Statistics Flashcards

1
Q

Positive skew

A

skewed to the left

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2
Q

negative skew

A

skewed to the right

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3
Q

what is kurtosis

A

Pointy/flat. How heavily the tails of a distribution differ from the tails of a normal distribution

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4
Q

what is a hypothesisa

A

a predictable theory to test

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5
Q

what is a alpha level

A

the significance level

level which you would be happy to make an error rejecting the null hypothesis if it were really true

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6
Q

what does it mean if If p < alpha

A

null hypothesis is rejected this is a statistically significant result

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7
Q

what is a type 1 error

A

• False positive
• There wasn’t really a difference/ relationship but you said there was
• You rejected the null hypothesis when it was actually true
• A higher alpha level = more type 1 errors (the acceptable level of error is higher and therefore you will make more errors)
• Also depends on the type of stats you use and sample
Alpha too high

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8
Q

what is a type 2 error

A

• False negative
• There was a difference/ relationship but you said there wasn’t
• You accepted the null hypothesis and missed the difference/ relationship
• A lower alpha level = more type 2 errors (acceptable level of error is low and therefore you will miss differences/ relationships because you think these are errors)
• Also depends on the type of stats you use and sample
Alpha too low

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9
Q

what is power

A

the chance of spotting an error

A powerful test is one that spots the difference if there is one

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10
Q

what are Parametric tests

A

• Interval/ ratio scale, data normally distributed, data from multiple groups have the same variance, data are independent
• More powerful
• Greater range of tests
Easier to understand and compute

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11
Q

give the equation for the regression line

A

Y=mx + c where m is gradient, c is intercept on the y axis

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12
Q

what is r

A

R = 0 means there is no correlation

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13
Q

what is r squared

A

R squared is a good indicator of goodness of fit

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14
Q

what is regression

A

• Regression puts the line through and gives the equation so you can calculate y
• Regression is basically the same thing as correlation but with more information
• Linear regression describes strength and direction of the relationship between 2 variables where you measure one and manipulate or control the other variable as basis for prediction
• —-> Bivariate regression
• Linear regression helps to establish the correlational relationship
• Residual = the difference between a predicted score and an actual score. Residuals are - if the line is perfect (measure of error)
Bivariate regression - need to make sure residuals are normally distributed (Shapiro Wilk), homoscedasicity

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15
Q

what is linear regression

A

• Describes strength and direction of the relationship between variables where you measure one and manipulate or control another
• Helps to establish the correlational relationship as a basis for prediction
• To check linear regression is significant, use the ANOVA table
When you run linear regression analysis in SPSS, Pearson’s correlation coefficient is calculated as part of the analysis

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16
Q

what is multiple linear regressoin

A
• Normality of residuals 
	• At least 2 IV 
	• Each IV has at least 10 participants 
	• Linearity 
Normal distribution of all unstandardized residuals combined together
17
Q

what is linear bivariate regression

A

• Residuals normally distributed
• Only looking for linear relationship
• Need to make sure the residuals are not related to each other
One outlier can cause a big proble

18
Q

what is multiple regression

A

• When there are more variables

How several things are relate

19
Q

what is Standard error of the estimate

A
  • Tells us how accurate your predicted value is
    • Used to build a 95% confidence interval
    • To calculate how much error there would be if you used the linear regression to predict a score
    • 95% confidence interval is +/- 1.96 x standard error of the estimate
    • Confidence interval= the range of the scores what the y will be in because the line doesn’t fit exactly and therefore we might be slightly off with our prediction
    • Confidence interval means that we can be 95% sure that the predicted scores will ie within the identified range of scores
    • To calculate the confidence interval, multiply the standard error by 1.96
20
Q

what are beta weights

A
  • Allow you to compare the importance of different IV which are usually calculated using different measurement units
    • Standardised scores of your raw values which allow for easier comparisons to be made
    • The highest beta weight is the most important variable in your multiple regression
    • Absolute value = ignorewhether it is positive or negative
21
Q

what are error bars

A

Give you an idea how precise the results are (indicate error)

22
Q

what is the absolute difference

A

• Simply find a difference between the two means and ignore if it is positive or negative
• Percentage of overall mean usually asked in the context of absolute difference between the means of the 2 groups. Need to find the absolute difference between the means of 2 groups. You then need to find the overall mean of 2 groups and express as a percentage
Absolute difference % = absolute difference / overall mean x 100

23
Q

when would you use a one way between subjects ANOVA

A
  • Interval/ ratio
    • At least 3 levels of IV
    • Normality of DV within every level of IV
    • Homogeneity of variance