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Can optimal diversification beat the naive 1/N strategy in a highly correlated market? Empirical evidence from cryptocurrencies

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  • Heming Chen

Abstract

This study systematically examines how several alternative approaches considered affect three aspects that determine portfolio performance (the gross return, the transaction costs and the portfolio risk). We find that it is difficult to exploit the possible predictability of asset returns. However, the predictability of asset return volatility produces obvious economic value, although in a highly correlated cryptocurrencies market.

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  • Heming Chen, 2025. "Can optimal diversification beat the naive 1/N strategy in a highly correlated market? Empirical evidence from cryptocurrencies," Papers 2501.12841, arXiv.org.
  • Handle: RePEc:arx:papers:2501.12841
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