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Statistical learning theory to evaluate the performance of game theoretic power control algorithms for wireless data in arbitrary channels

机译:统计学习理论,用于评估任意信道中无线数据的博弈理论功率控制算法的性能

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In this paper we use statistical learning theory to evaluate the performance of game theoretic power control algorithms for wireless data in arbitrary channels, i.e., no presumed channel model is required. To show the validity of statistical learning theory in this context, we studied a flat fading channel, and more specifically, we simulated the case of Rayleigh flat fading channel. With the help of a relatively small number of training samples, the results suggest the learnability of the utility function classes defined by changing the user power (adjusted parameter) for each user's utility function.
机译:在本文中,我们使用统计学习理论来评估任意信道中无线数据的博弈理论功率控制算法的性能,即不需要假定的信道模型。为了说明这种情况下统计学习理论的有效性,我们研究了平坦衰落信道,更具体地说,我们模拟了瑞利平坦衰落信道的情况。在相对较少的训练样本的帮助下,结果表明通过更改每个用户的效用函数的用户能力(调整后的参数)来定义效用函数类的可学习性。

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