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      Detecting bearish and bullish markets in financial time series using hierarchical hidden Markov models

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          Abstract

          Financial markets exhibit alternating periods of rising and falling prices. Stock traders seeking to make profitable investment decisions have to account for those trends, where the goal is to accurately predict switches from bullish towards bearish markets and vice versa. Popular tools for modeling financial time series are hidden Markov models, where a latent state process is used to explicitly model switches among different market regimes. In their basic form, however, hidden Markov models are not capable of capturing both short- and long-term trends, which can lead to a misinterpretation of short-term price fluctuations as changes in the long-term trend. In this paper, we demonstrate how hierarchical hidden Markov models can be used to draw a comprehensive picture of financial markets, which can contribute to the development of more sophisticated trading strategies. The feasibility of the suggested approach is illustrated in two real-data applications, where we model data from two major stock indices, the Deutscher Aktienindex and the Standard & Poor's 500.

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          Author and article information

          Journal
          29 July 2020
          Article
          2007.14874
          36f75a09-67df-4c12-bbd9-a7a1c899d0de

          http://arxiv.org/licenses/nonexclusive-distrib/1.0/

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          Custom metadata
          stat.ME q-fin.ST stat.AP

          Applications,Statistical finance,Methodology
          Applications, Statistical finance, Methodology

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