Automation of Feature Engineering for IoT Analytics
Snehasis Banerjee, Tanushyam Chattopadhyay, Arpan Pal, Utpal Garain

TL;DR
This paper introduces an automated, interpretable feature selection approach for IoT analytics that significantly reduces project timelines from months to days without compromising decision accuracy.
Contribution
The paper presents a novel automation method for feature selection in IoT analytics, improving efficiency and reducing reliance on niche skills.
Findings
Automation reduces feature selection time from months to days.
Decision accuracy remains unaffected by automation.
Compared favorably against PCA and MLP models.
Abstract
This paper presents an approach for automation of interpretable feature selection for Internet Of Things Analytics (IoTA) using machine learning (ML) techniques. Authors have conducted a survey over different people involved in different IoTA based application development tasks. The survey reveals that feature selection is the most time consuming and niche skill demanding part of the entire workflow. This paper shows how feature selection is successfully automated without sacrificing the decision making accuracy and thereby reducing the project completion time and cost of hiring expensive resources. Several pattern recognition principles and state of art (SoA) ML techniques are followed to design the overall approach for the proposed automation. Three data sets are considered to establish the proof-of-concept. Experimental results show that the proposed automation is able to reduce the…
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