SciLander: Mapping the Scientific News Landscape


  • Maurício Gruppi Rensselaer Polytechnic Institute
  • Panayiotis Smeros EPFL
  • Sibel Adalı Rensselaer Polytechnic Institute
  • Carlos Castillo Universitat Pompeu Fabra
  • Karl Aberer EPFL



Credibility of online content, Qualitative and quantitative studies of social media, Measuring predictability of real world phenomena based on social media, e.g., spanning politics, finance, and health, Web and Social Media


The COVID-19 pandemic has fueled the spread of misinformation on social media and the Web as a whole. The phenomenon dubbed `infodemic' has taken the challenges of information veracity and trust to new heights by massively introducing seemingly scientific and technical elements into misleading content. Despite the existing body of work on modeling and predicting misinformation, the coverage of very complex scientific topics with inherent uncertainty and an evolving set of findings, such as COVID-19, provides many new challenges that are not easily solved by existing tools. To address these issues, we introduce SciLander, a method for learning representations of news sources reporting on science-based topics. We extract four heterogeneous indicators for the sources; two generic indicators that capture (1) the copying of news stories between sources, and (2) the use of the same terms to mean different things (semantic shift), and two scientific indicators that capture (1) the usage of jargon and (2) the stance towards specific citations. We use these indicators as signals of source agreement, sampling pairs of positive (similar) and negative (dissimilar) samples, and combine them in a unified framework to train unsupervised news source embeddings with a triplet margin loss objective. We evaluate our method on a novel COVID-19 dataset containing nearly 1M news articles from 500 sources spanning a period of 18 months since the beginning of the pandemic in 2020. Our results show that the features learned by our model outperform state-of-the-art baseline methods on the task of news veracity classification. Furthermore, a clustering analysis suggests that the learned representations encode information about the reliability, political leaning, and partisanship bias of these sources.




How to Cite

Gruppi, M., Smeros, P., Adalı, S., Castillo, C., & Aberer, K. (2023). SciLander: Mapping the Scientific News Landscape. Proceedings of the International AAAI Conference on Web and Social Media, 17(1), 269-280.