Autor/es reacciones

Daniel Gayo Avello

Full Professor at the University of Oviedo in the area of “Computer Languages and Systems”

I think the work is excellent and presents a tremendously astute methodological innovation for studying the effects of algorithmic curation [selection] on social media without the cooperation (or approval) of the platforms themselves. This innovation (using a browser plugin to perform client-side reranking) allows them to overcome a challenge that until now seemed insurmountable: modifying the feed consumed by social media users. This approach allowed them to alter the content seen by the test subjects in real time and also obtain feedback from them. For that reason alone, for opening the door to future independent research without the cooperation of social media platforms, it would already be a very important piece of work.

On the other hand, the experimental design was rigorous in that it was pre-registered and carried out in a real context, i.e., with real users during an election campaign. The sample size was also considerable, and appropriate measures were taken to ensure that the participants were indeed US citizens eligible to vote in those elections. This combination of methodological innovation, experimental robustness and transparency in the conduct of the research makes the work credible and a solid contribution.

The work directly addresses the available evidence, integrating it into the existing literature, notably the studies by Bakshy, Messing and Adamic (2015), Bail et al. (2018) and Altay, Hoes and Wojcieszak (2025). However, the most interesting aspect of this article is the way in which it directly challenges the results of the study carried out by a large team of researchers in collaboration with Meta to analyse the impact of Facebook and Instagram on elections (Guess et al., 2023). While Guess et al. argued that changing the feed (chronological ordering vs. algorithmic curation) had no significant impact on user polarisation, the new work shows that algorithmic decisions do have a substantial impact when the presence of content promoting anti-democratic attitudes or animosity towards opponents is significantly reduced (or increased). Moreover, the new study shows a clear causal relationship, such that altering exposure to such content also alters emotions and perceptions regarding the opposing political group.

The implications are clear:

  1. it appears to contradict the results of a study that had the approval of the platform under investigation;
  2. its methodology opens the door to external audits and replicable experiments, not only by researchers but also by journalists or public administrations;
  3. it clearly establishes a causal relationship and quantifies the magnitude of the effect;
  4. by linking problematic content with greater engagement, it points to a powerful incentive for platforms not to want to mitigate polarisation;
  5. future studies using similar methodologies could favour the establishment of regulatory policies aimed at designing algorithms that not only optimise such engagement but also minimise undesirable impacts on society.

Of course, the study has several important limitations that must be taken into account. First, its scope is restricted to a very specific context: X/Twitter users during a highly polarised election period in the US and over a fairly short interval. This raises questions about the generalisability of the results to other platforms, times, or different cultural and political contexts. Furthermore, the need to install a browser plugin introduces potential biases, as only users who consumed X/Twitter via the web (rather than the app) and who were willing to alter their user experience participated, which may not reflect the general population.

Finally, although the effects detected are significant, the duration of these effects and their real impact on voting or other forms of citizen participation are unclear. This does not invalidate the study; it simply implies that further research is needed on more platforms, in different contexts and countries, as well as longitudinal studies that also measure the impact on other metrics, such as institutional trust, participation or the quality of democratic discourse, for which multidisciplinary teams would be required.

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