Information Recovery in a Dynamic Statistical Markov Model

Although economic processes and systems are in general simple in nature, the underlying dynamics are complicated and seldom understood. Recognizing this, in this paper we use a nonstationary-conditional Markov process model of observed aggregate data to learn about and recover causal influence infor...

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Bibliographic Details
Main Authors: Douglas J. Miller, George Judge
Format: Article
Language:English
Published: MDPI AG 2015-03-01
Series:Econometrics
Subjects:
Online Access:http://www.mdpi.com/2225-1146/3/2/187
Description
Summary:Although economic processes and systems are in general simple in nature, the underlying dynamics are complicated and seldom understood. Recognizing this, in this paper we use a nonstationary-conditional Markov process model of observed aggregate data to learn about and recover causal influence information associated with the underlying dynamic micro-behavior. Estimating equations are used as a link to the data and to model the dynamic conditional Markov process. To recover the unknown transition probabilities, we use an information theoretic approach to model the data and derive a new class of conditional Markov models. A quadratic loss function is used as a basis for selecting the optimal member from the family of possible likelihood-entropy functional(s). The asymptotic properties of the resulting estimators are demonstrated, and a range of potential applications is discussed.
ISSN:2225-1146