Figure 14.5: Normalized prices of four precious metal exchange traded funds (ETFs) from September 5, 2013 to September 4, 2014 and corresponding uncorrelated hidden variables
derived in the previous step. Therefore, the p-dimensional hidden value Zi = (z1 . . . zp) i i
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=
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Ptruncated
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(14.18)
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Zi
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Yi
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The value of
Z i represents the
p different values for the hidden series variables at the
ith timestamp. Thus,
this step creates p different hidden variable time series that are
approxi
mately independent of one another. Note that the other (
d − p) hidden vari-ables in
YiP are approximately constant over time because of their small eigenvalues (variance). The means of these (
d−p) approximately constant values are noted as well. No predictive modeling is required for the vast majority of these hidden variables with constant values. In Fig. 14.5a, the stock prices of four precious metal-related exchange traded funds (ETFs) are illustrated for a period of 1 year. Each series was multiplica-tively scaled to a relative value starting at 1. The top two hidden variable series are illustrated in Fig. 14.5b. Note that these derived series are uncorrelated and the first hidden variable has much higher variance than the second. The remaining two hidden variables are not shown because their variance is even smaller. In fact, each of the four correlated series in Fig. 14.5a can be approximately expressed as a different linear combination of the two hidden-variable series in Fig. 14.5b. Therefore, forecasting the hidden variables yields approximate forecasts of the original series.
For each of the p uncorrelated and high-variance series, use any univariate forecasting model to predict the values of the p hidden variables at the (n + 1)th timestamp. A univariate approach can be used effectively because the different hidden variables are uncorrelated by design. This provides a set of values Zn+1 = (zn1+1 . . . znp+1). Append the means of the approximately constant values of the remaining (d − p) hidden series to Zn+1 to create a new d-dimensional hidden variable vector Wn+1.
Transform back the predicted hidden variables Wn+1 to the original d-dimensional representation by using the reverse transformation. This provides the forecasted values of the original series: