On the Robustness of Random Forest Against Untargeted Data Poisoning: An Ensemble-Based Approach

Marco Anisetti, Claudio A. Ardagna, Alessandro Balestrucci, Nicola Bena, Ernesto Damiani, Chan Yeob Yeun

    Research output: Contribution to journalArticlepeer-review

    6 Scopus citations

    Abstract

    Machine learning is becoming ubiquitous. From finance to medicine, machine learning models are boosting decision-making processes and even outperforming humans in some tasks. This huge progress in terms of prediction quality does not however find a counterpart in the security of such models and corresponding predictions, where perturbations of fractions of the training set (poisoning) can seriously undermine the model accuracy. Research on poisoning attacks and defenses received increasing attention in the last decade, leading to several promising solutions aiming to increase the robustness of machine learning. Among them, ensemble-based defenses, where different models are trained on portions of the training set and their predictions are then aggregated, provide strong theoretical guarantees at the price of a linear overhead. Surprisingly, ensemble-based defenses, which do not pose any restrictions on the base model, have not been applied to increase the robustness of random forest. The work in this paper aims to fill in this gap by designing and implementing a novel hash-based ensemble approach that protects random forest against untargeted, random poisoning attacks. An extensive experimental evaluation measures the performance of our approach against a variety of attacks, as well as its sustainability in terms of resource consumption and performance, and compares it with a traditional monolithic model based on random forest. A final discussion presents our main findings and compares our approach with existing poisoning defenses targeting random forests.

    Original languageBritish English
    Pages (from-to)540-554
    Number of pages15
    JournalIEEE Transactions on Sustainable Computing
    Volume8
    Issue number4
    DOIs
    StatePublished - 1 Oct 2023

    Keywords

    • Ensemble
    • machine learning
    • poisoning
    • random forest
    • sustainability

    Fingerprint

    Dive into the research topics of 'On the Robustness of Random Forest Against Untargeted Data Poisoning: An Ensemble-Based Approach'. Together they form a unique fingerprint.

    Cite this