Machine Learning for Enhancing Deliberation in Online Political Discussions and Participatory Processes: A Survey

arXiv cs.CL / 3/27/2026

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Key Points

  • The paper surveys issues that arise in online political discussions and participatory processes that affect the “deliberativeness” of debates and argument exchange.
  • It reviews how machine learning/AI could be applied to improve specific deliberation-related tasks for both participants and discussion initiators.
  • The authors map potential AI-solvable subproblems, including providing an overview of existing AI-enabled tools and platforms supporting political participation.
  • The survey evaluates how effective current AI support is today and highlights remaining technical and practical challenges for improving deliberation quality.

Abstract

Political online participation in the form of discussing political issues and exchanging opinions among citizens is gaining importance with more and more formats being held digitally. To come to a decision, a thorough discussion and consideration of opinions and a civil exchange of arguments, which is defined as the act of deliberation, is desirable. The quality of discussions and participation processes in terms of their deliberativeness highly depends on the design of platforms and processes. To facilitate online communication for both participants and initiators, machine learning methods offer a lot of potential. In this work we want to showcase which issues occur in political online discussions and how machine learning can be used to counteract these issues and enhance deliberation. We conduct a literature review to (i) identify tasks that could potentially be solved by artificial intelligence (AI) algorithms to enhance individual aspects of deliberation in political online discussions, (ii) provide an overview on existing tools and platforms that are equipped with AI support and (iii) assess how well AI support currently works and where challenges remain.