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Defending a Music Recommender Against Hubness-Based Adversarial Attacks

Publikation: Beitrag in Buch/Bericht/KonferenzbandKonferenzbeitragBegutachtung

Abstract

Adversarial attacks can drastically degrade performance of recommenders and other machine learning systems, resulting in an increased demand for defence mechanisms. We present a new line of defence against attacks which exploit a vulnerability of recommenders that operate in high dimensional data spaces (the so-called hubness problem). We use a global data scaling method, namely Mutual Proximity (MP), to defend a real-world music recommender which previously was susceptible to attacks that inflated the number of times a particular song was recommended. We find that using MP as a defence greatly increases robustness of the recommender against a range of attacks, with success rates of attacks around 44% (before defence) dropping to less than 6% (after defence). Additionally, adversarial examples still able to fool the defended system do so at the price of noticeably lower audio quality as shown by a decreased average SNR.
OriginalspracheEnglisch
TitelProceedings of the Sound and Music Computing Conference (SMC 2022)
Herausgeber*innenRomain Michon, Laurent Pottier, Yann Orlarey
Seiten389-394
Seitenumfang6
ISBN (elektronisch)9782958412609
PublikationsstatusVeröffentlicht - Juni 2022

Publikationsreihe

NameProceedings of the Sound and Music Computing Conferences
ISSN (elektronisch)2518-3672

Wissenschaftszweige

  • 202002 Audiovisuelle Medien
  • 102 Informatik
  • 102001 Artificial Intelligence
  • 102003 Bildverarbeitung
  • 102015 Informationssysteme

JKU-Schwerpunkte

  • Digital Transformation

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