6533b7dcfe1ef96bd1272910
RESEARCH PRODUCT
Optimal gossip algorithm for distributed consensus SVM training in wireless sensor networks
K. FlouriBaltasar Beferull-lozanoPanagiotis Tsakalidessubject
Support vector machineStatistical classificationConsensusDistributed algorithmComputer scienceAlgorithm designData miningcomputer.software_genreWireless sensor networkcomputerInformation exchangeFusion centerdescription
In this paper, we consider the distributed training of a SVM using measurements collected by the nodes of aWireless Sensor Network in order to achieve global consensus with the minimum possible inter-node communications for data exchange. We derive a novel mathematical characterization for the optimal selection of partial information that neighboring sensors should exchange in order to achieve consensus in the network. We provide a selection function which ranks the training vectors in order of importance in the learning process. The amount of information exchange can vary, based on an appropriately chosen threshold value of this selection function, providing a desired trade-off between classification accuracy and power consumption. Through simulation experiments, we show that the proposed algorithm uses significantly less measurements to achieve a consensus that coincides with the optimal hyperplane obtained using a centralized SVM-based classifier that uses the entire sensor data at a fusion center.
year | journal | country | edition | language |
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2009-07-01 | 2009 16th International Conference on Digital Signal Processing |