Lightweight Dataset for Decoy Development to Improve IoT Security
David Weissman, Anura P. Jayasumana

TL;DR
This paper presents IoT Flex Data, a lightweight, real-world dataset capturing normal and attack traffic in smart home scenarios, aimed at developing decoys to enhance IoT security.
Contribution
The paper introduces a novel, real-world IoT dataset focused on smart home scenarios, including attack data, to support decoy development and improve IoT security.
Findings
Dataset includes normal and attack traffic in smart home settings
Provides detailed network configuration and data collection steps
Facilitates decoy creation for IoT security enhancement
Abstract
In this paper, the authors introduce a lightweight dataset to interpret IoT (Internet of Things) activity in preparation to create decoys by replicating known data traffic patterns. The dataset comprises different scenarios in a real network setting. This paper also surveys information related to other IoT datasets along with the characteristics that make our data valuable. Many of the datasets available are synthesized (simulated) or often address industrial applications, while the IoT dataset we present is based on likely smart home scenarios. Further, there are only a limited number of IoT datasets that contain both normal operation and attack scenarios. A discussion of the network configuration and the steps taken to prepare this dataset are presented as we prepare to create replicative patterns for decoy purposes. The dataset, which we refer to as IoT Flex Data, consists of four…
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