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Extracting Garch Effects from Asset Returns Using Robust NMF

Authors :
de Fréin, Ruairí
Rickard, Scott
Drakakis, Konstantinos
de Fréin, Ruairí
Rickard, Scott
Drakakis, Konstantinos
Publication Year :
2009

Abstract

Identification of assets on the stock market that exhibit co-movement is a critical task for generating an efficiently diversified portfolio. We present a new application of non-negative matrix factorization to factor analysis of financial time series. We consider a conditionally heteroscedastic latent factor model, where each series is parameterized by a univariate ARCH model. Volatility clustering characteristics, e.g. GARCH effects, of the constituent assets of the Dow Jones Industrial Average are lever-aged to cluster assets based on the commonality of their volatility clusters. We present a new non-negative matrix factorization algorithm which is robust in the presence of noise, Robust NMF. We use a mixed low-rank over-complete dictionary learning approach to separate out the background Gaussian noise, emphasize the GARCH effects and achieve clearer asset groupings.<br />QC 20151005

Details

Database :
OAIster
Notes :
English
Publication Type :
Electronic Resource
Accession number :
edsoai.on1234282611
Document Type :
Electronic Resource
Full Text :
https://doi.org/10.1109.DSP.2009.4785921