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arxiv: 1801.08852 · v3 · pith:YRMBXQXZnew · submitted 2018-01-26 · 📊 stat.ME · q-fin.MF

Calibration for Weak Variance-Alpha-Gamma Processes

classification 📊 stat.ME q-fin.MF
keywords processvariance-alpha-gammaproducesweakbettercalibrationconditionconstructed
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The weak variance-alpha-gamma process is a multivariate L\'evy process constructed by weakly subordinating Brownian motion, possibly with correlated components with an alpha-gamma subordinator. It generalises the variance-alpha-gamma process of Semeraro constructed by traditional subordination. We compare three calibration methods for the weak variance-alpha-gamma process, method of moments, maximum likelihood estimation (MLE) and digital moment estimation (DME). We derive a condition for Fourier invertibility needed to apply MLE and show in our simulations that MLE produces a better fit when this condition holds, while DME produces a better fit when it is violated. We also find that the weak variance-alpha-gamma process exhibits a wider range of dependence and produces a significantly better fit than the variance-alpha-gamma process on an S&P500-FTSE100 data set, and that DME produces the best fit in this situation.

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