Dataset: Analysis of IFTTT Recipes to Study How Humans Use Internet-of-Things (IoT) Devices
Haoxiang Yu, Jie Hua, Christine Julien

TL;DR
This paper analyzes over 50,000 IFTTT recipes to understand human behaviors and expectations in IoT device usage, providing a valuable dataset for research in smart home automation and user behavior modeling.
Contribution
The authors collected and characterized a large dataset of IFTTT recipes, offering insights into human-IoT interaction patterns and expectations.
Findings
Identified common IoT automation patterns
Revealed diverse user behavior trends
Provided a dataset for future IoT research
Abstract
With the rapid development and usage of Internet-of-Things (IoT) and smart-home devices, researchers continue efforts to improve the "smartness" of those devices to address daily needs in people's lives. Such efforts usually begin with understanding evolving user behaviors on how humans utilize the devices and what they expect in terms of their behavior. However, while research efforts abound, there is a very limited number of datasets that researchers can use to both understand how people use IoT devices and to evaluate algorithms or systems for smart spaces. In this paper, we collect and characterize more than 50,000 recipes from the online If-This-Then-That (IFTTT) service to understand a seemingly straightforward but complicated question: "What kinds of behaviors do humans expect from their IoT devices?"
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