Machine Learning models trained using supervised learning can achieve great results when a sufficient amount of labeled data is used. However, the annotation process is a costly and time-consuming task. There are many methods devised to make the annotation pipeline more user and data efficient. This thesis explores techniques from Active Learning, Zero-shot Learning, Data Augmentation domains as well as pre-annotation with revision in the context of multi-label classification. Active ’Learnings goal is to choose the most informative samples for labeling. As an Active Learning state-of-the-art technique Contrastive Active Learning was adapted to a multi-label case. Once there is some labeled data, we can augment samples to make the dataset m...
How can we reuse existing knowledge, in the form of available datasets, when solving a new and appar...
Active learning techniques were employed for classification of dialogue acts over two dialogue corpo...
Active learning is a supervised machine learning technique in which the learner is in control of the...
Machine Learning models trained using supervised learning can achieve great results when a sufficien...
The recent advancements of Natural Language Processing have cleared the path for many new applicatio...
Arbeit an der Bibliothek noch nicht eingelangt - Daten nicht geprüftAbweichender Titel nach Übersetz...
Named entity recognition (NER) is the process to sequence label an unstructured data to solve high a...
In recent decades, the availability of a large amount of data has propelled the field of machine lea...
SOTA language models have demonstrated remarkable capabilities in tackling NLP tasks they have not b...
Active learning is a technique that helps to minimize the annotation budget required for the creatio...
Deep learning networks are nowadays a major asset for smart city applications and brand new technolo...
One of the main limitations of training deep learning-based object detection models is the availabil...
As supervised machine learning methods for addressing tasks in natural language processing (NLP) pro...
Institute for Communicating and Collaborative SystemsActive learning reduces annotation costs for su...
Data scarcity is often a concern when working with real-world datasets. From a machine learning poin...
How can we reuse existing knowledge, in the form of available datasets, when solving a new and appar...
Active learning techniques were employed for classification of dialogue acts over two dialogue corpo...
Active learning is a supervised machine learning technique in which the learner is in control of the...
Machine Learning models trained using supervised learning can achieve great results when a sufficien...
The recent advancements of Natural Language Processing have cleared the path for many new applicatio...
Arbeit an der Bibliothek noch nicht eingelangt - Daten nicht geprüftAbweichender Titel nach Übersetz...
Named entity recognition (NER) is the process to sequence label an unstructured data to solve high a...
In recent decades, the availability of a large amount of data has propelled the field of machine lea...
SOTA language models have demonstrated remarkable capabilities in tackling NLP tasks they have not b...
Active learning is a technique that helps to minimize the annotation budget required for the creatio...
Deep learning networks are nowadays a major asset for smart city applications and brand new technolo...
One of the main limitations of training deep learning-based object detection models is the availabil...
As supervised machine learning methods for addressing tasks in natural language processing (NLP) pro...
Institute for Communicating and Collaborative SystemsActive learning reduces annotation costs for su...
Data scarcity is often a concern when working with real-world datasets. From a machine learning poin...
How can we reuse existing knowledge, in the form of available datasets, when solving a new and appar...
Active learning techniques were employed for classification of dialogue acts over two dialogue corpo...
Active learning is a supervised machine learning technique in which the learner is in control of the...