We propose a new class of state space models for longitudinal
discrete response datawhere the observation equation is specified in an additive form involving both deterministic and random linear predictors. These models allow us to explicitly address the effects of trend, seasonal or other time-varying
covariates while preserving the power of state space models in modeling serial dependence in the data.We develop aMarkov chainMonte Carlo algorithm to carry out statistical inference for models with binary and binomial responses,
in which we invoke de Jong and Shephard’s (Biometrika 82(2):339–350, 1995) simulation smoother to establish an efficient sampling procedure for the state variables. To quantify and control the sensitivity of posteriors on the priors
of variance parameters, we add a signal-to-noise ratio type parameter in the specification of these priors. Finally, we illustrate the applicability of the proposed state space mixed models for longitudinal binomial response data in both
simulation studies and data examples.
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We propose a new class of state space models for longitudinal
discrete response datawhere the observation equation is specified in an additive form involving both deterministic and random linear predictors. These models allow us to explicitly address the effects of trend, seasonal or other time-varying
covariates while preserving the power of state space models in modeling serial dependence in the data.We develop aMarkov chainMonte Carlo algorithm to carry out statistical inference for models...
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