Modern Portfolio Theory in the Crypto-Wilderness
Ivan Vynyavskyy, Stefan Kitzler, Bernhard Haslhofer, and Aviv Yaish

TL;DR
This study leverages blockchain transparency to reconstruct and analyze over 116 million Ethereum accounts, revealing that market timing dominates returns and traditional portfolio optimization offers limited predictive value in crypto markets.
Contribution
It provides the first large-scale empirical analysis of cryptoasset portfolios using blockchain data, challenging the applicability of Modern Portfolio Theory in this domain.
Findings
Market entry timing is the main predictor of crypto returns.
Most crypto portfolios are highly concentrated and under-diversified.
Passive market-cap weighting outperforms MPT strategies in median returns.
Abstract
Modern Portfolio Theory (MPT) prescribes how to maximise the return of an asset portfolio for a given level of risk. The optimal trade-off between return and variance defines the efficient frontier. Whether actual cryptoasset portfolios approximate this prescription and whether proximity to the frontier translates into realised performance remain difficult to test at large scale in traditional markets due to their opaque nature and the inaccessibility of data. As we show, public blockchains make these questions measurable: every token transfer is recorded, thus enabling complete portfolio reconstruction for every account at any point in time. We leverage this transparency to reconstruct cryptoasset portfolios for over 116M Ethereum accounts across the full chain history (2015-2025), measure their distance to the constrained efficient frontier, and quantify how deviations translate into…
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