2020
DOI: 10.36629/2686-7788-2020-1-25-34
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Means of Creating Interference in Wireless Communication Networks

Abstract: The principles of the operation of wireless networks and a way of disrupting their work are considered. The interference generation devices are presented, and their advantages and disadvantages are compared

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“…Obviously, this method can reduce the support vector only when the number of training samples is large and the support vector occupies a very high proportion of it. In general, the number of support vector is will not only do not decrease but may increase [5]. In order to reduce the QSSVM algorithm's one-sided pursuit of iterative update times and the need to repeatedly solve the problem of quadratic programming, Liu et al used the average Euclidean distance method to quickly optimize the QSSVM model, but his research did not use the support vector data description algorithm for outlier detection, which makes the algorithm process complicated, and there is no training sample reduction strategy [6].…”
Section: Introductionmentioning
confidence: 99%
“…Obviously, this method can reduce the support vector only when the number of training samples is large and the support vector occupies a very high proportion of it. In general, the number of support vector is will not only do not decrease but may increase [5]. In order to reduce the QSSVM algorithm's one-sided pursuit of iterative update times and the need to repeatedly solve the problem of quadratic programming, Liu et al used the average Euclidean distance method to quickly optimize the QSSVM model, but his research did not use the support vector data description algorithm for outlier detection, which makes the algorithm process complicated, and there is no training sample reduction strategy [6].…”
Section: Introductionmentioning
confidence: 99%