Week 4 Flashcards

1
Q

What is standard deviation?

A

spread form the mean

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2
Q

What is positively skewed data?

A

mean is higher than median

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3
Q

What is negatively skewed data?

A

median is higher than mean

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4
Q

What is the null hypothesis?

A

use of the word ‘no’

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5
Q

What is the positive hypothesis?

A

what you expect the outcome to be

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6
Q

What is the theoretical population?

A

the larger group the researcher wants to generalise findings to

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7
Q

What is the study population?

A

the population the researcher has access to

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8
Q

What is a sampling frame?

A

list of all the participants that usually relates to the study population

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9
Q

What is probability sampling?

A

random selection of participants from a population to ensure that all members of a target population have a chance of being selected

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10
Q

What are the pros of probability sampling?

A

more representative sample with reduced sampling errors and bias

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11
Q

What is non-probability sampling?

A

participants are chosen in a process that does not give all the participants in a population the equal chance of being selected

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12
Q

What are the probability sampling techniques?

A

simple random sampling, systematic random sampling, stratified random sampling, cluster sampling, multistage sampling

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13
Q

What are the non-probability sampling techniques?

A

cluster sampling, snowball sampling, purposive sampling, quota sampling

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14
Q

Simple random sampling

A

*every participant has an equal chance of being selected
+easiest and most common, high generalisability
-not as efficient as stratified random sampling

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15
Q

Systematic random sampling

A

*systematically selected from a list (ie every nth participant)
+easy to use and implement
-systematic biases unless the ordering of participants on the list is random

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16
Q

Stratified random sampling

A

*population divided into groups (strata), then simple random or systematic random sampling is used
+adequate sampling size
-stratas not clearly defined, complicated, time consuming

17
Q

Cluster random sampling

A

*population randomly divided into a cluster, then a chosen cluster is sampled
+cost effective
-less efficient for large sample sizes

18
Q

Multistage random sampling

A

*carried out in various stages with a primary population then sub populations
+used when simple random/systematic random/stratified sampling would be too expensive or complex

19
Q

Convenience sampling

A

*participants are chosen because they are convenient (ie close proximity)
+easy, cost effective, rich qualitative data
-does not produce representative samples, hard to replicate results

20
Q

Snowball sampling

A

*begin identifying someone who meets criteria and ask them to find other people
+used for hard to reach participants, cost effective
-not used for generalisations, relies on participants to increase sample size, can be saturated

21
Q

Purposive sampling

A

*look for cases that provide in-depth information about the issue being researched
+can provide the researcher with justifications to make generalisations
-researcher bias

22
Q

Quota sampling

A

*participants chosen according to pre-specified quotas regarding demographics, attitudes, behaviours etc
+ensures an adequate number of subjects with appropriate characteristics
-not used for generalisations

23
Q

What are the two types of sampling error?

A

random and systematic - both introduce bias

24
Q

What is random error?

A

commonly occur in a sample of over- or under- represented groups
can be reduced by increasing sampling size

25
Q

What is systematic error?

A

cannot be reduced by increasing sampling size, usually occur as a result of inconsistencies or errors in the sampling frame

26
Q

Why is sample size calculated in quantitative research?

A

to prevent the waste of valuable resources or unethical studies

27
Q

What is the probably of an event that is possible vs impossible?

A
Impossible = 0
Certain = 1
28
Q

What is a type I (a) error?

A

probability of detecting a statistically significant effect or difference between study groups in a sample when it does not exist in the target population, false positive

29
Q

If the p value is set at 0.05, what can we say about it?

A

we can be 95% confident that a real different exists in the population and there is a 5% probability that the findings were due to chance alone

30
Q

What is a type II (b) error?

A

when the probability of finding that there is no effect or difference between groups in the sample, when in the population, there is a true effect or difference, false negative

31
Q

How can a sample size be calculated?

A

by using a power analysis

32
Q

What is saturation?

A

when little or no new data is generated (adequate sample size)

33
Q

Why do sample size for qualitative research tend to be smaller than for quantitative research?

A

lengthy data collection processes and analysis required for qualitative methods