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Research Centre for Responsible
Media Technology and Innovation
Project number 309339
Towards Attitudinal Change in News Recommender Systems:
A Pilot Study on Climate Change
Alain Starke
University of Amsterdam (NL) & University of Bergen (NOR)
Work with
• Jia-hua Jeng  his first PhD paper!
• Christoph Trattner
Aim of Jeng’s project: Reducing Polarization
in Personalized Environments
SFI MediaFutures 3
Using algorithmic and interface
persuasion to steer user attitudes
• Particularly important to convince ‘strong believers’
• Supporting exposure to and interaction with opinion-challenging
content
SFI MediaFutures 4
News Recommender Systems
SFI MediaFutures 5
Features used in recommendation
SFI MediaFutures 6
Sentiment Analysis:
Detecting one’s opinion towards a topic
SFI MediaFutures 7
- Filter bubbles
- Not as big of an issue as thought of previously, but echo chambers may still arise
- Selective exposure
- Traditional news recommender systems are taste-based
- No optimization on normative diversity, demographic values, etc.
8
Problems
Polarization
Can we change
climate attitudes?
Procedure
N = 180,
US-based
Methods
Dataset
• Climate Change News
Measurements
• NEP scale for Environmental Concern
• User Preference Propositions to evaluate each news article
• Reading it
• Trust it
• Agreeing with it
• Recommending it to others
Results
13
Result 1:
Trust, Agreeing with, and
Recommending an article to
others collapsed into a latent
aspect labelled ‘Like’
14
Correlational Analysis
Result 1:
Results of the
exploratory factor
analysis
15
Correlational Analysis
Result 2:
Significant correlation
between ‘Liking’ and
environmental concern:
r = 0.42, p < 0.001.
16
Correlational Analysis
Result 3:
A news article’s sentiment was not
correlated to other characteristics.
Not with environmental concern,
nor with Liking (both: p > 0.05).
Moreover, the correlation between
title and body text was only found to
be weak (r = 0.3, p < 0.001).
17
Correlational Analysis
18
Regression Analyses
Model 1: What determines Liking a news article?
Model 2: What determined self-reported Reading?
SFI MediaFutures 19
What’s next?
• Examining both algorithmic and interface persuasion to
engage with more diverse news.
• Examining short-term and longer-term effects on user
attitudes
• Taking a ‘simpler’ polarized topic
• Climate change is too ambiguous for simple sentiment analysis
• Stance detection methods based on AI are still in development
SFI MediaFutures 20
Thank you
for your attention
Contact information:
Research Centre for Responsible
Media Technology and Innovation
Project number 309339
Jia-Hua.Jeng@uib.no
alain.starke@uva.nl
christoph.trattner@uib.no

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Jeng2023 Towards Attitudinal Change in News

  • 1. Research Centre for Responsible Media Technology and Innovation Project number 309339 Towards Attitudinal Change in News Recommender Systems: A Pilot Study on Climate Change Alain Starke University of Amsterdam (NL) & University of Bergen (NOR)
  • 2. Work with • Jia-hua Jeng  his first PhD paper! • Christoph Trattner
  • 3. Aim of Jeng’s project: Reducing Polarization in Personalized Environments SFI MediaFutures 3
  • 4. Using algorithmic and interface persuasion to steer user attitudes • Particularly important to convince ‘strong believers’ • Supporting exposure to and interaction with opinion-challenging content SFI MediaFutures 4
  • 6. Features used in recommendation SFI MediaFutures 6
  • 7. Sentiment Analysis: Detecting one’s opinion towards a topic SFI MediaFutures 7
  • 8. - Filter bubbles - Not as big of an issue as thought of previously, but echo chambers may still arise - Selective exposure - Traditional news recommender systems are taste-based - No optimization on normative diversity, demographic values, etc. 8 Problems Polarization
  • 10.
  • 12. Methods Dataset • Climate Change News Measurements • NEP scale for Environmental Concern • User Preference Propositions to evaluate each news article • Reading it • Trust it • Agreeing with it • Recommending it to others
  • 14. Result 1: Trust, Agreeing with, and Recommending an article to others collapsed into a latent aspect labelled ‘Like’ 14 Correlational Analysis
  • 15. Result 1: Results of the exploratory factor analysis 15 Correlational Analysis
  • 16. Result 2: Significant correlation between ‘Liking’ and environmental concern: r = 0.42, p < 0.001. 16 Correlational Analysis
  • 17. Result 3: A news article’s sentiment was not correlated to other characteristics. Not with environmental concern, nor with Liking (both: p > 0.05). Moreover, the correlation between title and body text was only found to be weak (r = 0.3, p < 0.001). 17 Correlational Analysis
  • 18. 18 Regression Analyses Model 1: What determines Liking a news article? Model 2: What determined self-reported Reading?
  • 20. What’s next? • Examining both algorithmic and interface persuasion to engage with more diverse news. • Examining short-term and longer-term effects on user attitudes • Taking a ‘simpler’ polarized topic • Climate change is too ambiguous for simple sentiment analysis • Stance detection methods based on AI are still in development SFI MediaFutures 20
  • 21. Thank you for your attention Contact information: Research Centre for Responsible Media Technology and Innovation Project number 309339 Jia-Hua.Jeng@uib.no alain.starke@uva.nl christoph.trattner@uib.no