Hierarchical Portfolio Allocation with Community Detection

University essay from KTH/Matematik (Avd.)

Abstract: Traditionally, practitioners use modern portfolio theory to invest optimally. Its appeal lies in its mathematical simplicity and elegance. However, despite its beauty, the theory it is plagued with many problems, which are in combination called the Markowitz curse. Lopéz de Prado introduced Hierarchical Risk Parity (HRP), which deals with the problems of Markwitz’s theory by introducing hierarchical structures into the portfolio allocation step.This thesis is a continuation of the HRP. In contrast to De Prado’s work, we build hierarchical clusters that do not have a predetermined structure and also use portfolio allocation methods that incorporates the mean estimates. We use an algorithm called community detection which is derived from graph theory. The algorithm generates clusters purely from the data without user specification. A problem to overcome is the correct identification of the market mode, whichis non-trivial for futures contracts. This is a serious problem since the specific clustering method we use hinges on correctly identifying this mode. Therefore, in this thesis we introduce a method of finding the market mode for futures data. Finally, we compare the portfolios constructed from the hierarchical clusters to traditional methods. We find that the hierarchical portfolios results in slightly worse performance than the traditional methods when we incorporate the mean and better performance for risk based portfolios. In general, we find that the hierarchical portfolios result in less extreme outcomes.

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