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StanceVis Prime : Visual Analysis of Sentiment and Stance in Social Media Texts

Kucher, Kostiantyn ; Martins, Rafael, M. ; Paradis, Carita LU orcid and Kerren, Andreas (2020) In Journal of Visualization 23(6). p.1015-1034
Abstract
Text visualization and visual text analytics methods have been successfully applied for various tasks related to the analysis of individual text documents and large document collections such as summarization of main topics or identification of events in discourse. Visualization of sentiments and emotions detected in textual data has also become an important topic of interest, especially with regard to the data originating from social media. Despite the growing interest for this topic, the research problem related to detecting and visualizing various stances, such as rudeness or uncertainty, has not been adequately addressed by existing approaches. The challenges associated with this problem include development of the underlying... (More)
Text visualization and visual text analytics methods have been successfully applied for various tasks related to the analysis of individual text documents and large document collections such as summarization of main topics or identification of events in discourse. Visualization of sentiments and emotions detected in textual data has also become an important topic of interest, especially with regard to the data originating from social media. Despite the growing interest for this topic, the research problem related to detecting and visualizing various stances, such as rudeness or uncertainty, has not been adequately addressed by existing approaches. The challenges associated with this problem include development of the underlying computational methods and visualization of the corresponding multi-label stance classification results. In this paper, we describe our work on a visual analytics platform, called StanceVis Prime, which has been designed for the analysis of sentiment and stance in temporal text data from various social media data sources. The use case scenarios intended for StanceVis Prime include social media monitoring and research in sociolinguistics. The design was motivated by the requirements of collaborating domain experts in linguistics as part of a larger research project on stance analysis. Our approach involves consuming documents from several text stream sources and applying sentiment and stance classification, resulting in multiple data series associated with source texts. StanceVis Prime provides the end users with an overview of similarities between the data series based on dynamic time warping analysis, as well as detailed visualizations of data series values. Users can also retrieve and conduct both distant and close reading of the documents corresponding to the data series. We demonstrate our approach with case studies involving political targets of interest and several social media data sources and report preliminary user feedback received from a domain expert. (Less)
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author
; ; and
organization
publishing date
type
Contribution to journal
publication status
published
subject
keywords
text mining, natural langauge processing, visual ananlytics, visualization, information visualization, interaction, sentiment analysis, Stance analysis
in
Journal of Visualization
volume
23
issue
6
pages
1015 - 1034
publisher
Springer
external identifiers
  • scopus:85089857634
ISSN
1343-8875
DOI
10.1007/s12650-020-00684-5
project
StaViCTA - Advances in the description and explanation of stance in discourse using visual and computational text analytics
language
English
LU publication?
yes
id
c487a874-33f7-4539-9acb-9705829aa962
date added to LUP
2020-06-21 11:34:30
date last changed
2022-04-18 22:59:30
@article{c487a874-33f7-4539-9acb-9705829aa962,
  abstract     = {{Text visualization and visual text analytics methods have been successfully applied for various tasks related to the analysis of individual text documents and large document collections such as summarization of main topics or identification of events in discourse. Visualization of sentiments and emotions detected in textual data has also become an important topic of interest, especially with regard to the data originating from social media. Despite the growing interest for this topic, the research problem related to detecting and visualizing various stances, such as rudeness or uncertainty, has not been adequately addressed by existing approaches. The challenges associated with this problem include development of the underlying computational methods and visualization of the corresponding multi-label stance classification results. In this paper, we describe our work on a visual analytics platform, called StanceVis Prime, which has been designed for the analysis of sentiment and stance in temporal text data from various social media data sources. The use case scenarios intended for StanceVis Prime include social media monitoring and research in sociolinguistics. The design was motivated by the requirements of collaborating domain experts in linguistics as part of a larger research project on stance analysis. Our approach involves consuming documents from several text stream sources and applying sentiment and stance classification, resulting in multiple data series associated with source texts. StanceVis Prime provides the end users with an overview of similarities between the data series based on dynamic time warping analysis, as well as detailed visualizations of data series values. Users can also retrieve and conduct both distant and close reading of the documents corresponding to the data series. We demonstrate our approach with case studies involving political targets of interest and several social media data sources and report preliminary user feedback received from a domain expert.}},
  author       = {{Kucher, Kostiantyn and Martins, Rafael, M. and Paradis, Carita and Kerren, Andreas}},
  issn         = {{1343-8875}},
  keywords     = {{text mining; natural langauge processing; visual ananlytics; visualization; information visualization; interaction; sentiment analysis; Stance analysis}},
  language     = {{eng}},
  number       = {{6}},
  pages        = {{1015--1034}},
  publisher    = {{Springer}},
  series       = {{Journal of Visualization}},
  title        = {{StanceVis Prime : Visual Analysis of Sentiment and Stance in Social Media Texts}},
  url          = {{http://dx.doi.org/10.1007/s12650-020-00684-5}},
  doi          = {{10.1007/s12650-020-00684-5}},
  volume       = {{23}},
  year         = {{2020}},
}