Automatic detection of five language components, which are all relevant for expressing opinions and for stance taking, was studied: positive sentiment, negative sentiment, speculation, contrast and condition. A resource-aware approach was taken, which included manual annotation of 500 training samples and the use of limited lexical resources. Active learning was compared to random selection of training data, as well as to a lexicon-based method. Active learning was successful for the categories speculation, contrast and condition, but not for the two sentiment categories, for which results achieved when using active learning were similar to those achieved when applying a random selection of training data. This difference is likely due to a ...
Stance is defined as the expression of a speaker’s standpoint towards a given target or entity. To d...
Supervised machine learning (SML) provides us with tools to efficiently scrutinize large corpora of ...
Stance detection is one of the promising areas of computational linguistics, the task of which is to...
The automatic detection and classification of stance (e.g., certainty or agreement) in text data usi...
Training models to perform stance identification requires large annotated corpora that are not alway...
The automatic detection of seven types of modifiers was studied: Certainty, Uncertainty, Hypothetica...
Stance detection is one of the many NLP tasks that is gaining importance with the spreading of infor...
Analysis of stance in textual data can reveal the attitudes of speakers, ranging from general agreem...
The goal of stance detection is to determine the viewpoint expressed in a piece of text towards a ta...
Stance detection is a Natural Language Processing task that aims to detect the stance (support, agre...
Sentiment analysis becomes an essential part of every social network, as it enables decision-makers ...
The automatic detection and classification of stance taking in text data using natural language proc...
This paper describes and evaluates a novel feature set for stance classification of argumentative te...
In April 2020, a Dutch research team swiftly analyzed public opinions on COVID-19 lockdown relaxatio...
Analyzing public attitudes plays an important role in opinion mining systems. Stance detection aims ...
Stance is defined as the expression of a speaker’s standpoint towards a given target or entity. To d...
Supervised machine learning (SML) provides us with tools to efficiently scrutinize large corpora of ...
Stance detection is one of the promising areas of computational linguistics, the task of which is to...
The automatic detection and classification of stance (e.g., certainty or agreement) in text data usi...
Training models to perform stance identification requires large annotated corpora that are not alway...
The automatic detection of seven types of modifiers was studied: Certainty, Uncertainty, Hypothetica...
Stance detection is one of the many NLP tasks that is gaining importance with the spreading of infor...
Analysis of stance in textual data can reveal the attitudes of speakers, ranging from general agreem...
The goal of stance detection is to determine the viewpoint expressed in a piece of text towards a ta...
Stance detection is a Natural Language Processing task that aims to detect the stance (support, agre...
Sentiment analysis becomes an essential part of every social network, as it enables decision-makers ...
The automatic detection and classification of stance taking in text data using natural language proc...
This paper describes and evaluates a novel feature set for stance classification of argumentative te...
In April 2020, a Dutch research team swiftly analyzed public opinions on COVID-19 lockdown relaxatio...
Analyzing public attitudes plays an important role in opinion mining systems. Stance detection aims ...
Stance is defined as the expression of a speaker’s standpoint towards a given target or entity. To d...
Supervised machine learning (SML) provides us with tools to efficiently scrutinize large corpora of ...
Stance detection is one of the promising areas of computational linguistics, the task of which is to...