Time series analysis is widely discussed in fields such as finance, economy, brain imaging etc. Among all types of data, categorical and multivariate time series maintain both of challenges and promising applications. In this dissertation, we propose some statistical approaches to model binary and multivariate time series and thus provide alternative solutions of statistical inference and prediction. We first focus on binary time series. Classical methods do not differentiate between exogenous and endogenous exploratory variable, which leads to invalid statistical inference. We develop a close form of the Fisher information matrix of logistic autoregressive model and demonstrate that it yields narrower confidence intervals while maintaining...
We review the class of time-varying autoregressive (TVAR) models and a range of related recent deve...
We propose an evolutionary state space model (E-SSM) for analyzing high dimensional brain signals wh...
<p>This thesis presents novel methods for processing electrophysiological time-series from simultane...
Time series analysis is widely discussed in fields such as finance, economy, brain imaging etc. Amon...
Recent advances in information technology have made high-dimensional non-stationary signals increasi...
ABSTRACT We describe and illustrate Bayesian approaches to modelling and analysis of multiple non-st...
This thesis investigates time series analysis tools for prediction, as well as detection and charact...
<p>The analysis of time series and sequences has been challenging in both statistics and machine lea...
In the following thesis, we investigate the modeling of time series data with multivariate discrete ...
Thesis (Ph.D.)--University of Washington, 2018In large collections of multivariate time series it is...
<p>This article introduces a nonparametric approach to multivariate time-varying power spectrum anal...
(High dimensional) time series which reveal nonstationary and possibly periodic behavior occur frequ...
In the dissertation, we propose (i) a new method for analyzing a bivariate non-stationary time serie...
In this thesis, we present a sequence of univariate and multivariate structural time series models w...
Neural recordings from high-density microelectrode arrays yield high-dimensional time-series observa...
We review the class of time-varying autoregressive (TVAR) models and a range of related recent deve...
We propose an evolutionary state space model (E-SSM) for analyzing high dimensional brain signals wh...
<p>This thesis presents novel methods for processing electrophysiological time-series from simultane...
Time series analysis is widely discussed in fields such as finance, economy, brain imaging etc. Amon...
Recent advances in information technology have made high-dimensional non-stationary signals increasi...
ABSTRACT We describe and illustrate Bayesian approaches to modelling and analysis of multiple non-st...
This thesis investigates time series analysis tools for prediction, as well as detection and charact...
<p>The analysis of time series and sequences has been challenging in both statistics and machine lea...
In the following thesis, we investigate the modeling of time series data with multivariate discrete ...
Thesis (Ph.D.)--University of Washington, 2018In large collections of multivariate time series it is...
<p>This article introduces a nonparametric approach to multivariate time-varying power spectrum anal...
(High dimensional) time series which reveal nonstationary and possibly periodic behavior occur frequ...
In the dissertation, we propose (i) a new method for analyzing a bivariate non-stationary time serie...
In this thesis, we present a sequence of univariate and multivariate structural time series models w...
Neural recordings from high-density microelectrode arrays yield high-dimensional time-series observa...
We review the class of time-varying autoregressive (TVAR) models and a range of related recent deve...
We propose an evolutionary state space model (E-SSM) for analyzing high dimensional brain signals wh...
<p>This thesis presents novel methods for processing electrophysiological time-series from simultane...