An End-to-End Trainable Feature Selection-Forecasting Architecture Targeted at the Internet of Things

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Date

2021

Authors

Mert Nakıp
Kubilay Karakayali
Cüneyt Güzeliş
Volkan Rodoplu

Journal Title

Journal ISSN

Volume Title

Publisher

Institute of Electrical and Electronics Engineers Inc.

Open Access Color

GOLD

Green Open Access

Yes

OpenAIRE Downloads

6

OpenAIRE Views

3

Publicly Funded

No
Impulse
Top 10%
Influence
Average
Popularity
Top 10%

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Journal Issue

Abstract

We develop a novel end-to-end trainable feature selection-forecasting (FSF) architecture for predictive networks targeted at the Internet of Things (IoT). In contrast with the existing filter-based wrapper-based and embedded feature selection methods our architecture enables the automatic selection of features dynamically based on feature importance score calculation and gamma-gated feature selection units that are trained jointly and end-to-end with the forecaster. We compare the performance of our FSF architecture on the problem of forecasting IoT device traffic against the following existing (feature selection forecasting) technique pairs: Autocorrelation Function (ACF) Analysis of Variance (ANOVA) Recurrent Feature Elimination (RFE) and Ridge Regression methods for feature selection and Linear Regression Multi-Layer Perceptron (MLP) Long Short Term Memory (LSTM) 1 Dimensional Convolutional Neural Network (1D CNN) Autoregressive Integrated Moving Average (ARIMA) and Logistic Regression for forecasting. We show that our FSF architecture achieves either the best or close to the best performance among all of the competing techniques by virtue of its dynamic automatic feature selection capability. In addition we demonstrate that both the training time and the execution time of FSF are reasonable for IoT applications. This work represents a milestone for the development of predictive networks for IoT in smart cities of the near future. © 2021 Elsevier B.V. All rights reserved.

Description

Keywords

Feature Selection, Forecasting, Internet Of Things (iot), Machine Learning, Neural Network, Predictive Network, Smart City, Analysis Of Variance (anova), Autoregressive Moving Average Model, Convolutional Neural Networks, Forecasting, Internet Of Things, Logistic Regression, Long Short-term Memory, Memory Architecture, Multilayer Neural Networks, Network Architecture, Auto-regressive Integrated Moving Average, Autocorrelation Functions, Automatic Feature Selection, Automatic Selection, Embedded Feature Selections, Internet Of Thing (iot), Iot Applications, Multi Layer Perceptron, Feature Extraction, Analysis of variance (ANOVA), Autoregressive moving average model, Convolutional neural networks, Forecasting, Internet of things, Logistic regression, Long short-term memory, Memory architecture, Multilayer neural networks, Network architecture, Auto-regressive integrated moving average, Autocorrelation functions, Automatic feature selection, Automatic selection, Embedded feature selections, Internet of thing (IOT), IOT applications, Multi layer perceptron, Feature extraction, neural network, Internet of Things, Internet of Things (IoT), TK1-9971, feature selection, machine learning, predictive network, Performance evaluation, Feature extraction, Training, Computer architecture, Electrical engineering. Electronics. Nuclear engineering, Smart cities, Forecasting

Fields of Science

0211 other engineering and technologies, 02 engineering and technology, 0202 electrical engineering, electronic engineering, information engineering

Citation

WoS Q

Scopus Q

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OpenCitations Citation Count
13

Source

IEEE Access

Volume

9

Issue

Start Page

104011

End Page

104028
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Citations

Scopus : 15

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Mendeley Readers : 18

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