Investigating Content-based Fake News Detection using Knowledge Graphs
A closer look at the 2016 U.S. Presidential Elections and potential analogies for the Swedish Context
Abstract
In recent years, fake news has become a pervasive reality of global news consumption.
While research on fake news detection is ongoing, smaller languages such as Swedish
are often left exposed by an under-representation in research. The biggest challenge
lies in detecting news that is continuously shape-shifting to look just like the real
thing — powered by increasingly complex generative algorithms such as GPT-2.
Fact-checking may have a much larger role to play in the future. To that end,
this project considers knowledge graph embedding models that are trained on news
articles from the 2016 U.S. Presidential Elections. In this project, we show that
incomplete knowledge graphs created from only a small set of news articles can
detect fake news with an F-score of 0.74 for previously seen entities and relations.
We also show that the model trained on English language data provides some useful
insights for labelling Swedish-language news articles of the same event domain and
same time horizon.
Degree
Student essay
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Date
2019-11-21Author
Germishuys, Jurie
Keywords
fake news
knowledge graphs
embedding models
natural language processing
generative models
Swedish
Language
eng