Jan. 31, 2024, 3:46 p.m. | Hao Zhang Qingfeng Lin Yang Li Lei Cheng Yik-Chung Wu

cs.LG updates on arXiv.org arxiv.org

Activity detection is an important task in the next generation grant-free multiple access. While there are a number of existing algorithms designed for this purpose, they mostly require precise information about the network, such as large-scale fading coefficients, small-scale fading channel statistics, noise variance at the access points, and user activity probability. Acquiring these information would take a significant overhead and their estimated values might not be accurate. This problem is even more severe in cell-free networks as there are …

algorithms bayesian connectivity cs.lg detection eess.sp free grant information massive multiple network networks next noise probability scale statistics variance

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