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A Krylov Subspace Approach to Large Portfolio OptimizationIsabelle G. Bajeux-BesnainouGeorge Washington University - Department of Finance Wachindra BandaraGeorge Washington University - Department of Finance Efstathia BuraGeorge Washington Univesrity November 17, 2011 Abstract: With a large number of securities (N) and fewer observations (T), deriving the global minimum variance portfolio requires the inversion of the singular sample covariance matrix of security returns. We introduce the Break-Down Free Generalized Minimum RESidual (BFGMRES), a Krylov subspaces method, as a fully automated approach for deriving the minimum variance portfolio. BFGMRES is a numerical algorithm that provides solutions to singular linear systems without requiring ex-ante assumptions on the covariance structure. Moreover, it is robust to illiquidity and potentially faulty data. US and international stock data are used to demonstrate the relative robustness of BFGMRES to illiquidity when compared to the “shrinkage to market” methodology developed by Ledoit and Wolf (2003). The two methods have similar performance as assessed by the Sharpe ratios and standard deviations for filtered data. In a simulation study, we show that BFGMRES is more robust than shrinkage to market in the presence of data irregularities. Indeed, when there is an illiquid stock shrinkage to market allocates almost 100% of the portfolio weights to this stock, whereas BFGMRES does not. In further simulations, we also show that when there is no illiquidity, BFGMRES exhibits superior performance than shrinkage to market when the number of stocks is high and the sample covariance matrix is highly singular.
Number of Pages in PDF File: 34 Keywords: Krylov subspaces, singular systems, sample covariance matrix, global minimum variance portfolio JEL Classification: C02, G11 working papers seriesDate posted: December 18, 2011Suggested CitationContact Information
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