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http://arks.princeton.edu/ark:/88435/dsp017m01bp54s
Title: | Kernel-Based Outlier Detection For IoT Networks |
Authors: | Kelly, Adam |
Advisors: | Vanderbei, Robert |
Department: | Operations Research and Financial Engineering |
Class Year: | 2019 |
Abstract: | Due to the increasing number of Internet of Things (IoT) devices surfacing, the network security of IoT devices is becoming an increasingly complex problem. With a growth in the number of devices on the market, attacks aimed at and utilizing these devices are also rising commensurately. As a result, being able to secure IoT networks and devices by finding effective ways to monitor and protect them is necessary. This project provides a novel method from unsupervised machine learning literature to identify anomalies in IoT networks. Anomalies are expected to be harmful activity in networks and are most commonly attacks by a botnet, privacy leaks, or intrusions. In current literature, there exist a multitude of different methods aimed at accomplishing outlier detection to improve the security of IoT networks, each with different capabilities. In this thesis, Kernel K-means is proposed as a basis for a generalizable outlier detection method for network security applications. It is run on a sample of benign network data in order to capture regular activity. This is then compared to potentially anomalous data, containing a combination of attack data and normal data to be classified with respect to the benign clustering. Due to the limited assumptions necessary to use Kernel K-means and its ability to capture highly irregular geometry in models, it is well suited to this problem and this is demonstrated in both toy examples and real network data. |
URI: | http://arks.princeton.edu/ark:/88435/dsp017m01bp54s |
Type of Material: | Princeton University Senior Theses |
Language: | en |
Appears in Collections: | Operations Research and Financial Engineering, 2000-2020 |
Files in This Item:
File | Description | Size | Format | |
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KELLY-ADAM-THESIS.pdf | 514.43 kB | Adobe PDF | Request a copy |
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