International audienceArgumentative Zoning (AZ) - analysis of the argumentative structure of a scientific paper - has proved useful for a number of information access tasks. Current approaches to AZ rely on supervised machine learning (ML). Requiring large amounts of annotated data, these approaches are expensive to develop and port to different domains and tasks. A potential solution to this problem is to use weakly supervised ML instead. We investigate the performance of four weakly-supervised classifiers on scientific abstract data annotated for multiple AZ classes. Our best classifier based on the combination of active learning and selftraining outperforms our best supervised classifier, yielding a high accuracy of 81% when using just 1...
Many real-world prediction tasks require collecting information about the domain entities to achieve...
Applied mathematics and machine computations have raised a lot of hope since the recent success of s...
The best performing NLP models to date are learned from large volumes of manually-annotated data. Fo...
International audienceArgumentative Zoning (AZ) - analysis of the argumentative structure of a scien...
Bobic T, Klinger R. Committee-based Selection of Weakly Labeled Instances for Learning Relation Extr...
Labeling data can be an expensive task as it is usually performed manually by domain experts. This i...
As part of our experiments with doing Aspect-Category-Opinion-Sentiment Quadruple Extraction, in thi...
International audienceActive learning has been successfully applied to a number of NLP tasks. In thi...
International audienceWe consider an industrial context where we deal with a stream of unlabelled do...
Supervised machine learning methods are increasingly employed in political science. Such models requ...
Text classification is one of the most fundamental tasks in Natural Language Processing. How to effe...
The limited availability of ground truth relevance labels has been a major impediment to the applica...
The goal of this thesis is to improve the feasibility of building applied NLP systems for more diver...
Solving text classification in a weakly supervised manner is important for real-world applications w...
Labeling data can be an expensive task as it is usually performed manually by domain experts. This i...
Many real-world prediction tasks require collecting information about the domain entities to achieve...
Applied mathematics and machine computations have raised a lot of hope since the recent success of s...
The best performing NLP models to date are learned from large volumes of manually-annotated data. Fo...
International audienceArgumentative Zoning (AZ) - analysis of the argumentative structure of a scien...
Bobic T, Klinger R. Committee-based Selection of Weakly Labeled Instances for Learning Relation Extr...
Labeling data can be an expensive task as it is usually performed manually by domain experts. This i...
As part of our experiments with doing Aspect-Category-Opinion-Sentiment Quadruple Extraction, in thi...
International audienceActive learning has been successfully applied to a number of NLP tasks. In thi...
International audienceWe consider an industrial context where we deal with a stream of unlabelled do...
Supervised machine learning methods are increasingly employed in political science. Such models requ...
Text classification is one of the most fundamental tasks in Natural Language Processing. How to effe...
The limited availability of ground truth relevance labels has been a major impediment to the applica...
The goal of this thesis is to improve the feasibility of building applied NLP systems for more diver...
Solving text classification in a weakly supervised manner is important for real-world applications w...
Labeling data can be an expensive task as it is usually performed manually by domain experts. This i...
Many real-world prediction tasks require collecting information about the domain entities to achieve...
Applied mathematics and machine computations have raised a lot of hope since the recent success of s...
The best performing NLP models to date are learned from large volumes of manually-annotated data. Fo...