Trading futures spread portfolios: applications of higher order and recurrent networks

This paper investigates the modelling and trading of oil futures spreads in the context of a portfolio of contracts. A portfolio of six spreads is constructed and each spread forecasted using a variety of modelling techniques, namely, a cointegration fair value model and three different types of neu...

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Veröffentlicht in:The European journal of finance 2008-01, Vol.14 (6), p.503-521
Hauptverfasser: Dunis, Christian L., Laws, Jason, Evans, Ben
Format: Artikel
Sprache:eng
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Zusammenfassung:This paper investigates the modelling and trading of oil futures spreads in the context of a portfolio of contracts. A portfolio of six spreads is constructed and each spread forecasted using a variety of modelling techniques, namely, a cointegration fair value model and three different types of neural network (NN), such as multi-layer perceptron (MLP), recurrent, and higher order NN models. In addition, a number of trading filters are employed to further improve the trading statistics of the models. Three different filters are optimized on an in-sample measure of down side risk-adjusted return, and these are then fixed out-of-sample. The filters employed are the threshold filter, correlation filter, and the transitive filter. The results show that the best in-sample model is the MLP with a transitive filter. This model is the best performer out-of-sample and also returns good out-of-sample statistics.
ISSN:1351-847X
1466-4364
DOI:10.1080/13518470801890834