<div class="csl-bib-body">
<div class="csl-entry">Sertkan, M., Althammer, S., Hofstätter, S., & Neidhardt, J. (2022). Diversifying Sentiments in News Recommendation. In <i>Perspectives 2022. Proceedings of the Perspectives on the Evaluation of Recommender Systems Workshop 2022</i>. PERSPECTIVES 2022 - Perspectives on the Evaluation of Recommender Systems Workshop co-located with the 16th ACM Conference on Recommender Systems, Seattle, WA, United States of America (the). https://doi.org/10.34726/3903</div>
</div>
-
dc.identifier.uri
http://hdl.handle.net/20.500.12708/175977
-
dc.identifier.uri
https://doi.org/10.34726/3903
-
dc.description.abstract
Personalized news recommender systems are widely deployed to filter the information overload caused by the sheer amount of news produced daily. Recommended news articles usually have a sentiment similar to the sentiment orientation of the previously consumed news, creating a self-reinforcing cycle of sentiment chambers around people. Wu et al. introduced SentiRec – a sentiment diversity-aware neural news recommendation model to counter this lack of diversity.
In this work, we reproduce SentiRec without access to the original source code and data sample. We re-implement SentiRec from scratch and use the Microsoft MIND dataset (same source but different subset as in the original work) for our experiments. We evaluate and discuss our reproduction from different perspectives. While the original paper mainly has a user-centric perspective on sentiment diversity by comparing the recommendation list to the user’s interaction history, we also analyze the intra-list sentiment diversity of the recommendation list. Additionally, we study the effect of sentiment diversification on topical diversity. Our results suggest that SentiRec does not generalize well to other data since the compared baselines already perform well, opposing the original work’s findings. While the original SentiRec utilizes a rule-based sentiment analyzer, we also study a pre-trained neural sentiment analyzer. However, we observe no improvements in effectiveness nor in sentiment diversity. To foster reproducibility, we make our source code publicly available.