A Strong Machine Learning Classifier and Decision Stumps Based Hybrid AdaBoost Classification Algorithm for Cognitive Radios

Machine learning (ML) based classification methods have been viewed as one kind of alternative solution for cooperative spectrum sensing (CSS) in recent years. In this paper, ML techniques based CSS algorithms are investigated for cognitive radio networks (CRN). Specifically, a strong machine learni...

Full description

Bibliographic Details
Main Authors: Siji Chen, Bin Shen, Xin Wang, Sang-Jo Yoo
Format: Article
Language:English
Published: MDPI AG 2019-11-01
Series:Sensors
Subjects:
Online Access:https://www.mdpi.com/1424-8220/19/23/5077
id doaj-7cc1b83f71c24784adc5446c49e552bf
record_format Article
spelling doaj-7cc1b83f71c24784adc5446c49e552bf2020-11-25T01:58:53ZengMDPI AGSensors1424-82202019-11-011923507710.3390/s19235077s19235077A Strong Machine Learning Classifier and Decision Stumps Based Hybrid AdaBoost Classification Algorithm for Cognitive RadiosSiji Chen0Bin Shen1Xin Wang2Sang-Jo Yoo3School of Communication and Information Engineering (SCIE), Chongqing University of Posts and Telecommunications (CQUPT), Chongqing 400-065, ChinaSchool of Communication and Information Engineering (SCIE), Chongqing University of Posts and Telecommunications (CQUPT), Chongqing 400-065, ChinaSchool of Communication and Information Engineering (SCIE), Chongqing University of Posts and Telecommunications (CQUPT), Chongqing 400-065, ChinaDepartment of Information and Communication Engineering, Inha University, Incheon 402-751, KoreaMachine learning (ML) based classification methods have been viewed as one kind of alternative solution for cooperative spectrum sensing (CSS) in recent years. In this paper, ML techniques based CSS algorithms are investigated for cognitive radio networks (CRN). Specifically, a strong machine learning classifier (MLC) and decision stumps (DS) based adaptive boosting (AdaBoost) classification mechanism is proposed for pattern classification of the primary user’s behavior in the network. The conventional AdaBoost algorithm only combines multiple sub-classifiers and produces a strong weight based on their weights in classification. Taking into account the fact that the strong MLC and the weak DS serve as different sub-classifiers in classification, we propose employing a strong MLC as the first-stage classifier and DS as the second-stage classifiers, to eventually determine the class that the spectrum energy vector belongs to. We verify in simulations that the proposed hybrid AdaBoost algorithms are capable of achieving a higher detection probability than the conventional ML based spectrum sensing algorithms and the conventional hard fusion based CSS schemes.https://www.mdpi.com/1424-8220/19/23/5077machine learningclassifierdecision stumpadaboostenergy vectorcooperative spectrum sensingcognitive radio network (crn)
collection DOAJ
language English
format Article
sources DOAJ
author Siji Chen
Bin Shen
Xin Wang
Sang-Jo Yoo
spellingShingle Siji Chen
Bin Shen
Xin Wang
Sang-Jo Yoo
A Strong Machine Learning Classifier and Decision Stumps Based Hybrid AdaBoost Classification Algorithm for Cognitive Radios
Sensors
machine learning
classifier
decision stump
adaboost
energy vector
cooperative spectrum sensing
cognitive radio network (crn)
author_facet Siji Chen
Bin Shen
Xin Wang
Sang-Jo Yoo
author_sort Siji Chen
title A Strong Machine Learning Classifier and Decision Stumps Based Hybrid AdaBoost Classification Algorithm for Cognitive Radios
title_short A Strong Machine Learning Classifier and Decision Stumps Based Hybrid AdaBoost Classification Algorithm for Cognitive Radios
title_full A Strong Machine Learning Classifier and Decision Stumps Based Hybrid AdaBoost Classification Algorithm for Cognitive Radios
title_fullStr A Strong Machine Learning Classifier and Decision Stumps Based Hybrid AdaBoost Classification Algorithm for Cognitive Radios
title_full_unstemmed A Strong Machine Learning Classifier and Decision Stumps Based Hybrid AdaBoost Classification Algorithm for Cognitive Radios
title_sort strong machine learning classifier and decision stumps based hybrid adaboost classification algorithm for cognitive radios
publisher MDPI AG
series Sensors
issn 1424-8220
publishDate 2019-11-01
description Machine learning (ML) based classification methods have been viewed as one kind of alternative solution for cooperative spectrum sensing (CSS) in recent years. In this paper, ML techniques based CSS algorithms are investigated for cognitive radio networks (CRN). Specifically, a strong machine learning classifier (MLC) and decision stumps (DS) based adaptive boosting (AdaBoost) classification mechanism is proposed for pattern classification of the primary user’s behavior in the network. The conventional AdaBoost algorithm only combines multiple sub-classifiers and produces a strong weight based on their weights in classification. Taking into account the fact that the strong MLC and the weak DS serve as different sub-classifiers in classification, we propose employing a strong MLC as the first-stage classifier and DS as the second-stage classifiers, to eventually determine the class that the spectrum energy vector belongs to. We verify in simulations that the proposed hybrid AdaBoost algorithms are capable of achieving a higher detection probability than the conventional ML based spectrum sensing algorithms and the conventional hard fusion based CSS schemes.
topic machine learning
classifier
decision stump
adaboost
energy vector
cooperative spectrum sensing
cognitive radio network (crn)
url https://www.mdpi.com/1424-8220/19/23/5077
work_keys_str_mv AT sijichen astrongmachinelearningclassifieranddecisionstumpsbasedhybridadaboostclassificationalgorithmforcognitiveradios
AT binshen astrongmachinelearningclassifieranddecisionstumpsbasedhybridadaboostclassificationalgorithmforcognitiveradios
AT xinwang astrongmachinelearningclassifieranddecisionstumpsbasedhybridadaboostclassificationalgorithmforcognitiveradios
AT sangjoyoo astrongmachinelearningclassifieranddecisionstumpsbasedhybridadaboostclassificationalgorithmforcognitiveradios
AT sijichen strongmachinelearningclassifieranddecisionstumpsbasedhybridadaboostclassificationalgorithmforcognitiveradios
AT binshen strongmachinelearningclassifieranddecisionstumpsbasedhybridadaboostclassificationalgorithmforcognitiveradios
AT xinwang strongmachinelearningclassifieranddecisionstumpsbasedhybridadaboostclassificationalgorithmforcognitiveradios
AT sangjoyoo strongmachinelearningclassifieranddecisionstumpsbasedhybridadaboostclassificationalgorithmforcognitiveradios
_version_ 1724967479126523904