PSY201: Chapter 7 - Sample Means Flashcards

1
Q

Samples and Populations

A

can choose 1000s of potential samples from pop - have to worry about sampling error
diff samples will differ from each other ⇒ won’t necessarily have same sample means

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2
Q

Distribution of Sample Means

A

set of possible samples forms pattern⇒ distribution of sample means - allows us to predict sample characteristics
set of sample means for all the possible random samples of specific size (n) that can be selected from a pop

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3
Q

Distribution of Sample Means

A

we need to make inferences about sample mean rather than single score
distribution of sample means is diff from distribution of scores because sample means are statistics ⇒ sampling distribution

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4
Q

Distribution of Sample Means

A

statistic obtained by selecting all possible samples of specific size from a pop
sample means pile up around pop mean because they are representative of pop

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5
Q

Distribution of Sample Means

A

pile of sample means tends to be normally distributed
rare to find sample means really far from μ
larger the sample size⇒ closer sample means typically are to μ

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6
Q

Distribution of Sample Means

A

very important distribution

spread of sampling distribution of mean decreases as sample size increases

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7
Q

Distribution of Sample Means

A

mean of the distribution is not affected by sample size

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8
Q

The Central Limit Theorem

A

distribution of sample means has well-defined, predictable characteristics specified in the Central Limit Theorem:
Given distribution with a mean μ + standard deviation σ

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9
Q

The Central Limit Theorem

A
sampling distribution of the mean approaches normal distribution with a mean of μ + standard deviation of σ/√n, as n approaches infinity
n = sample size
# of samples assumed to be infinite.
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10
Q

The Central Limit Theorem

A

Sample mean distributions approach a normal distribution very quickly as n increases, even if original distribution is not normal

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11
Q

The Central Limit Theorem

A

assume sample mean distribution is normal if either:
pop from which samples are obtained is normal
sample size is n>/=30

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12
Q

The Central Limit Theorem

A

expect sample means to be close to pop mean
sample means should “pile up” around μ
distribution of sample means tends to form a normal shape

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13
Q

The Central Limit Theorem

A

mean of distribution of sample means = Expected Value of M

always = μ

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14
Q

The Central Limit Theorem

A

individual sample mean will probably not be identical to its pop mean; some error between M and μ.
Some sample means relatively close to μ, others will be relatively far away

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15
Q

The Central Limit Theorem

A

standard distance between M and μ = Standard Error of M

standard deviation of distribution

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16
Q

The Central Limit Theorem

A

standard error of M measures how well sample mean represents entire distribution
σ2M = σ2/n
SEM=σM = σ/√n

17
Q

Standard Error

A

describes distribution of sample means

how much difference is expected from 1 sample to another

18
Q

Standard Error

A

measures how well individual sample mean represents entire distribution
how much distance is reasonable to expect betw a sample mean + pop mean for distribution of sample means

19
Q

Standard Error

A

population standard deviation, σ measures standard distance betw a single score (X) + population mean.
standard deviation provides a measure of the error expected for smallest possible sample, when n = 1

20
Q

Standard Error

A

As the sample size increases, ⇒ error should decrease

larger the sample, more accurately should represent its population

21
Q

law of large numbers

A

larger the sample size, n, more probable it is sample mean will be close to pop mean.

22
Q

Standard Error

A

Determined by sample size
Determined by standard deviation of pop
if you have a lot of variability in pop ⇒ higher SEM

23
Q

z-score

A

can be computed for each sample mean
tells where specific sample mean located relative to all other sample means
must remember to consider the sample size (n) + compute SE before you start any other computations

24
Q

Probability and the Distribution of Sample Means

A

distribution of sample means must satisfy at least 1 of criteria for having normal shape before you can use unit normal table

25
Q

Probability and the Distribution of Sample Means

A

normal sample mean distribution ⇒ can describe how particular sample related to another potential sample
an look up probabilities in unit normal table regarding likelihood of particular sample given makeup of pop

26
Q

Probability and the Distribution of Sample Means

A

probability associated with specific sample mean = proportion of all possible sample means

27
Q

Probability and the Distribution of Sample Means

A

z = M−μ/σM

28
Q

Probability and the Distribution of Sample Means

A

positive z-score = M > μ + negative z-score = M < μ

numerical value of the z- score indicates distance betw M + μ in terms of standard error

29
Q

Probability and the Distribution of Sample Means

A

procedure for finding probabilities for sample means is same as we used for individual scores

30
Q

Looking Ahead to Inferential Statistics

A

there is always margin of error that we must consider when we use sample mean to make inferences about pop mean.

31
Q

Looking Ahead to Inferential Statistics

A

Determine whether manipulated independent variable had effect on our dependent variable - sample mean for treatment group really different from sample mean for the control group
use distribution of sample means + standard error to help us make this decision

32
Q

Looking Ahead to Inferential Statistics

A

use the distribution of sample means to show what we would expect scores to be for a control group
If treatment group is not noticeably different from expected mean distribution scores⇒ treatment did not have an effect

33
Q

Looking Ahead to Inferential Statistics

A

use criteria of there being z = +/- 1.96

34
Q

Looking Ahead to Inferential Statistics

A

standard error tells us how close diff sample means are clustered around true pop mean
small SE ⇒ most samples similar, doesn’t really matter which sample we get

35
Q

Looking Ahead to Inferential Statistics

A

SE large ⇒ lot of deviation from sample to sample, sample might not be representative
we will want to replicate our results using diff samples to become more confident in findings
simple solution: obtain as large a sample as we can
remember: SE gets smaller when we increase n