Speaking the news How conversational agents influence trust and issue salience

Open Access
Authors
Supervisors
Cosupervisors
Award date 25-10-2024
ISBN
  • 9789464962109
Number of pages 164
Organisations
  • Faculty of Social and Behavioural Sciences (FMG) - Amsterdam School of Communication Research (ASCoR)
Abstract
This dissertation studies the role of conversational agents (CAs), such as Google Assistant, as news recommender systems and their impact on public issue salience and trust in recommender systems. Chapter 1 establishes the research framework, emphasizing the influence of CAs as information gatekeepers and highlighting the research gap in understanding CAs’ role as news recommenders. Chapter 2 examines the societal implications of news recommendations provided by CAs, focusing on how trust in these agents shapes public perceptions of important issues (i.e., issue salience). It compares the effects of CAs with other news sources, such as social media and traditional websites, and evaluates the moderating role of general media trust and channel-specific trust. Chapter 3 explores how the interface—whether a CA or a traditional website—impacts trust in news recommenders, evaluating specifically the influence of CAs’ dialogic interactions. Chapter 4 investigates the effects of global and local explanation types across different modalities (audio and text), considering the regulatory context and its impact on user trust. Chapter 5 integrates findings from the previous chapters, concluding that CAs, due to their uniqueness, can potentially influence issue salience. Additionally, CAs can negatively influence trust in news recommenders through factors such as perceived enjoyment. The dissertation also identifies perceived personalization and privacy concerns as important determinants of trust. However, the modality or the dialogic interaction with CAs does not significantly affect these factors. As CAs evolve, future research should further investigate trust in CAs, mainly focusing on how different dialogic features (e.g., content) can affect user enjoyment.
Document type PhD thesis
Language English
Downloads
Thesis (complete) (Embargo up to 2026-10-25)
Chapter I: General introduction (Embargo up to 2026-10-25)
Chapter III: The influence of conversational agents on trust in news recommenders: A comparison between a conversational agent and a website (Embargo up to 2026-10-25)
Chapter IV: News recommenders explained: The effects of explainability and modality on trust through privacy concerns and perceived personalization (Embargo up to 2026-10-25)
Chapter V: General conclusion (Embargo up to 2026-10-25)
English summary; Nederlandse samenvatting; Resumen en Español; Author contributions; Acknowledgments (Embargo up to 2026-10-25)
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