r/MachineLearning · · 1 min read

Bayesian Opt. GPs vs Linear models and Neural Networks for parameter optimizations [R]

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Hi,

Relatively new to deep learning. I wanted some opinions on which of these approaches might be best for time series data and spectral analysis. I currently use a GP and it works pretty well, but I’m wondering what the computational tradeoffs and so forth might be. Any ideas?

submitted by /u/InevitableCut1243
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