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Power and Sampling Distributions
Power and Sampling Distributions
Power and Sampling Distributions
Discussions around power often relate to sampling distributions.
Key concepts from previous learning (e.g., covered in course 2910).
Distribution of Sample Means
Defined as all the possible sample means from random samples of size (n) obtained from a population.
Example: Randomly sampling 25 MUN students and calculating means (M1, M2, M3, etc.).
Key Properties of Distribution of Sample Means
Convergence to Population Mean:
Sample means should cluster around the population mean, 𝜇.
Normal Distribution Shape:
The distribution of sample means resembles a normal distribution.
Effect of Sample Size:
Increasing sample size (n) results in sample means being closer to 𝜇.
Example of Sample Means Distribution
Sample Scoring:
Mean Scores calculated from various sample combinations (e.g., n = 2).
Observed behavior:
Sample means pile up around 𝜇.
Approximates a normal distribution.
Probability Calculations
Calculation of probabilities related to sample means:
Probability of getting a mean $M > 6$: p(M > 6) = rac{2}{12} = 0.1667
Probability of getting a mean $M < 5$: p(M < 5) = rac{4}{12} = 0.3333
Characteristics of Sample Means
When examining a population with different distributions (bimodal, uniform, skewed):
Even distributions that are not normal will tend toward normality as sample sizes increase.
E.g., for $n = 30$, the distribution of sample means approaches normality regardless of the population distribution shape.
Central Limit Theorem (CLT)
The CLT states:
The mean of the sample means (M) equals the population mean, 𝜇.
The standard deviation of the sample means (standard error) is given by rac{ ext{Population SD}}{ ext{sqrt}(n)}.
As sample size (n) increases, the distribution of sample means approaches normal distribution regardless of the population's shape.
Standard Error of Mean (SEM)
Definition:
It describes how well an individual sample mean represents the population mean, 𝜇.
Decreases as sample size increases:
ext{Standard Error} = rac{ ext{Population SD}}{ ext{sqrt}(n)}
Example:
For n=1, SEM=10; n=4, SEM=5; n=9, SEM approximately 3.33; n=64, SEM=1.25.
Example Problem Solving
Question:
Probability of sample mean exceeding certain values:
Question 1 highlights a population normal distribution with given parameters (e.g., 𝜇 = 500, 𝜎 = 100).
Calculate the probability that $M > 540$:
$z$-score calculation leads to conclusion using z-tables resulting in $p(M > 540) = 0.02275$.
Range of Expected Scores
Question 2:
Determining the expected score range with 80% probability.
Utilizing $z$-score boundaries to find limits around the mean yielding 474.4 to 525.6.
Probability Calculations on M
Question 3:
Analysis of n = 64 observations:
a) For $M < 16$, z = -2; $p(M < 16) = 0.02275$.
b) For $M > 23$, z = 1.5; $p(M > 23) = 0.06681$.
c) For $17 < M < 24$, combine probability ranges to derive $p(17 < M < 24) = 0.91044$.
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