A Support Vector Machine for Regression in Complex Field

Published: 01 Jan 2017, Last Modified: 01 Nov 2024Informatica 2017EveryoneRevisionsBibTeXCC BY-SA 4.0
Abstract: In this paper, one method for training the Support Vector Regression (SVR) machine in the complex data field is presented, which takes into account all the information of both the real and imaginary parts simultaneously. Comparing to the existing methods, it not only considers the geometric information of the complex-valued data, but also can be trained with the same amount of computation as the original SVR in the real data field. The accuracy of the proposed method is analysed by the simulation experiments. This also can be applied to the field of anti-interference for satellite navigation successfully, which shows its effectiveness in practical application.
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