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Arbitrage, Factor Structure, and Mean-Variance Analysis on Large Asset Markets

Gary Chamberlain and Michael Rothschild
Econometrica
Vol. 51, No. 5 (Sep., 1983), pp. 1281-1304
Published by: The Econometric Society
DOI: 10.2307/1912275
Stable URL: http://www.jstor.org/stable/1912275
Page Count: 24
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Arbitrage, Factor Structure, and Mean-Variance Analysis on Large Asset Markets
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Abstract

We examine the implications of arbitrage in a market with many assets. The absence of arbitrage opportunities implies that the linear functionals that give the mean and cost of a portfolio are continuous; hence there exist unique portfolios that represent these functionals. These portfolios span the mean-variance efficient set. We resolve the question of when a market with many assets permits so much diversification that risk-free investment opportunities are available. Ross [12, 14] showed that if there is a factor structure, then the mean returns are approximately linear functions of factor loadings. We define an approximate factor structure and show that this weaker restriction is sufficient for Ross' result. If the covariance matrix of the asset returns has only K unbounded eigenvalues, then there is an approximate factor structure and it is unique. The corresponding K eigenvectors converge and play the role of factor loadings. Hence only a principal component analysis is needed in empirical work.

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