Recently proposed pre-trained language models can be easily fine-tuned to a wide range of downstream tasks. However, a large-scale labelled task-specific dataset is required for fine-tuning creating a bottleneck in the development process of machine learning applications. To foster a fast development by reducing manual labelling efforts, we propose a Label-Efficient Training Scheme (LETS). The proposed LETS consists of three elements: (i) task-specific pre-training to exploit unlabelled task-specific corpus data, (ii) label augmentation to maximise the utility of labelled data, and (iii) active learning to label data strategically. In this paper, we apply LETS to a novel aspect-based sentiment analysis (ABSA) use-case for analysing the revi...
This paper proposes human-interpretable learning of aspect-based sentiment analysis (ABSA), employin...
This paper describes a system for aspectbased sentiment analysis (ABSA) using a straight-forward sup...
The continuously expanding digital possibilities, increasing number of social media platforms, and g...
Recently proposed pre-trained language models can be easily fine-tuned to a wide range of downstream...
In recent years, sentiment classification has attracted much attention from natural language process...
Natural Language Processing (NLP) is one of the most attractive technologies in many applications in...
In recent years, sentiment classification has attracted much attention from natural language process...
Customer reviews are a rich, abundant source of valuable information that could predict commercial s...
Natural Language Processing (NLP) is one of the most attractive technologies in many applications in...
Customer reviews are a rich, abundant source of valuable information that could predict commercial s...
Customer reviews are a rich, abundant source of valuable information that could predict commercial s...
In recent years, sentiment classification has attracted much attention from natural language process...
Sentiment analysis is recognized as one of the most important sub-areas in Natural Language Processi...
Sentiment analysis is recognized as one of the most important sub-areas in Natural Language Processi...
Aspect Based Sentiment Analysis is a dominant research area with potential applications in social me...
This paper proposes human-interpretable learning of aspect-based sentiment analysis (ABSA), employin...
This paper describes a system for aspectbased sentiment analysis (ABSA) using a straight-forward sup...
The continuously expanding digital possibilities, increasing number of social media platforms, and g...
Recently proposed pre-trained language models can be easily fine-tuned to a wide range of downstream...
In recent years, sentiment classification has attracted much attention from natural language process...
Natural Language Processing (NLP) is one of the most attractive technologies in many applications in...
In recent years, sentiment classification has attracted much attention from natural language process...
Customer reviews are a rich, abundant source of valuable information that could predict commercial s...
Natural Language Processing (NLP) is one of the most attractive technologies in many applications in...
Customer reviews are a rich, abundant source of valuable information that could predict commercial s...
Customer reviews are a rich, abundant source of valuable information that could predict commercial s...
In recent years, sentiment classification has attracted much attention from natural language process...
Sentiment analysis is recognized as one of the most important sub-areas in Natural Language Processi...
Sentiment analysis is recognized as one of the most important sub-areas in Natural Language Processi...
Aspect Based Sentiment Analysis is a dominant research area with potential applications in social me...
This paper proposes human-interpretable learning of aspect-based sentiment analysis (ABSA), employin...
This paper describes a system for aspectbased sentiment analysis (ABSA) using a straight-forward sup...
The continuously expanding digital possibilities, increasing number of social media platforms, and g...