2017 International Conference on Recent Advances in Signal Processing, Telecommunications &Amp; Computing (SigTelCom) 2017
DOI: 10.1109/sigtelcom.2017.7849802
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Received signal strength prediction using Gaussian process

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“…GPR is a Bayesian non-parametric model [15] that utilizes kernel functions in solving regression problems [47]. It derives the relationship between input parameters and response variables from unknown functions [28].…”
Section: F Gaussian Process Regression (Gpr)mentioning
confidence: 99%
“…GPR is a Bayesian non-parametric model [15] that utilizes kernel functions in solving regression problems [47]. It derives the relationship between input parameters and response variables from unknown functions [28].…”
Section: F Gaussian Process Regression (Gpr)mentioning
confidence: 99%