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On the Optimality of Treating Interference as Noise for $K$ -User Parallel Gaussian Interference Networks


It has been recently shown by Geng et al. that in a K-user Gaussian interference network, if for each user, the desired signal strength is no less than the sum of the strengths of the strongest interference from this user and the strongest interference to this user (all signal strengths measured in dB scale), then power control and treating interference as noise (TIN) is sufficient to achieve the entire generalized degrees of freedom (GDoF) region. Motivated by the intuition that the deterministic model of Avestimehr et al. (Avestimehr-Diggavi-Tse deterministic model) is particularly suited for exploring the optimality of TIN, the results of Geng et al. are first re-visited under the ADT deterministic model, and are shown to directly translate between the Gaussian and deterministic settings. Next, we focus on the extension of these results to parallel interference networks, from a sum-capacity/sum-GDoF perspective. To this end, we interpret the explicit characterization of the sum capacity/sum GDoF of a TIN optimal network (without parallel channels) as a minimum weighted matching problem in combinatorial optimization, and obtain a simple characterization in terms of a partition of the interference network into vertex-disjoint cycles. Aided by insights from the cyclic partition, the sum-capacity optimality of TIN for K-user parallel interference networks is characterized for the ADT deterministic model, leading ultimately to the corresponding GDoF results for the Gaussian setting. In both the cases, subject to a mild invertibility condition, the optimality of TIN is shown to extend to parallel networks in a separable fashion.

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