Locally Adaptive Shrinkage Priors for Trends and Breaks in Count Time Series
Non-stationary count time series characterized by features such as abrupt changes and fluctuations about the trend arise in many scientific domains including biophysics, ecology, energy, epidemiology, and social science domains. Current approaches for integer-valued time series lack the flexibility...
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Zusammenfassung: | Non-stationary count time series characterized by features such as abrupt
changes and fluctuations about the trend arise in many scientific domains
including biophysics, ecology, energy, epidemiology, and social science
domains. Current approaches for integer-valued time series lack the flexibility
to capture local transient features while more flexible models for continuous
data types are inadequate for universal applications to integer-valued
responses such as settings with small counts. We present a modeling framework,
the negative binomial Bayesian trend filter (NB-BTF), that offers an adaptive
model-based solution to capturing multiscale features with valid integer-valued
inference for trend filtering. The framework is a hierarchical Bayesian model
with a dynamic global-local shrinkage process. The flexibility of the
global-local process allows for the necessary local regularization while the
temporal dependence induces a locally smooth trend. In simulation, the NB-BTF
outperforms a number of alternative trend filtering methods. Then, we
demonstrate the method on weekly power outage frequency in Massachusetts
townships. Power outage frequency is characterized by a nominal low level with
occasional spikes. These illustrations show the estimation of a smooth,
non-stationary trend with adequate uncertainty quantification. |
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DOI: | 10.48550/arxiv.2309.00080 |