Sebastian Cattes: Performing Content: Can NLP and Deep Learning algorithms predict reader prefere...
Speaker:: Sebastian Cattes
Track: PyData: Natural Language Processing
Can we predict a reader’s engagement time before publishing an article?
This talk presents a use case performed together with a regional German newspaper that analyses to what extent user engagement can be understood and predicted based on an article’s texts and metadata.
A combination of advanced statistical and NLP deep learning models (BERT) was trained on a corpus of articles to model online reading behavior.
The talk focuses on the applied methods and shows Explainable AI techniques to get a microscopic understanding of driving mechanisms of user engagement.
Recorded at the PyConDE & PyData Berlin 2022 conference, April 11-13 2022.
More details at the conference page:
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Sebastian Cattes: Performing Content: Can NLP and Deep Learning algorithms predict reader prefere...