Recommender Systems and Over-the-Top Services: A Systematic Review Study (2010–2022)
Abstract
:1. Introduction
2. Background
3. Methods
3.1. Data Collection
3.2. Protocol and Coding
4. Results
4.1. What Research Objectives Have Been Pursued?
4.1.1. Data Management as a Strategic Practice in the Media Industry
4.1.2. The Impact of Recommender Systems on Viewers’ Experience
4.1.3. The Impact of Recommender Systems on Culture and Cultural Production
4.1.4. Algorithmic Bias, Inclusion, Diversity, and Digital Divides
4.1.5. Globalization, Power, and the Political Economy of OTT Services
4.2. What Concepts Have Been Developed and/or Applied?
4.3. What Methodologies Have Been Privileged?
4.4. Which OTT Platforms Have Received the Most Research Attention?
5. Future Directions
6. Final Remarks
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
References
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Thematic Category | Study | Year | Key Concept | Method | Participants | OTT Service |
---|---|---|---|---|---|---|
Data management as a strategic practice in the media industry | Fernández-Manzano et al. (2016) | 2016 | Business intelligence | Cross-sectional (bibliographic reviews, analysis of the data published by the firm itself, information provided by its staff in discussion forums, and analysis of data provided by specialized press) | N/A | Netflix |
Kelly (2019) | 2019 | Data divide; big data | General literature review | N/A | Netflix | |
Burroughs (2019) | 2019 | Streaming lore | Cross-sectional (general literature review and media content analysis) | N/A | Netflix | |
Fernández-Manzano and González-Vasco (2018) | 2018 | Privacy; security risks | General literature review | N/A | Netflix; Movistar+; HBO; Amazon Prime; Sky; Hulu; Disney; ESPN; Apple TV | |
Shapiro (2020) | 2020 | Data behavioralism; streaming prestige television; datalogic turn; algorithmic television; Netflixism; algorithmic turn | General literature review | N/A | Netflix | |
Fleischer (2020) | 2020 | Spotification | Media content analysis | N/A | N/A | |
Zhao (2021) | 2021 | Data-driven fandom | General literature review | N/A | iQiyi | |
Heredia-Ruiz et al. (2021) | 2021 | Flow TV | Content analysis | N/A | Netflix | |
McKenzie et al. (2022) | 2022 | Viewing metrics | Descriptive analysis of the three distinct datasets released by Netflix | N/A | Netflix | |
Klatt (2022) | 2022 | Conglomeration, flywheel economics, disruption | Case study | N/A | Amazon Prime Video | |
van Es (2022) | 2022 | The myth of big data; data-driven organization; data-driven mindset; data–human divide | Discourse analysis | N/A | Netflix | |
The impact of recommender systems on viewers’ experience | Siles et al. (2019) | 2019 | Mutual domestication | Interviews; inductive analysis of practices and profiles on the platform | 25 interviewees | Netflix |
Pilipets (2019) | 2019 | Binge-watching; attachment | General literature review; network analysis | N/A | Netflix | |
Kwon et al. (2020) | 2020 | Perceived diagnosticity; perceived serendipity | Online survey | 212 survey respondents | Netflix | |
Zarouali et al. (2021) | 2021 | Algorithmic awareness | Scale development and validation | 5 experts; 26 respondents | YouTube; Netflix | |
Benavides Almarza and García-Béjar (2021) | 2021 | Engagement | Survey | 574 respondents | Netflix | |
Shin et al. (2021) | 2021 | Algorithmic literacy; algorithmic divide | Online survey | 775 survey respondents | Amazon; Netflix | |
Eklund (2022) | 2022 | Personalization tactics, thumbnails as paratext | Pilot survey | 6 participants | Netflix | |
Ortega (2022) | 2022 | Planned differentiation | General literature review | N/A | Netflix | |
The impact of recommender systems in culture and cultural production | Hallinan and Striphas ([2014] 2016) | 2014 | Algorithmic culture | General literature review | N/A | Netflix |
McKelvey and Hunt (2019) | 2019 | Discoverability | General literature review | N/A | Netflix; YouTube; HBO; Amazon Prime | |
Navar-Gill (2020) | 2020 | Platformization of creativity | Cross-sectional (fieldwork, interviews, and discourse analysis) | 13 TV screenwriters | Netflix; Amazon Prime; Hulu | |
Borrajo et al. (2020) | 2020 | Taste communities; global niches | Case study | N/A | Netflix | |
Pajkovic (2022) | 2022 | Taste-making | Reverse engineering (taste personas) | N/A | Netflix | |
Gaw (2022) | 2022 | Algorithmic logics | Cross-sectional (reverse engineering: analysis of 60 documents and 100 media reports; and phenomenological approach: coding of 990 tweets) | N/A | Netflix | |
Kim (2022) | 2022 | Global SVoD players | Cross-sectional (semi-structured, in-depth interviews) | 15 bureaucrats, 10 industry insiders | Netflix | |
Algorithmic bias, inclusion, diversity, and digital divides | Meyerend (2023) | 2023 | Algorithmic representations of race | General literature review | N/A | Netflix |
Kennedy and Holcombe-James (2022) | 2022 | Digital divide; digital inclusion; digital exclusion | Cross-sectional (survey, and semi-structured interviews) | 46 households (evaluation). 3 households as examples in the paper | Netflix, Disney Plus | |
Hildén (2021) | 2021 | Exposure diversity; personalization; selective exposure; nudging | Thematic semi-structured interviews | 10 interviewees | Public service media in Europe | |
Khoo (2022) | 2022 | Inclusion strategy; algorithmic cultures | Case study | N/A | Netflix | |
Globalization, power, and the political economy of OTT services | Elkins (2019) | 2019 | Globalization; cosmopolitanism | Discourse analysis | N/A | Netflix |
Colbjørnsen (2021) | 2020 | Streaming network | General literature review; financial and other available information regarding four streaming services | N/A | Spotify; Apple Music; Netflix; Kindle | |
Bonini and Mazzoli (2022) | 2022 | Agonistic pluralism; conviviality | General literature review | N/A | N/A |
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Vicente, P.N.; Burnay, C.D. Recommender Systems and Over-the-Top Services: A Systematic Review Study (2010–2022). Journal. Media 2024, 5, 1259-1278. https://doi.org/10.3390/journalmedia5030080
Vicente PN, Burnay CD. Recommender Systems and Over-the-Top Services: A Systematic Review Study (2010–2022). Journalism and Media. 2024; 5(3):1259-1278. https://doi.org/10.3390/journalmedia5030080
Chicago/Turabian StyleVicente, Paulo Nuno, and Catarina Duff Burnay. 2024. "Recommender Systems and Over-the-Top Services: A Systematic Review Study (2010–2022)" Journalism and Media 5, no. 3: 1259-1278. https://doi.org/10.3390/journalmedia5030080
APA StyleVicente, P. N., & Burnay, C. D. (2024). Recommender Systems and Over-the-Top Services: A Systematic Review Study (2010–2022). Journalism and Media, 5(3), 1259-1278. https://doi.org/10.3390/journalmedia5030080