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Matti Suominen’s paper accepted to be published in the Review of Financial Studies

Finance Professor Matti Suominen’s paper has been accepted for publication in the Review of Financial Studies.

Finance Professor Matti Suominen’s paper “Dash for Cash: Monthly Market Impact of Institutional Liquidity Needs” has been accepted for publication in the Review of Financial Studies. The paper’s co-authors are Erkko Etula (Managing Director at Goldman Sachs), Kalle Rinne (Risk Analyst at Mandatum Life Fund Management S.A, to be appointed as Risk Manager in Spring 2019) and Lauri Vaittinen (Senior Vice President, Investment Solutions at Mandatum Life Insurance).

Department of Finance

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