Open Conference Systems, 50th Scientific meeting of the Italian Statistical Society

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Scoring models for roboadvisory platforms: a network approach
Paolo Giudici, Gloria Polinesi

Last modified: 2018-05-12

Abstract


Due to technological advancement, roboadvisory platforms have allowed significant cost reduction in asset management. However, this improved allocation may come at the price of a biased risk estimation. To verify this, we empirically investigate allocation models employed by roboadvisory platforms. Our findings show that the platforms do not accurately assess risks and, therefore, the corresponding allocation models should be improved, incorporating further information, through clustering and network analysis.


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