Decision trees: from efficient prediction to responsible AI
This article provides a birds-eye view on the role of decision trees in machine learning and
data science over roughly four decades. It sketches the evolution of decision tree research …
data science over roughly four decades. It sketches the evolution of decision tree research …
Constraint enforcement on decision trees: A survey
Decision trees have the particularity of being machine learning models that are visually easy
to interpret and understand. Therefore, they are primarily suited for sensitive domains like …
to interpret and understand. Therefore, they are primarily suited for sensitive domains like …
[PDF][PDF] FlowLens: Enabling Efficient Flow Classification for ML-based Network Security Applications.
An emerging trend in network security consists in the adoption of programmable switches for
performing various security tasks in large-scale, high-speed networks. However, since …
performing various security tasks in large-scale, high-speed networks. However, since …
Sok: Explainable machine learning for computer security applications
Explainable Artificial Intelligence (XAI) aims to improve the transparency of machine
learning (ML) pipelines. We systematize the increasingly growing (but fragmented) …
learning (ML) pipelines. We systematize the increasingly growing (but fragmented) …
Decision-based evasion attacks on tree ensemble classifiers
Learning-based classifiers are found to be susceptible to adversarial examples. Recent
studies suggested that ensemble classifiers tend to be more robust than single classifiers …
studies suggested that ensemble classifiers tend to be more robust than single classifiers …
Efficient training of robust decision trees against adversarial examples
Current state-of-the-art algorithms for training robust decision trees have high runtime costs
and require hours to run. We present GROOT, an efficient algorithm for training robust …
and require hours to run. We present GROOT, an efficient algorithm for training robust …
Fast provably robust decision trees and boosting
Learning with adversarial robustness has been a challenge in contemporary machine
learning, and recent years have witnessed increasing attention on robust decision trees and …
learning, and recent years have witnessed increasing attention on robust decision trees and …
Abstract interpretation of decision tree ensemble classifiers
F Ranzato, M Zanella - Proceedings of the AAAI Conference on Artificial …, 2020 - ojs.aaai.org
We study the problem of formally and automatically verifying robustness properties of
decision tree ensemble classifiers such as random forests and gradient boosted decision …
decision tree ensemble classifiers such as random forests and gradient boosted decision …
Robust optimal classification trees against adversarial examples
Decision trees are a popular choice of explainable model, but just like neural networks, they
suffer from adversarial examples. Existing algorithms for fitting decision trees robust against …
suffer from adversarial examples. Existing algorithms for fitting decision trees robust against …
Transferable adversarial robustness for categorical data via universal robust embeddings
Research on adversarial robustness is primarily focused on image and text data. Yet, many
scenarios in which lack of robustness can result in serious risks, such as fraud detection …
scenarios in which lack of robustness can result in serious risks, such as fraud detection …