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Real Time Clustering of Time Series Using Triangular Potentials

Authors

Aldo Pacchiano1 and Oliver J. Williams2, 1Massachusetts Institute of Technology, United States and 2Markham Rae LLP, UK

Abstract

Motivated by the problem of computing investment portfolio weightings we investigate various methods of clustering as alternatives to traditional mean-variance approaches. Such methods can have significant benefits from a practical point of view since they remove the need to invert a sample covariance matrix, which can suffer from estimation error and will almost certainly be non-stationary. The general idea is to find groups of assets which share similar return characteristics over time and treat each group as a single composite asset. We then apply inverse volatility weightings to these new composite assets. In the course of our investigation we devise a method of clustering based on triangular potentials and we present associated theoretical results as well as various examples based on synthetic data.

Keywords

Clustering, Expected Utility, Graphical Models, k-Clique Problem

Full Text  Volume 5, Number 2