This article introduces elicitative interviewing techniques in the context of algorithmic feedback detection on social media about cultural consumption. This article presents elicitation interviewing methods to identify algorithmic feedback concerning cultural consumption on social media. The initial section will clarify the notion of influence in algorithm-driven consumption decisions on these platforms. The second part will underscore the necessity for finely nuanced qualitative methodologies to dissect the conceptual facets essential for analysis within such contexts of influence and dynamics. The main interviewing techniques for finalizing data collection with this intent will then be reviewed. The third part will present an example of a survey instrument that uses the elicitation component to achieve the essence of the feedback-loop between algorithms and cultural consumption choices that underlie the PRIN ALGOFEED survey. Finally, this detection phase's placement within the project and its role as an enhancer of the preceding collection and analysis stages will be elucidated, emphasizing the benefits of this decision and the potential pitfalls that necessitate proper attention and scrutiny.

Eliciting and Retrieving the Feedback-Loop. Exploring Elicitation Interview Techniques for Detecting Algorithmic Feedback on Social Media and Cultural Consumption / Punziano, Gabriella; Gandini, Alessandro; Caliandro, Alessandro; Airoldi, Massimo; Padricelli, Giuseppe Michele; Acampa, Suania; Trezza, Domenico; Crescentini, Noemi; Rama, Ilir. - (2024), pp. 347-357. (Intervento presentato al convegno 6th International Conference on Advanced Research Methods and Analytics - CARMA 2024 CARMA Conference tenutosi a Universitat Politècnica de València) [10.4995/CARMA2024.2024.17835].

Eliciting and Retrieving the Feedback-Loop. Exploring Elicitation Interview Techniques for Detecting Algorithmic Feedback on Social Media and Cultural Consumption

Gabriella Punziano;Giuseppe Michele Padricelli;Suania Acampa;Domenico Trezza;Noemi Crescentini;
2024

Abstract

This article introduces elicitative interviewing techniques in the context of algorithmic feedback detection on social media about cultural consumption. This article presents elicitation interviewing methods to identify algorithmic feedback concerning cultural consumption on social media. The initial section will clarify the notion of influence in algorithm-driven consumption decisions on these platforms. The second part will underscore the necessity for finely nuanced qualitative methodologies to dissect the conceptual facets essential for analysis within such contexts of influence and dynamics. The main interviewing techniques for finalizing data collection with this intent will then be reviewed. The third part will present an example of a survey instrument that uses the elicitation component to achieve the essence of the feedback-loop between algorithms and cultural consumption choices that underlie the PRIN ALGOFEED survey. Finally, this detection phase's placement within the project and its role as an enhancer of the preceding collection and analysis stages will be elucidated, emphasizing the benefits of this decision and the potential pitfalls that necessitate proper attention and scrutiny.
2024
9788413962016
Eliciting and Retrieving the Feedback-Loop. Exploring Elicitation Interview Techniques for Detecting Algorithmic Feedback on Social Media and Cultural Consumption / Punziano, Gabriella; Gandini, Alessandro; Caliandro, Alessandro; Airoldi, Massimo; Padricelli, Giuseppe Michele; Acampa, Suania; Trezza, Domenico; Crescentini, Noemi; Rama, Ilir. - (2024), pp. 347-357. (Intervento presentato al convegno 6th International Conference on Advanced Research Methods and Analytics - CARMA 2024 CARMA Conference tenutosi a Universitat Politècnica de València) [10.4995/CARMA2024.2024.17835].
File in questo prodotto:
File Dimensione Formato  
carma elicit.pdf

accesso aperto

Tipologia: Versione Editoriale (PDF)
Licenza: Creative commons
Dimensione 328.05 kB
Formato Adobe PDF
328.05 kB Adobe PDF Visualizza/Apri

I documenti in IRIS sono protetti da copyright e tutti i diritti sono riservati, salvo diversa indicazione.

Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11588/965868
Citazioni
  • ???jsp.display-item.citation.pmc??? ND
  • Scopus ND
  • ???jsp.display-item.citation.isi??? ND
social impact