Statistical Inference in Multifractal Random Walk Models for Financial Time Series Statistical Inference in Multifractal Random Walk Models for Financial Time Series

Statistical Inference in Multifractal Random Walk Models for Financial Time Series

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    • $41.99

Publisher Description

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.

GENRE
Business & Personal Finance
RELEASED
2011
15 April
LANGUAGE
EN
English
LENGTH
102
Pages
PUBLISHER
Peter Lang AG
SELLER
Peter Lang AG
SIZE
2.5
MB

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