TPS4e_Ch7_7.1
... The variability of a statistic is described by the spread of its sampling distribution. This spread is determined primarily by the size of the random sample. Larger samples give smaller spread. The spread of the sampling distribution does not depend on the size of the population, as long as the popu ...
... The variability of a statistic is described by the spread of its sampling distribution. This spread is determined primarily by the size of the random sample. Larger samples give smaller spread. The spread of the sampling distribution does not depend on the size of the population, as long as the popu ...
Lecture 1 - Lorenzo Marini
... + Students can easily migrate to the commercially supported S-Plus program if commercial software is desired + R's language has a powerful, easy to learn syntax with many built-in statistical functions + The language is easy to extend with user-written functions + R is a computer programming What is ...
... + Students can easily migrate to the commercially supported S-Plus program if commercial software is desired + R's language has a powerful, easy to learn syntax with many built-in statistical functions + The language is easy to extend with user-written functions + R is a computer programming What is ...
6.5
... Key Concept The procedures of this section form the foundation for estimating population parameters and hypothesis testing – topics discussed at length in the following chapters. ...
... Key Concept The procedures of this section form the foundation for estimating population parameters and hypothesis testing – topics discussed at length in the following chapters. ...
Investigating a Distribution of Sample Means
... Step 2: Store 100 sample means in L1. 4. Initialize a counter variable. The following command will set the variable C to 0: 0C 5. Clear L1. You may either do this in the STAT EDIT menu or execute the following command: ClrList L1 6. Enter the sample means into L1. The following command includes thr ...
... Step 2: Store 100 sample means in L1. 4. Initialize a counter variable. The following command will set the variable C to 0: 0C 5. Clear L1. You may either do this in the STAT EDIT menu or execute the following command: ClrList L1 6. Enter the sample means into L1. The following command includes thr ...
10.27 STUDENT ATTITUDE The Survey of Study of Study Habits
... 10.31 BAD TEACHING The examinations in a large accounting class are scaled after grading so that the mean score is 50. The professor thinks that one teaching assistant is a poor teacher and suspects that his students have a lower mean score than the class as a whole. The TA’s students this semester ...
... 10.31 BAD TEACHING The examinations in a large accounting class are scaled after grading so that the mean score is 50. The professor thinks that one teaching assistant is a poor teacher and suspects that his students have a lower mean score than the class as a whole. The TA’s students this semester ...
Bootstrapping (statistics)
In statistics, bootstrapping can refer to any test or metric that relies on random sampling with replacement. Bootstrapping allows assigning measures of accuracy (defined in terms of bias, variance, confidence intervals, prediction error or some other such measure) to sample estimates. This technique allows estimation of the sampling distribution of almost any statistic using random sampling methods. Generally, it falls in the broader class of resampling methods.Bootstrapping is the practice of estimating properties of an estimator (such as its variance) by measuring those properties when sampling from an approximating distribution. One standard choice for an approximating distribution is the empirical distribution function of the observed data. In the case where a set of observations can be assumed to be from an independent and identically distributed population, this can be implemented by constructing a number of resamples with replacement, of the observed dataset (and of equal size to the observed dataset).It may also be used for constructing hypothesis tests. It is often used as an alternative to statistical inference based on the assumption of a parametric model when that assumption is in doubt, or where parametric inference is impossible or requires complicated formulas for the calculation of standard errors.