N-of-1 study designs involve the collection and analysis of repeated measures data from an individual not using an intervention and using an intervention. This study explores the use of semi-parametric and parametric bootstrap tests in the analysis of N-of-1 studies under a single time series framework in the presence of autocorrelation. When the Type I error rates of bootstrap tests are compared to Wald tests, our results show that the bootstrap tests have more desirable properties. We compare the results for normally distributed errors with those for contaminated normally distributed errors and find that, except when there is relatively large autocorrelation, there is little difference between the power of the parametric and semi-parametr...
The classical procedures of comparing two groups, such as t-test are, usually restricted with the as...
In practice, bootstrap tests must use a finite number of bootstrap samples. This means that the outc...
Bootstrap tests for simple structures in nonparametric time series regression Article (Accepted vers...
N-of-1 study designs involve the collection and analyses of repeated measures data from an individua...
This paper considers the problem of choosing the number of bootstrap repetitions B for bootstrap sta...
This paper considers the problem of choosing the number of bootstrap repetitions B for bootstrap sta...
The construction of bootstrap hypothesis tests can differ from that of bootstrap confidence interval...
The paper deals with the problem, how many bootstrap replications have to be done at estimation of b...
The traditional non-parametric bootstrap (referred to as the n-out-of-n bootstrap) is a widely appli...
Standard first order tests have size error that decreases as m^{-1/2} where m is a measure of sample...
Bootstrap tests are tests for which the significance level is calculated using some variant of the b...
This thesis is comprised of five papers that all relate to bootstrap methodology in analysis of non-...
N-of-1 trials allow inference between two treatments given to a single individual. Most often, clini...
We use Monte Carlo methods to study the properties of the bootstrap Breusch-Godfrey test for autocor...
In practice, bootstrap tests must use a finite number of bootstrap samples. This means that the outc...
The classical procedures of comparing two groups, such as t-test are, usually restricted with the as...
In practice, bootstrap tests must use a finite number of bootstrap samples. This means that the outc...
Bootstrap tests for simple structures in nonparametric time series regression Article (Accepted vers...
N-of-1 study designs involve the collection and analyses of repeated measures data from an individua...
This paper considers the problem of choosing the number of bootstrap repetitions B for bootstrap sta...
This paper considers the problem of choosing the number of bootstrap repetitions B for bootstrap sta...
The construction of bootstrap hypothesis tests can differ from that of bootstrap confidence interval...
The paper deals with the problem, how many bootstrap replications have to be done at estimation of b...
The traditional non-parametric bootstrap (referred to as the n-out-of-n bootstrap) is a widely appli...
Standard first order tests have size error that decreases as m^{-1/2} where m is a measure of sample...
Bootstrap tests are tests for which the significance level is calculated using some variant of the b...
This thesis is comprised of five papers that all relate to bootstrap methodology in analysis of non-...
N-of-1 trials allow inference between two treatments given to a single individual. Most often, clini...
We use Monte Carlo methods to study the properties of the bootstrap Breusch-Godfrey test for autocor...
In practice, bootstrap tests must use a finite number of bootstrap samples. This means that the outc...
The classical procedures of comparing two groups, such as t-test are, usually restricted with the as...
In practice, bootstrap tests must use a finite number of bootstrap samples. This means that the outc...
Bootstrap tests for simple structures in nonparametric time series regression Article (Accepted vers...