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https://doi.org/10.17645/mac.9623

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Unmasking Machine Learning With Tensor Decomposition: An Illustrative Example for Media and Communication Researchers

[Zeitschriftenartikel]

Oh, Yu Won
Park, Chong Hyun

Abstract

As online communication data continues to grow, manual content analysis, which is frequently employed in media studies within the social sciences, faces challenges in terms of scalability, efficiency, and coding scope. Automated machine learning can address these issues, but it often functions as a ... mehr

As online communication data continues to grow, manual content analysis, which is frequently employed in media studies within the social sciences, faces challenges in terms of scalability, efficiency, and coding scope. Automated machine learning can address these issues, but it often functions as a black box, offering little insight into the features driving its predictions. This lack of interpretability limits its application in advancing social science communication research and fostering practical outcomes. Here, explainable AI offers a solution that balances high prediction accuracy with interpretability. However, its adoption in social science communication studies remains limited. This study illustrates tensor decomposition - specifically, PARAFAC2 - for media scholars as an interpretable machine learning method for analyzing high-dimensional communication data. By transforming complex datasets into simpler components, tensor decomposition reveals the nuanced relationships among linguistic features. Using a labeled spam review dataset as an illustrative example, this study demonstrates how the proposed approach uncovers patterns overlooked by traditional methods and enhances insights into language use. This framework bridges the gap between accuracy and explainability, offering a robust tool for future social science communication research.... weniger

Thesaurusschlagwörter
künstliche Intelligenz; Inhaltsanalyse; Kommunikationsforschung; Automatisierung

Klassifikation
Allgemeines, spezielle Theorien und Schulen, Methoden, Entwicklung und Geschichte der Kommunikationswissenschaften

Freie Schlagwörter
automated content analysis; explainable AI; machine learning; PARAFAC2; tensor decomposition

Sprache Dokument
Englisch

Publikationsjahr
2025

Zeitschriftentitel
Media and Communication, 13 (2025)

Heftthema
AI, Media, and People: The Changing Landscape of User Experiences and Behaviors

ISSN
2183-2439

Status
Veröffentlichungsversion; begutachtet (peer reviewed)

Lizenz
Creative Commons - Namensnennung 4.0


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Home  |  Impressum  |  Betriebskonzept  |  Datenschutzerklärung
© 2007 - 2025 Social Science Open Access Repository (SSOAR).
Based on DSpace, Copyright (c) 2002-2022, DuraSpace. All rights reserved.