Large-scale social media classification faces the following two challenges: algorithms can be hard to adapt to Web-scale data, and the predictions that they provide are difficult for humans to understand. Those two challenges are solved at the cost of some accuracy by lexicon-based classifiers, which offer a white-box approach to text mining by using a trivially interpretable additive model. However current techniques for lexicon-based classification limit themselves to using hand-crafted lexicons, which suffer from human bias and are difficult to extend, or automatically generated lexicons, which are induced using point-estimates of some predefined probabilistic measure on a corpus of interest. In this work we propose a new approach to lea...
Stance classification, which aims at detecting the stance expressed in text towards a specific targe...
In lexicon-based classification, documents are assigned labels by comparing the number of words that...
Stance detection is one of the many NLP tasks that is gaining importance with the spreading of infor...
The automated classification of text documents is an active research challenge in document-oriented ...
Argumentation is a key part of human interaction. Used introspectively, it searches for the truth, b...
In this work, we explore the performance of supervised stance classification methods for social medi...
The idea behind this work stems from the participation in some shared tasks concerning stance detect...
Stance detection is one of the promising areas of computational linguistics, the task of which is to...
Understanding the stance and bias reflected in the text is an essential part of achieving machine in...
Stance classification determines the attitude, or stance, in a (typically short) text. The task has ...
Stance detection is a relatively new concept in data mining that aims to assign a stance label (favo...
The majority of opinion mining tasks in natural language processing (NLP) have been focused on senti...
Stance detection in fake news is an important component in news veracity assessment because this pro...
Supervised machine learning (SML) provides us with tools to efficiently scrutinize large corpora of ...
In this paper, we present a study for the identification of stance-related features in text data fro...
Stance classification, which aims at detecting the stance expressed in text towards a specific targe...
In lexicon-based classification, documents are assigned labels by comparing the number of words that...
Stance detection is one of the many NLP tasks that is gaining importance with the spreading of infor...
The automated classification of text documents is an active research challenge in document-oriented ...
Argumentation is a key part of human interaction. Used introspectively, it searches for the truth, b...
In this work, we explore the performance of supervised stance classification methods for social medi...
The idea behind this work stems from the participation in some shared tasks concerning stance detect...
Stance detection is one of the promising areas of computational linguistics, the task of which is to...
Understanding the stance and bias reflected in the text is an essential part of achieving machine in...
Stance classification determines the attitude, or stance, in a (typically short) text. The task has ...
Stance detection is a relatively new concept in data mining that aims to assign a stance label (favo...
The majority of opinion mining tasks in natural language processing (NLP) have been focused on senti...
Stance detection in fake news is an important component in news veracity assessment because this pro...
Supervised machine learning (SML) provides us with tools to efficiently scrutinize large corpora of ...
In this paper, we present a study for the identification of stance-related features in text data fro...
Stance classification, which aims at detecting the stance expressed in text towards a specific targe...
In lexicon-based classification, documents are assigned labels by comparing the number of words that...
Stance detection is one of the many NLP tasks that is gaining importance with the spreading of infor...