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arxiv: 1502.05090 · v1 · pith:3DX7E6XOnew · submitted 2015-02-18 · 💻 cs.LG

Real time clustering of time series using triangular potentials

classification 💻 cs.LG
keywords clusteringtimeassetscompositemethodspotentialstriangularvarious
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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.

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