NAR time-series prediction: a Bayesian framework and an experiment
نویسندگان
چکیده
We extend the Bayesian framework to Multi-Layer Perceptron models of Non-linear Auto-Regressive time-series. The approach is evaluated on an artificial time-series and some common simplifications are discussed.
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