NILGMar 24, 2015

Analysis of Spectrum Occupancy Using Machine Learning Algorithms

arXiv:1503.07104v1107 citations
Originality Synthesis-oriented
AI Analysis

This work addresses spectrum allocation and sharing for system designers, but it is incremental as it combines existing methods.

The paper tackled spectrum occupancy analysis by comparing machine learning algorithms, finding that SVM achieved the highest classification accuracy, and proposed a hybrid SVM-FFA method that outperformed others.

In this paper, we analyze the spectrum occupancy using different machine learning techniques. Both supervised techniques (naive Bayesian classifier (NBC), decision trees (DT), support vector machine (SVM), linear regression (LR)) and unsupervised algorithm (hidden markov model (HMM)) are studied to find the best technique with the highest classification accuracy (CA). A detailed comparison of the supervised and unsupervised algorithms in terms of the computational time and classification accuracy is performed. The classified occupancy status is further utilized to evaluate the probability of secondary user outage for the future time slots, which can be used by system designers to define spectrum allocation and spectrum sharing policies. Numerical results show that SVM is the best algorithm among all the supervised and unsupervised classifiers. Based on this, we proposed a new SVM algorithm by combining it with fire fly algorithm (FFA), which is shown to outperform all other algorithms.

Foundations

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