@article{doi:10.1177/08944393221149290, author = {Katharina Ludwig and Alexander Grote and Andreea Iana and Mehwish Alam and Heiko Paulheim and Harald Sack and Christof Weinhardt and Philipp Müller}, title ={Divided by the Algorithm? The (Limited) Effects of Content- and Sentiment-Based News Recommendation on Affective, Ideological, and Perceived Polarization}, journal = {Social Science Computer Review}, volume = {0}, number = {0}, pages = {08944393221149290}, year = {0}, doi = {10.1177/08944393221149290}, URL = { https://doi.org/10.1177/08944393221149290 }, eprint = { https://doi.org/10.1177/08944393221149290 } , abstract = { Recent rises in political polarization across the globe are often ascribed to algorithmic content filtering on social media, news platforms, or search engines. The widespread usage of news recommendation systems (NRS) is theorized to drive users in homogenous information environments and, thereby, drive affective, ideological, and perceived polarization. To test this assumption, we conducted an online experiment (n = 750) with running algorithms that enriches content-based NRS with negative or neutral sentiment. Our experiment finds only limited evidence for polarization effects of content-based NRS. Nevertheless, the time spent with an NRS and its recommended articles seems to play a crucial role as a moderator of polarization. The longer participants were using an NRS enriched with negative sentiment, the more they got affectively polarized, whereas participants using an NRS incorporating balanced sentiment ideologically depolarized over time. Implications for future research are discussed. } }