Toward the Automatic Identification of Isotopies

Authors

Alice Fedotova
University of Bologna image/svg+xml
Alberto Barrón-Cedeño
University of Bologna image/svg+xml

Synopsis

The rise in processing power, combined with advancements in machine learning, has resulted in an increase in the use of computational methods for automated content analysis. Although human coding is more effective for handling complex variables at the core of media studies, audiovisual content is often understudied because analyzing it is difficult and time-consuming. The present work sets out to address this issue by experimenting with unimodal and multimodal transformer-based models in an attempt to automatically classify segments from the popular medical TV drama Grey’s Anatomy (ABC, 2005-) into three isotopies that are typical of the medical drama genre. To approach the task, this study explores two different classification approaches: the first approach is to employ a single multiclass classifier, while the second involves using the one-vs-the-rest approach to decompose the multiclass task with a series of binary classifiers. We investigate both these approaches in unimodal and multimodal settings, with the aim of identifying the most effective combination of the two. The results of the experiments can be considered promising, as the multiclass multimodal approach results in an F1 score of 0.723, a noticeable improvement over the F1 of 0.686 obtained by the one-vs-the-rest unimodal approach based on text.

Author Biographies

Alice Fedotova, University of Bologna

Alice Fedotova is a research fellow at the Department of Interpreting and Translation of the University of Bologna, within the framework of the project EPTIC and beyond: Enlargement and curation of complex multilingual corpora. Her research lies at the intersection of language resource management and automatic speech recognition. In 2023, she graduated in Translation and Technology at the University of Bologna with a thesis on multimodal and unimodal deep learning models for the analysis of medical dramas. This research work was the result of a collaboration with the Department of Arts at the same university. 

Alberto Barrón-Cedeño, University of Bologna

Alberto Barrón-Cedeño is associate professor at University of Bologna. He worked previously at QCRI (Qatar) and at the Technical University of Catalonia (Spain). His expertise lies in the intersection of natural language processing, information retrieval, and machine learning. He has been working on the (cross-language) assessment of text looking at different aspects such as originality (e.g., plagiarism detection) and intent (e.g., propaganda, hate).  He obtained his PhD on Aritificial Intelligence from The Technical University of Valencia (Spain).

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Published

December 23, 2023

License

Creative Commons License

This work is licensed under a Creative Commons Attribution 4.0 International License.

How to Cite

Fedotova, A., & Barrón-Cedeño, A. (2023). Toward the Automatic Identification of Isotopies. In S. Antonioni & M. Rocchi (Eds.), Investigating Medical Drama TV Series: Approaches and Perspectives. 14th Media Mutations International Conference (pp. 85-102). Media Mutations Publishing. https://doi.org/10.21428/93b7ef64.59f47006