1. What have the authors contributed in "Margin-based active online learning techniques for cooperative spectrum sharing in cr networks" ?
In this paper, the authors consider a problem of acquiring accurate spectrum availability information in the Cooperative Spectrum Sensing ( CSS ) based Cognitive Radio Networks ( CRNs ), where a fusion center collects the sensing information from all the sensing nodes within the network, analyzes the information and determines the spectrum availability.. In this regard, the authors briefly review the existing AL techniques and adapt them to the considered CSS based CRNs.. More importantly, the authors propose a novel margin based active on-line learning algorithm that selects the instance to be queried and updates the classifier by using the Stochastic Gradient Descent ( SGD ) technique.. In this approach, whenever an unlabeled instance is presented, the proposed AL algorithm compares the margin of instance with a threshold to decide whether it should query a label or not.. Towards relaxing this requirement of large labeled data of supervised learning, the authors focus on Active Learning ( AL ), where the fusion center can query the label of the most uncertain cooperative sensing measurements.
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