Navigating Discoverability in the Digital Era: A Theoretical Framework
- URL: http://arxiv.org/abs/2410.09917v1
- Date: Sun, 13 Oct 2024 16:50:50 GMT
- Title: Navigating Discoverability in the Digital Era: A Theoretical Framework
- Authors: Rebecca Salganik, Valdy Wiratama, Heritiana Ranaivoson, Adelaida Afilipoaie,
- Abstract summary: The proliferation of digital technologies in the distribution of digital content has prompted concerns about the effects on cultural diversity in the digital era.
In this work we present the discovery ecosystem, consisting of six individual, interconnected components, that encompass the pathway of discovery from start to finish.
- Score: 0.21633814245185035
- License: http://creativecommons.org/publicdomain/zero/1.0/
- Abstract: The proliferation of digital technologies in the distribution of digital content has prompted concerns about the effects on cultural diversity in the digital era. The concept of discoverability has been presented as a theoretical tool through which to consider the likelihood that content will be interacted with. The multifaceted nature of this broad theme has been explored through a variety of domains that explore the ripple effects of platformization, each with its own unique lexicography. However, there is yet to be a unified framework through which to consider the complex pathways of discovery. In this work we present the discovery ecosystem, consisting of six individual, interconnected components, that encompass the pathway of discovery from start to finish
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