Articles producció científicaEnginyeria Informàtica i Matemàtiques

LFighter: Defending against the label-flipping attack in federated learning

  • Datos identificativos

    Identificador:  imarina:9332577
    Autores:  Jebreel, NM; Domingo-Ferrer, J; Snáchez, D; Blanco-Justicia, A
    Resumen:
    Federated learning (FL) provides autonomy and privacy by design to participating peers, who cooperatively build a machine learning (ML) model while keeping their private data in their devices. However, that same autonomy opens the door for malicious peers to poison the model by conducting either untargeted or targeted poisoning attacks. The label-flipping (LF) attack is a targeted poisoning attack where the attackers poison their training data by flipping the labels of some examples from one class (i.e., the source class) to another (i.e., the target class). Unfortunately, this attack is easy to perform and hard to detect, and it negatively impacts the performance of the global model. Existing defenses against LF are limited by assumptions on the distribution of the peers’ data and/or do not perform well with high-dimensional models. In this paper, we deeply investigate the LF attack behavior. We find that the contradicting objectives of attackers and honest peers on the source class examples are reflected on the parameter gradients corresponding to the neurons of the source and target classes in the output layer. This makes those gradients good discriminative features for the attack detection. Accordingly, we propose LFighter, a novel defense against the LF attack that first dynamically extracts those gradients from the peers’ local updates and then clusters the extracted gradients, analyzes the resulting clusters, and filters out potential bad updates before model aggregation. Extensive empirical analysis on three data sets shows the effectiveness of the proposed defense regardless of the data distribution or model dimensionality. Also, LFighter outperforms several state-of-the-art defenses by offering lower test error, higher overall accuracy, higher source class accuracy, lower attack success rate, and higher stability of the source class accuracy. Our code and data are available for reproducibility purposes at https://github.com/NajeebJebreel/LFighter.
  • Otros:

    Enlace a la fuente original: https://www.sciencedirect.com/science/article/abs/pii/S0893608023006421?via%3Dihub
    Referencia de l'ítem segons les normes APA: Jebreel, NM; Domingo-Ferrer, J; Snáchez, D; Blanco-Justicia, A (2024). LFighter: Defending against the label-flipping attack in federated learning. Neural Networks, 170(), 111-126. DOI: 10.1016/j.neunet.2023.11.019
    Referencia al articulo segun fuente origial: Neural Networks. 170 111-126
    DOI del artículo: 10.1016/j.neunet.2023.11.019
    Año de publicación de la revista: 2024
    Entidad: Universitat Rovira i Virgili
    Versión del articulo depositado: info:eu-repo/semantics/acceptedVersion
    Fecha de alta del registro: 2024-01-13
    Autor/es de la URV: Blanco Justicia, Alberto / Domingo Ferrer, Josep
    Departamento: Enginyeria Informàtica i Matemàtiques
    URL Documento de licencia: https://repositori.urv.cat/ca/proteccio-de-dades/
    Tipo de publicación: Journal Publications
    Autor según el artículo: Jebreel, NM; Domingo-Ferrer, J; Snáchez, D; Blanco-Justicia, A
    Acceso a la licencia de uso: https://creativecommons.org/licenses/by/3.0/es/
    Áreas temáticas: Química, Psychology, Psicología, Neurosciences, Matemática / probabilidade e estatística, Interdisciplinar, General medicine, Filosofia/teologia:subcomissão filosofia, Engenharias iv, Engenharias iii, Economia, Computer science, artificial intelligence, Cognitive neuroscience, Ciencias sociales, Ciências agrárias i, Ciência da computação, Biotecnología, Astronomia / física, Artificial intelligence
    Direcció de correo del autor: alberto.blanco@urv.cat, josep.domingo@urv.cat
  • Palabras clave:

    Security
    Poisoning attacks
    Label-flipping attacks
    Federated learning
    Deep learning models
    defense
    Artificial Intelligence
    Cognitive Neuroscience
    Computer Science
    Neurosciences
    Química
    Psychology
    Psicología
    Matemática / probabilidade e estatística
    Interdisciplinar
    General medicine
    Filosofia/teologia:subcomissão filosofia
    Engenharias iv
    Engenharias iii
    Economia
    Ciencias sociales
    Ciências agrárias i
    Ciência da computação
    Biotecnología
    Astronomia / física
  • Documentos:

  • Cerca a google

    Search to google scholar