Cutting-edge machine learning techniques often require millions of labeled data objects to train a robust model. Because relying on humans to supply such a huge number of labels is rarely practical, automated methods for label generation are needed. Unfortunately, critical challenges in auto-labeling remain unsolved, including the following research questions: (1) which objects to ask humans to label, (2) how to automatically propagate labels to other objects, and (3) when to stop labeling. These three questions are not only each challenging in their own right, but they also correspond to tightly interdependent problems. Yet existing techniques provide at best isolated solutions to a subset of these challenges. In this work, we propose the ...
Background: To make inferences about brain structures or activity across multiple individuals, one f...
Scarcity of labeled data is a bottleneck for supervised learning models. A paradigm that has evolved...
Data-driven decisions have an unavoidable influence on people’s lives [5], and despite being markete...
Automatic labeling is a type of classification problem. Classification has been studied with the hel...
With the increased availability of new and better computer processing units (CPUs) as well as graphi...
We demonstrate an AI assisted data labeling system which applies unsupervised and semi-supervised ma...
In many real world applications we do not have access to fully-labeled training data, but only to a ...
In many real world applications we do not have access to fully-labeled training data, but only to a ...
For multi-label supervised learning, the quality of the label annotation is important. However, for ...
The labels used to train machine learning (ML) models are of paramount importance. Typically for ML ...
International audienceMulti-label classification allows instances to belong to several classes at on...
Machine Learning methods, especially Deep Learning, had an enormous breakthrough in Natural Language...
The lack of labeled data is one of the main obstacles to the application of machine learning algorit...
In multi-label learning, each training example is represented by a single instance (feature vector) ...
Creating large-scale high-quality labeled datasets is a major bottleneck in supervised machine learn...
Background: To make inferences about brain structures or activity across multiple individuals, one f...
Scarcity of labeled data is a bottleneck for supervised learning models. A paradigm that has evolved...
Data-driven decisions have an unavoidable influence on people’s lives [5], and despite being markete...
Automatic labeling is a type of classification problem. Classification has been studied with the hel...
With the increased availability of new and better computer processing units (CPUs) as well as graphi...
We demonstrate an AI assisted data labeling system which applies unsupervised and semi-supervised ma...
In many real world applications we do not have access to fully-labeled training data, but only to a ...
In many real world applications we do not have access to fully-labeled training data, but only to a ...
For multi-label supervised learning, the quality of the label annotation is important. However, for ...
The labels used to train machine learning (ML) models are of paramount importance. Typically for ML ...
International audienceMulti-label classification allows instances to belong to several classes at on...
Machine Learning methods, especially Deep Learning, had an enormous breakthrough in Natural Language...
The lack of labeled data is one of the main obstacles to the application of machine learning algorit...
In multi-label learning, each training example is represented by a single instance (feature vector) ...
Creating large-scale high-quality labeled datasets is a major bottleneck in supervised machine learn...
Background: To make inferences about brain structures or activity across multiple individuals, one f...
Scarcity of labeled data is a bottleneck for supervised learning models. A paradigm that has evolved...
Data-driven decisions have an unavoidable influence on people’s lives [5], and despite being markete...