The automatic detection and classification of stance (e.g., certainty or agreement) in text data using natural language processing and machine learning methods create an opportunity to gain insight into the speakers' attitudes towards their own and other people's utterances. However, identifying stance in text presents many challenges related to training data collection and classifier training. In order to facilitate the entire process of training a stance classifier, we propose a visual analytics approach, called ALVA, for text data annotation and visualization. ALVA's interplay with the stance classifier follows an active learning strategy in order to select suitable candidate utterances for manual annotation. Our approach supports annota...
In this work, we explore the performance of supervised stance classification methods for social medi...
The problem of identifying and correctly attributing speaker stance in human communication is addres...
Training models to perform stance identification requires large annotated corpora that are not alway...
The automatic detection and classification of stance taking in text data using natural language proc...
Analysis of stance in textual data can reveal the attitudes of speakers, ranging from general agreem...
Automatic detection of five language components, which are all relevant for expressing opinions and ...
Text visualization techniques often make use of automatic text classification methods. One of such m...
Text visualization techniques often make use of automatic text classification methods. One of such m...
Text visualization and visual text analytics methods have been successfully applied for various task...
Despite the growing interest for visualization of sentiments and emotions in textual data, the task ...
Online social media are a perfect text source for stance analysis. Stance in human communication is ...
Rapid progress in digital technologies has transformed the world in many ways during the past few de...
The use of interactive visualization techniques in Digital Humanities research can be a useful addit...
During recent years, there have been a lot of research in the area of Natural Language Processing (N...
Stance detection is one of the promising areas of computational linguistics, the task of which is to...
In this work, we explore the performance of supervised stance classification methods for social medi...
The problem of identifying and correctly attributing speaker stance in human communication is addres...
Training models to perform stance identification requires large annotated corpora that are not alway...
The automatic detection and classification of stance taking in text data using natural language proc...
Analysis of stance in textual data can reveal the attitudes of speakers, ranging from general agreem...
Automatic detection of five language components, which are all relevant for expressing opinions and ...
Text visualization techniques often make use of automatic text classification methods. One of such m...
Text visualization techniques often make use of automatic text classification methods. One of such m...
Text visualization and visual text analytics methods have been successfully applied for various task...
Despite the growing interest for visualization of sentiments and emotions in textual data, the task ...
Online social media are a perfect text source for stance analysis. Stance in human communication is ...
Rapid progress in digital technologies has transformed the world in many ways during the past few de...
The use of interactive visualization techniques in Digital Humanities research can be a useful addit...
During recent years, there have been a lot of research in the area of Natural Language Processing (N...
Stance detection is one of the promising areas of computational linguistics, the task of which is to...
In this work, we explore the performance of supervised stance classification methods for social medi...
The problem of identifying and correctly attributing speaker stance in human communication is addres...
Training models to perform stance identification requires large annotated corpora that are not alway...