Algorithmic Governance, Trust, and the Transformation of Social Structures in the Digital Age

Authors

DOI:

https://doi.org/10.47451/soc2025-10-01

Keywords:

algorithmic governance, social structures, digital trust, SHAP analysis, delegation, artificial intelligence, structural power, machine learning

Abstract

This article presents a sociological analysis of the transformation of trust and managerial authority in the context of algorithmic governance. The object of the study is the algorithmized decision-making environment, and the subject is the social mechanisms of responsibility delegation and changes in legitimation in the digital age. The study aims to identify the structural consequences of implementing algorithms in areas that previously relied on personalized evaluation, as well as to empirically model such consequences using psychometric data. The study employs an interdisciplinary methodology, incorporating Niklas Luhmann’s systems theory, Pierre Bourdieu’s concept of symbolic power, Anthony Giddens’ structuration theory, and machine learning tools, particularly Random Forest and SHAP analysis. The empirical illustration is based on an original synthetic dataset constructed using real psychometric scales. The findings reveal that algorithmic models not only organize data but also generate new structures of social influence through a logic of opaque decisions perceived as objective. SHAP analysis demonstrates that the importance of individual features in system predictions varies by context, offering prospects for critically interpreting the social functions of algorithms. The results can be applied in the analysis of trust in digital services and automated decision-making in healthcare, education, and security.

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Author Biography

  • Myroslava Kukhta, National Technical University of Ukraine “Igor Sikorsky Kyiv Polytechnic Institute”

    Doctor of Sociological Sciences, Associate Professor, Department of Sociology, Faculty of Sociology and Law

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Published

2025-12-15

How to Cite

Algorithmic Governance, Trust, and the Transformation of Social Structures in the Digital Age. (2025). European Scientific E-Journal, 40, 78–86. https://doi.org/10.47451/soc2025-10-01

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