We consider the problem of selecting the optimal orders of vector autoregressive (VAR) models for fMRI data.Many previous studies used model order of one and ignored that it may vary considerably across data sets depending on different data dimensions, subjects, tasks, and experimental designs. In addition, the classical information criteria (IC) used (e.g., the Akaike IC (AIC)) are biased and inappropriate for the high-dimensional fMRI data typically with a small sample size. We examine the mixed results on the optimal VAR orders for fMRI, especially the validity of the order-one hypothesis, by a comprehensive evaluation using different model selection criteria over three typical data types-a resting state, an event-related design, and a b...
The general linear model provides the most widely applied statistical framework for analyzing functi...
BACKGROUND: Independent Component Analysis (ICA) has been widely applied to the analysis of fMRI dat...
This thesis examines model selection for clustered data. Such data are often modeled using random ef...
One of the major issues in GLM-based fMRI analysis techniques is the presence of temporal autocorrel...
In this paper, a new small-sample model selection criterion for vector autoregressive (VAR) models i...
abstract: Functional magnetic resonance imaging (fMRI) is used to study brain activity due to stimu...
Autoregressive (AR) models for spectral analysis of electroencephalogram (EEG) signals are advantage...
The advantages of autoregressive (AR) modelling over the classical Fourier Transform methods have be...
The number and variety of connectivity estimation methods is likely to continue to grow over the com...
The general linear model provides the most widely applied statistical framework for analyzing functi...
The purpose of this paper is to compare different autoregressive models performance in case of incor...
Abstract—In vector autoregressive modeling, the order selected with the Akaike Information Criterion...
Functional magnetic resonance imaging (fMRI) studies typically employ rapid, event-related designs f...
PURPOSE: Short TRs are increasingly used for fMRI as fast sequences such as simultaneous multislice ...
We propose the use of multivariate autoregressive (MAR) models of functional magnetic resonance imag...
The general linear model provides the most widely applied statistical framework for analyzing functi...
BACKGROUND: Independent Component Analysis (ICA) has been widely applied to the analysis of fMRI dat...
This thesis examines model selection for clustered data. Such data are often modeled using random ef...
One of the major issues in GLM-based fMRI analysis techniques is the presence of temporal autocorrel...
In this paper, a new small-sample model selection criterion for vector autoregressive (VAR) models i...
abstract: Functional magnetic resonance imaging (fMRI) is used to study brain activity due to stimu...
Autoregressive (AR) models for spectral analysis of electroencephalogram (EEG) signals are advantage...
The advantages of autoregressive (AR) modelling over the classical Fourier Transform methods have be...
The number and variety of connectivity estimation methods is likely to continue to grow over the com...
The general linear model provides the most widely applied statistical framework for analyzing functi...
The purpose of this paper is to compare different autoregressive models performance in case of incor...
Abstract—In vector autoregressive modeling, the order selected with the Akaike Information Criterion...
Functional magnetic resonance imaging (fMRI) studies typically employ rapid, event-related designs f...
PURPOSE: Short TRs are increasingly used for fMRI as fast sequences such as simultaneous multislice ...
We propose the use of multivariate autoregressive (MAR) models of functional magnetic resonance imag...
The general linear model provides the most widely applied statistical framework for analyzing functi...
BACKGROUND: Independent Component Analysis (ICA) has been widely applied to the analysis of fMRI dat...
This thesis examines model selection for clustered data. Such data are often modeled using random ef...