Evaluation of an Anomaly Detector for Routers using Parameterizable Malware in an IoT Ecosystem

10/29/2021
by   John Carter, et al.
0

This work explores the evaluation of a machine learning anomaly detector using custom-made parameterizable malware in an Internet of Things (IoT) Ecosystem. It is assumed that the malware has infected, and resides on, the Linux router that serves other devices on the network, as depicted in Figure 1. This IoT Ecosystem was developed as a testbed to evaluate the efficacy of a behavior-based anomaly detector. The malware consists of three types of custom-made malware: ransomware, cryptominer, and keylogger, which all have exfiltration capabilities to the network. The parameterization of the malware gives the malware samples multiple degrees of freedom, specifically relating to the rate and size of data exfiltration. The anomaly detector uses feature sets crafted from system calls and network traffic, and uses a Support Vector Machine (SVM) for behavioral-based anomaly detection. The custom-made malware is used to evaluate the situations where the SVM is effective, as well as the situations where it is not effective.

READ FULL TEXT
research
09/09/2021

Detecting Attacks on IoT Devices using Featureless 1D-CNN

The generalization of deep learning has helped us, in the past, address ...
research
03/26/2021

Understanding Internet of Things Malware by Analyzing Endpoints in their Static Artifacts

The lack of security measures among the Internet of Things (IoT) devices...
research
06/24/2019

EDIMA: Early Detection of IoT Malware Network Activity Using Machine Learning Techniques

The widespread adoption of Internet of Things has led to many security i...
research
04/02/2023

MalIoT: Scalable and Real-time Malware Traffic Detection for IoT Networks

The machine learning approach is vital in Internet of Things (IoT) malwa...
research
09/26/2016

One-Class SVM with Privileged Information and its Application to Malware Detection

A number of important applied problems in engineering, finance and medic...
research
05/16/2018

Towards Malware Detection via CPU Power Consumption: Data Collection Design and Analytics (Extended Version)

This paper presents an experimental design and data analytics approach a...

Please sign up or login with your details

Forgot password? Click here to reset