Javascript must be enabled to continue!
Impacting Robustness in Deep Learning-Based NIDS through Poisoning Attacks
View through CrossRef
The rapid expansion and pervasive reach of the internet in recent years have raised concerns about evolving and adaptable online threats, particularly with the extensive integration of Machine Learning (ML) systems into our daily routines. These systems are increasingly becoming targets of malicious attacks that seek to distort their functionality through the concept of poisoning. Such attacks aim to warp the intended operations of these services, deviating them from their true purpose. Poisoning renders systems susceptible to unauthorized access, enabling illicit users to masquerade as legitimate ones, compromising the integrity of smart technology-based systems like Network Intrusion Detection Systems (NIDSs). Therefore, it is necessary to continue working on studying the resilience of deep learning network systems while there are poisoning attacks, specifically interfering with the integrity of data conveyed over networks. This paper explores the resilience of deep learning (DL)—based NIDSs against untethered white-box attacks. More specifically, it introduces a designed poisoning attack technique geared especially for deep learning by adding various amounts of altered instances into training datasets at diverse rates and then investigating the attack’s influence on model performance. We observe that increasing injection rates (from 1% to 50%) and random amplified distribution have slightly affected the overall performance of the system, which is represented by accuracy (0.93) at the end of the experiments. However, the rest of the results related to the other measures, such as PPV (0.082), FPR (0.29), and MSE (0.67), indicate that the data manipulation poisoning attacks impact the deep learning model. These findings shed light on the vulnerability of DL-based NIDS under poisoning attacks, emphasizing the significance of securing such systems against these sophisticated threats, for which defense techniques should be considered. Our analysis, supported by experimental results, shows that the generated poisoned data have significantly impacted the model performance and are hard to be detected.
Title: Impacting Robustness in Deep Learning-Based NIDS through Poisoning Attacks
Description:
The rapid expansion and pervasive reach of the internet in recent years have raised concerns about evolving and adaptable online threats, particularly with the extensive integration of Machine Learning (ML) systems into our daily routines.
These systems are increasingly becoming targets of malicious attacks that seek to distort their functionality through the concept of poisoning.
Such attacks aim to warp the intended operations of these services, deviating them from their true purpose.
Poisoning renders systems susceptible to unauthorized access, enabling illicit users to masquerade as legitimate ones, compromising the integrity of smart technology-based systems like Network Intrusion Detection Systems (NIDSs).
Therefore, it is necessary to continue working on studying the resilience of deep learning network systems while there are poisoning attacks, specifically interfering with the integrity of data conveyed over networks.
This paper explores the resilience of deep learning (DL)—based NIDSs against untethered white-box attacks.
More specifically, it introduces a designed poisoning attack technique geared especially for deep learning by adding various amounts of altered instances into training datasets at diverse rates and then investigating the attack’s influence on model performance.
We observe that increasing injection rates (from 1% to 50%) and random amplified distribution have slightly affected the overall performance of the system, which is represented by accuracy (0.
93) at the end of the experiments.
However, the rest of the results related to the other measures, such as PPV (0.
082), FPR (0.
29), and MSE (0.
67), indicate that the data manipulation poisoning attacks impact the deep learning model.
These findings shed light on the vulnerability of DL-based NIDS under poisoning attacks, emphasizing the significance of securing such systems against these sophisticated threats, for which defense techniques should be considered.
Our analysis, supported by experimental results, shows that the generated poisoned data have significantly impacted the model performance and are hard to be detected.
Related Results
Manipulating Recommender Systems: A Survey of Poisoning Attacks and Countermeasures
Manipulating Recommender Systems: A Survey of Poisoning Attacks and Countermeasures
Recommender systems have become an integral part of online services due to their ability to help users locate specific information in a sea of data. However, existing studies show ...
Poisoning Patterns, Causes, and Implications for Hospital-Centric Interventions- A Retrospective Single-Centre Observational Study from India
Poisoning Patterns, Causes, and Implications for Hospital-Centric Interventions- A Retrospective Single-Centre Observational Study from India
Poisoning poses a significant public health concern in India, with rising trends observed over recent years. The study aims to observe patterns of demographic characteristics, pres...
A Framework for Detecting Distributed Denial of Services Attack in Cloud Enviorment using Machine Learning Techniques
A Framework for Detecting Distributed Denial of Services Attack in Cloud Enviorment using Machine Learning Techniques
Distributed Denial of Service (DDoS) persists in Online Applications as One of those significant threats. Attackers can execute DDoS by the more natural steps. Then with the high p...
Abnormal Brain Functional Network Dynamics in Acute CO Poisoning
Abnormal Brain Functional Network Dynamics in Acute CO Poisoning
Aims: Carbon monoxide poisoning is a common condition that can cause severe neurological sequelae. Previous studies have revealed that functional connectivity in carbon monoxide po...
The Critical Role of NIDSNIPS in Protecting Internet Infrastructure
The Critical Role of NIDSNIPS in Protecting Internet Infrastructure
With the rapid development and wide application of the Internet, network security has become an important issue in modern society. Network attacks such as network worms, botnets an...
Deception-Based Security Framework for IoT: An Empirical Study
Deception-Based Security Framework for IoT: An Empirical Study
<p><b>A large number of Internet of Things (IoT) devices in use has provided a vast attack surface. The security in IoT devices is a significant challenge considering c...
Network Based Intrusion Detection System Using Weighted Product Model (WPM)
Network Based Intrusion Detection System Using Weighted Product Model (WPM)
A security technology called a network-based intrusion detection system (NIDS) was created to safeguard computer networks against unauthorised access and criminal activity. This te...
A Novel Approach to Network Intrusion Detection System using Deep Learning for SDN: Futuristic Approach
A Novel Approach to Network Intrusion Detection System using Deep Learning for SDN: Futuristic Approach
Software-Defined Networking (SDN) is the next generation to change the architecture of traditional networks. SDN is one of the promising solutions to change the architecture of int...


