Statistical Inference in Multifractal Random Walk Models for Financial Time Series
©2011
Thesis
102 Pages
Series:
Volkswirtschaftliche Analysen, Volume 18
Summary
The dynamics of financial returns varies with the return period, from high-frequency data to daily, quarterly or annual data. Multifractal Random Walk models can capture the statistical relation between returns and return periods, thus facilitating a more accurate representation of real price changes. This book provides a generalized method of moments estimation technique for the model parameters with enhanced performance in finite samples, and a novel testing procedure for multifractality. The resource-efficient computer-based manipulation of large datasets is a typical challenge in finance. In this connection, this book also proposes a new algorithm for the computation of heteroscedasticity and autocorrelation consistent (HAC) covariance matrix estimators that can cope with large datasets.
Details
- Pages
- 102
- Publication Year
- 2011
- ISBN (PDF)
- 9783653007954
- ISBN (Softcover)
- 9783631606735
- DOI
- 10.3726/978-3-653-00795-4
- Language
- English
- Publication date
- 2012 (July)
- Keywords
- financial volatility HAC estimation GMM estimation financial marketes efficiency
- Published
- Frankfurt am Main, Berlin, Bern, Bruxelles, New York, Oxford, Wien, 2011. 101 pp., 4 fig., num. tables and graphs
- Product Safety
- Peter Lang Group AG