11An Economical Machine Learning Approach for Anomaly Detection in IoT Environment

Ambika N.

Department of Computer Science and Applications, St.Francis College, Bangalore, Karnataka, India

Abstract

Internet of Things (IoT) are gadgets of different capabilities provided with same platform to communicate with each other. These devices connect with each other through internet to accomplish a task. These unsupervised devices are used in many applications. A ransomware assault in IoT can be all the more obliterating as it might influence a whole scene of security administrations. Hence, precautions are to be taken to secure the devices as well as the data that is being transmitted among themselves. The threats have to be detected at the earlier stage to ensure complete security to the communication. The work is an improved version of the previous machine learning architecture. The proposal analyzes the communicating data between these devices and aids in choosing an economical appropriate measure to secure the system.

Keywords: Anomaly detection, dimensionality reduction, imputation, IoT, missing value, similarity, economical approach

11.1 Introduction

The Internet of Things (IoT) [1] is shaped by associating physical gadgets. IoT gadgets incorporate normal items from everyday life. These gadgets associate with one another to make human lives simpler. IoT gadgets are conveyed in different situations. IoT gadgets are set up in places like homes [2], workplaces, emergency clinics ...

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