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Markov Chain Approach to Forecast in the Binomial Autoregressive Models

  • Received : 20100200
  • Accepted : 20100400
  • Published : 2010.05.31

Abstract

In this paper we consider the problem of forecasting binomial time series, modelled by the binomial autoregressive model. This paper considers proposed by McKenzie (1985) and is extended to a higher order by $Wei{\ss}$(2009). Since the binomial autoregressive model is a Markov chain, we can apply the earlier work of Bu and McCabe (2008) for integer valued autoregressive(INAR) model to the binomial autoregressive model. We will discuss how to compute the h-step-ahead forecast of the conditional probabilities of $X_{T+h}$ when T periods are used in fitting. Then we obtain the maximum likelihood estimator of binomial autoregressive model and use it to derive the maximum likelihood estimator of the h-step-ahead forecast of the conditional probabilities of $X_{T+h}$. The methodology is illustrated by applying it to a data set previously analyzed by $Wei{\ss}$(2009).

Keywords

References

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  2. Binomial AR(1) processes: moments, cumulants, and estimation vol.47, pp.3, 2013, https://doi.org/10.1080/02331888.2011.605893