Machine Learning Applied to Weather Forecasting
Dec 15, 2016 · temperature and the minimum temperature for the i-th day in the sequence. Then de ne a metric on the space of spectra d(f 1;f 2) = X2 j=1 h w 11[f 1(j) 1 6= f 2(j) 1] + X5 k=2 w k f 1(j) k f 2(j) k 2 i; (3) where wis a weight vector that assigns weights to each feature. Since the rst feature is the weather classi ca-tion and the di erence ...
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