Effective representation learning is an essential building block for achieving many natural language processing tasks such as stance detection as performed implicitly by humans. Stance detection can assist in understanding how individuals react to certain information by revealing the user's stance on a particular topic. In this work, we propose a new attention-based model for learning feature representations and show its effectiveness in the task of stance detection. The proposed model is based on transfer learning and multi-head attention mechanisms. Specifically, we use BERT and word2vec models to learn text representation vectors from the data and pass both of them simultaneously to the multi-head attention layer to help focus on the bes...
This paper presents two self-contained tutorials on stance detection in Twitter data using BERT fine...
Stance detection (SD) can be considered a special case of textual entailment recognition (TER), a ge...
Zero-shot stance detection (ZSSD) is challenging as it requires detecting the stance of previously u...
Stance detection is a Natural Language Processing task that can detect if the input text is in favou...
Stance detection is a Natural Language Processing task that aims to detect the stance (support, agre...
Stance detection is one of the promising areas of computational linguistics, the task of which is to...
National audienceDeep models are getting a wide interest in recent NLP and IR state-of-the-art. Amon...
Current models for stance classification often treat each target independently, but in many applicat...
Stance classification, which aims at detecting the stance expressed in text towards a specific targe...
Stance detection is one of the many NLP tasks that is gaining importance with the spreading of infor...
Stance detection deals with identifying an author’s stance towards a target. Most existing stance de...
Understanding what people say and really mean in tweets is still a wide open research question. In p...
The automatic detection and classification of stance (e.g., certainty or agreement) in text data usi...
Zero-shot stance detection is challenging because it requires detecting the stance of previously uns...
Understanding what people say and really mean in tweets is still a wide open research question. In p...
This paper presents two self-contained tutorials on stance detection in Twitter data using BERT fine...
Stance detection (SD) can be considered a special case of textual entailment recognition (TER), a ge...
Zero-shot stance detection (ZSSD) is challenging as it requires detecting the stance of previously u...
Stance detection is a Natural Language Processing task that can detect if the input text is in favou...
Stance detection is a Natural Language Processing task that aims to detect the stance (support, agre...
Stance detection is one of the promising areas of computational linguistics, the task of which is to...
National audienceDeep models are getting a wide interest in recent NLP and IR state-of-the-art. Amon...
Current models for stance classification often treat each target independently, but in many applicat...
Stance classification, which aims at detecting the stance expressed in text towards a specific targe...
Stance detection is one of the many NLP tasks that is gaining importance with the spreading of infor...
Stance detection deals with identifying an author’s stance towards a target. Most existing stance de...
Understanding what people say and really mean in tweets is still a wide open research question. In p...
The automatic detection and classification of stance (e.g., certainty or agreement) in text data usi...
Zero-shot stance detection is challenging because it requires detecting the stance of previously uns...
Understanding what people say and really mean in tweets is still a wide open research question. In p...
This paper presents two self-contained tutorials on stance detection in Twitter data using BERT fine...
Stance detection (SD) can be considered a special case of textual entailment recognition (TER), a ge...
Zero-shot stance detection (ZSSD) is challenging as it requires detecting the stance of previously u...