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, π.
- 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 π.
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 π.
- 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, π.
- 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, π.
- 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., π = 500, π = 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 $p(17 < M < 24) = 0.91044$.