Differences, Frequencies and Relationships Flashcards

1
Q

Why cant t-tests be used for testing between more than 2 groups?

A

Very time consuming as 4 groups would require 6 t-tests

Multiple testing increases our chance of making type 1 errors

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2
Q

What is ANOVA?

A

Analysis of Variance

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3
Q

When do we use ANOVA?

A

Used to determine differences between more than 2 groups

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4
Q

What does ANOVA look at?

A

Looks at the variability of the data rather than directly at the means

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5
Q

What are the assumptions of ANOVA?

A

Continuous data within each group
Equal variance in each group
Samples are independent
Need 3 or more groups to test

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6
Q

What happens if the assumptions of the ANOVA are not held/met?

A

P value may be wrong

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7
Q

What should you do if the assumptions of the ANOVA are not met?

A

Try transforming the data
Use a non-parametric equivalent test
If samples are not independent then need another method

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8
Q

What does the one way ANOVA do?

A

Compares the means from 3 or more independent samples giving overall P values

Compares the test statistic to an F distribution

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9
Q

What are the null hypothesis for a one way ANOVA?

A

The samples for each group come from populations with the same mean values.

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10
Q

How does the one way ANOVA separate the variability?

A

Separates total variability in the data into:

Between group variance (treatment factor; differences between individuals from the different groups)

Within group variance (unexplained residual error; random variation between individuals within each group)

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11
Q

For a one way ANOVA, what would it mean if there are differences between the groups?

A

Then the between group variance will be larger than the within group variance.

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12
Q

How does the one way ANOVA work?

A
  • Just use 2 groups for the illustration example – hypothetical weights for 2 groups of fish
  • (a) Calculate the overall mean & the group means
  • (b) The total variability is the sum of squares of the distances of each point from the overall mean; broken down into between-group variability & within-group variability
  • (c) The between-group variability is the sum of squares of the distances from each point’s group mean to the overall mean
  • (d) The within-group variability is the sum of squares of the distances from each point to its group mean
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13
Q

What are some other ANOVA tests?

A

Repeated measures ANOVA

Two way ANOVA

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14
Q

what is the purpose of the repeated measures ANOVA?

A

tests whether the means of two or more groups of related measurements are different

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15
Q

what is the purpose of the two way ANOVA?

A

tests the effect of two factors at once (e.g. crop yield effect by adding different amounts of nitrate and phosphate)

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16
Q

What is the Kruskal-wallis test?

A

Extension of the Wilcoxon rank sum test

17
Q

What is the Chi-square test used for?

A

It is used to discover if there is a relationship between categorical variable

18
Q

What are the assumptions of the Chi-square test?

A

Variables should be categorical (ordinal or nominal)
Should have two or more groups
All expected frequencies must be greater than 5

19
Q

What is the purpose of the Chi-square test?

A

Test whether characteristics are different from expected values

Measures difference between the observed and expected values.

20
Q

What is the null hypothesis of the Chi-square test?

A

the ratio obtained is equal to that expected

21
Q

How do you determine the significance probability of the chi-square test?

A

Compare the value of 𝜒2with the critical value of the 𝜒2 statistic for (N-1) df (N is the number of character states, e.g. 2-1), at the 5% significance level

22
Q

How do you decide to accept or reject the null hypothesis of the chi-square test?

A

If 𝜒2 ≥ critical value, reject the null hypothesis, concluding that the distribution is significantly different from expected

If 𝜒2 < critical value, the null hypothesis cannot be rejected, concluding that no significant difference from expected was found

23
Q

How can the chi-square test be used for associations?

A

• Tests whether the character frequencies of 2 or more groups are associated in some way
Looks to see if the characteristic is distributed randomly or not

  • Determining the expected frequencies is the tricky part
  • Uses the same methodology once the expected values have been determined
24
Q

What are the two main tests for relationships?

A

Linear regression

Correlation

25
Q

What is the first thing to do when we Want to know if and how two sets of measurements (continuous variables) are associate

A

Draw a scatter plot

26
Q

What is the outcome variable?

A

The dependent or response variable

27
Q

What is the predictor variable

A

The explanatory or independent variable

28
Q

How are the scatter plots for a relationship test composed?

A

Predictor variable on x axis and outcome on the y axis

29
Q

What is the purpose of the linear regression test?

A

quantify the linear relationship between two sets of paired measurements

30
Q

What are outliers?

A

Extreme values found in a data set that can skew the data and affect the mean.

31
Q

What is the purpose of the correlation test for relationships?

A

test to determine whether there is a linear association between two sets of paired measurements

32
Q

What are the assumptions of the correlation test?

A

At least one variable is Normally distributed

Linear relationship between variables

You can try to transform data to fulfil either of these requirements

33
Q

What test do you use if the correlation assumptions cannot be met?

A

Pearson’s Rank correlation

34
Q

What are the two types of Rank correlation test?

A

Spearmans

Kendalls

35
Q

When do we use spearmans rank correlation test?

A

If a significance test is required then use spearmans

36
Q

When do we use Kendalls rank test?

A

If there is an estimate of strength of correlation

37
Q

How do we tell between association and relationships?

A

Are two variables associated

Correlation tests for a linear relationship

Linear regression quantifies the relationship