2021
DOI: 10.1109/access.2021.3107419
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KM Learning for Millimeter-Wave Beam Alignment and Tracking: Predictability and Interpretability

Abstract: A data representation technique dubbed Kolmogorov model (KM), has been applied to the beam alignment problem in large-dimensional antenna systems. The previous learning-based beam alignment solely focused on utilizing the predictive power of KM, i.e., the capability of predicting the outcome of random variables that are outside the training set, to reduce the beam training overhead. However, a distinctive feature of KM, namely, the interpretability which enables the capability of extracting additional informat… Show more

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