and detecting them is an important...
When labeling objects via Internet-based outsourcing systems, the labelers may have bias, because th...
Over the past decades, deep neural networks have achieved unprecedented success in image classificat...