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Bibliographic Details
Main Authors: Surendrababu, Hema Karnam, Nagaraj, Nithin
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2505.03208
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author Surendrababu, Hema Karnam
Nagaraj, Nithin
author_facet Surendrababu, Hema Karnam
Nagaraj, Nithin
contents The advancement and adoption of Artificial Intelligence (AI) models across diverse domains have transformed the way we interact with technology. However, it is essential to recognize that while AI models have introduced remarkable advancements, they also present inherent challenges such as their vulnerability to adversarial attacks. The current work proposes a novel defense mechanism against one of the most significant attack vectors of AI models - the backdoor attack via data poisoning of training datasets. In this defense technique, an integrated approach that combines chaos theory with manifold learning is proposed. A novel metric - Precision Matrix Dependency Score (PDS) that is based on the conditional variance of Neurochaos features is formulated. The PDS metric has been successfully evaluated to distinguish poisoned samples from non-poisoned samples across diverse datasets.
format Preprint
id arxiv_https___arxiv_org_abs_2505_03208
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle A Chaos Driven Metric for Backdoor Attack Detection
Surendrababu, Hema Karnam
Nagaraj, Nithin
Cryptography and Security
The advancement and adoption of Artificial Intelligence (AI) models across diverse domains have transformed the way we interact with technology. However, it is essential to recognize that while AI models have introduced remarkable advancements, they also present inherent challenges such as their vulnerability to adversarial attacks. The current work proposes a novel defense mechanism against one of the most significant attack vectors of AI models - the backdoor attack via data poisoning of training datasets. In this defense technique, an integrated approach that combines chaos theory with manifold learning is proposed. A novel metric - Precision Matrix Dependency Score (PDS) that is based on the conditional variance of Neurochaos features is formulated. The PDS metric has been successfully evaluated to distinguish poisoned samples from non-poisoned samples across diverse datasets.
title A Chaos Driven Metric for Backdoor Attack Detection
topic Cryptography and Security
url https://arxiv.org/abs/2505.03208