Kucher, KostiantynKerren, AndreasParadis, CaritaSahlgren, MagnusTobias Isenberg and Filip Sadlo2016-06-092016-06-092016978-3-03868-015-4-https://doi.org/10.2312/eurp.20161139https://diglib.eg.org:443/handle/10The automatic detection and classification of stance taking in text data using natural language processing and machine learning methods create an opportunity to gain insight about the writers' feelings and attitudes towards their own and other people's utterances. However, this task presents multiple challenges related to the training data collection as well as the actual classifier training. In order to facilitate the process of training a stance classifier, we propose a visual analytics approach called ALVA for text data annotation and visualization. Our approach supports the annotation process management and supplies annotators with a clean user interface for labeling utterances with several stance categories. The analysts are provided with a visualization of stance annotations which facilitates the analysis of categories used by the annotators. ALVA is already being used by our domain experts in linguistics and computational linguistics in order to improve the understanding of stance phenomena and to build a stance classifier for applications such as social media monitoring.H.5.2 [Information Interfaces and Presentation (e.g.HCI)]GeneralGraphical user interfaces (GUI)I.2.7 [Artificial Intelligence]Natural Language ProcessingText analysisVisual Analysis of Text Annotations for Stance Classification with ALVA10.2312/eurp.2016113949-51