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What is fair? Exploring the artists' perspective on the fairness of
  music streaming platforms

What is fair? Exploring the artists' perspective on the fairness of music streaming platforms

4 June 2021
Andrés Ferraro
Xavier Serra
Christine Bauer
ArXivPDFHTML

Papers citing "What is fair? Exploring the artists' perspective on the fairness of music streaming platforms"

7 / 7 papers shown
Title
Algorithmic Collective Action in Recommender Systems: Promoting Songs by Reordering Playlists
Algorithmic Collective Action in Recommender Systems: Promoting Songs by Reordering Playlists
Joachim Baumann
Celestine Mendler-Dünner
81
2
0
17 Jan 2025
MOReGIn: Multi-Objective Recommendation at the Global and Individual
  Levels
MOReGIn: Multi-Objective Recommendation at the Global and Individual Levels
Elizabeth Gómez
David Contreras
Ludovico Boratto
Maria Salamó
137
2
0
23 Jan 2024
Let's Get It Started: Fostering the Discoverability of New Releases on
  Deezer
Let's Get It Started: Fostering the Discoverability of New Releases on Deezer
Léa Briand
Théo Bontempelli
Walid Bendada
M. Morlon
François Rigaud
Benjamin Chapus
Thomas Bouabça
Guillaume Salha-Galvan
20
4
0
05 Jan 2024
Combining piano performance dimensions for score difficulty
  classification
Combining piano performance dimensions for score difficulty classification
Pedro Ramoneda
Dasaem Jeong
V. Eremenko
Nazif Can Tamer
M. Miron
Xavier Serra
21
7
0
14 Jun 2023
The Role of Relevance in Fair Ranking
The Role of Relevance in Fair Ranking
Aparna Balagopalan
Abigail Z. Jacobs
Asia J. Biega
25
8
0
09 May 2023
A Stakeholder-Centered View on Fairness in Music Recommender Systems
A Stakeholder-Centered View on Fairness in Music Recommender Systems
Karlijn Dinnissen
Christine Bauer
46
27
0
08 Sep 2022
Improving fairness in machine learning systems: What do industry
  practitioners need?
Improving fairness in machine learning systems: What do industry practitioners need?
Kenneth Holstein
Jennifer Wortman Vaughan
Hal Daumé
Miroslav Dudík
Hanna M. Wallach
FaML
HAI
192
743
0
13 Dec 2018
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