Many methods have been developed to understand complex predictive models and high expectations are placed on post-hoc model explainability. It turns out that such explanations are not robust nor trustworthy, and they can be fooled. This paper presents techniques for attacking Partial Dependence (plots, profiles, PDP), which are among the most popular methods of explaining any predictive model trained on tabular data. We showcase that PD can be manipulated in an adversarial manner, which is alarming, especially in financial or medical applications where auditability became a must-have trait supporting black-box machine learning. The fooling is performed via poisoning the data to bend and shift explanations in the desired direction using gene...
With recent advances in natural language processing, rationalization becomes an essential self-expla...
Robustness has become an important consideration in deep learning. With the help of explainable AI, ...
Artificial Intelligence (AI) has made a huge impact on our everyday lives. As a dominant branch of A...
Transparency of algorithmic systems is an important area of research, which has been discussed as a ...
Machine learning models are often trained on sensitive and proprietary datasets. Yet what -- and und...
We investigate an attack on a machine learning model that predicts whether a person or household wil...
Simulations are ubiquitous in machine learning. Especially in graph learning, simulations of Directe...
As machine learning becomes widely used for automated decisions, attackers have strong incentives to...
We study indiscriminate poisoning for linear learners where an adversary injects a few crafted examp...
Data poisoning attacks aim at manipulating model behaviors through distorting training data. Previou...
Existing model poisoning attacks to federated learning assume that an attacker has access to a large...
Deep learning is a machine learning technique that enables computers to learn directly from images, ...
BackgroundMachine learning (ML) approaches are a crucial component of modern data analysis in many f...
We introduce a model-agnostic algorithm for manipulating SHapley Additive exPlanations (SHAP) with p...
Recent studies have revealed that Machine Learning (ML) models are vulnerable to adversarial perturb...
With recent advances in natural language processing, rationalization becomes an essential self-expla...
Robustness has become an important consideration in deep learning. With the help of explainable AI, ...
Artificial Intelligence (AI) has made a huge impact on our everyday lives. As a dominant branch of A...
Transparency of algorithmic systems is an important area of research, which has been discussed as a ...
Machine learning models are often trained on sensitive and proprietary datasets. Yet what -- and und...
We investigate an attack on a machine learning model that predicts whether a person or household wil...
Simulations are ubiquitous in machine learning. Especially in graph learning, simulations of Directe...
As machine learning becomes widely used for automated decisions, attackers have strong incentives to...
We study indiscriminate poisoning for linear learners where an adversary injects a few crafted examp...
Data poisoning attacks aim at manipulating model behaviors through distorting training data. Previou...
Existing model poisoning attacks to federated learning assume that an attacker has access to a large...
Deep learning is a machine learning technique that enables computers to learn directly from images, ...
BackgroundMachine learning (ML) approaches are a crucial component of modern data analysis in many f...
We introduce a model-agnostic algorithm for manipulating SHapley Additive exPlanations (SHAP) with p...
Recent studies have revealed that Machine Learning (ML) models are vulnerable to adversarial perturb...
With recent advances in natural language processing, rationalization becomes an essential self-expla...
Robustness has become an important consideration in deep learning. With the help of explainable AI, ...
Artificial Intelligence (AI) has made a huge impact on our everyday lives. As a dominant branch of A...