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2023 | OriginalPaper | Buchkapitel

Improving on the Markov-Switching Regression Model by the Use of an Adaptive Moving Average

verfasst von : Piotr Pomorski, Denise Gorse

Erschienen in: New Perspectives and Paradigms in Applied Economics and Business

Verlag: Springer International Publishing

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Abstract

Regime detection is vital for the effective operation of trading and investment strategies. However, the most popular means of doing this, the two-state Markov-switching regression model (MSR), are not an optimal solution, as two volatility states do not fully capture the complexity of the market. Past attempts to extend this model to a multi-state MSR have proved unstable, potentially expensive in terms of trading costs, and can only divide the market into states with varying levels of volatility, which is not the only aspect of market dynamics relevant to trading. We demonstrate it is possible and valuable to instead segment the market into more than two states not on the basis of volatility alone, but on a combined basis of volatility and trend, by combining the two-state MSR with an adaptive moving average. A realistic trading framework is used to demonstrate that using two selected states from the four thus generated leads to better trading performance than traditional benchmarks, including the two-state MSR. In addition, the proposed model could serve as a label generator for machine learning tasks used in predicting financial regimes ex ante.

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Metadaten
Titel
Improving on the Markov-Switching Regression Model by the Use of an Adaptive Moving Average
verfasst von
Piotr Pomorski
Denise Gorse
Copyright-Jahr
2023
DOI
https://doi.org/10.1007/978-3-031-23844-4_2

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