170 likes | 183 Views
Learn about hypothesis testing, types of hypotheses, significance levels, types of errors, inferential statistics, and the importance of statistical tests in research. Develop skills to analyze data using descriptive and inferential statistics.
E N D
Hypothesis Testing • Hypothesis is a ‘testable statement’ • Types = alternate, research, experimental (H1), null (H0) • They are 1 or 2 tailed (directional or non directional (but not the Null) • They include an IV and a DV • They are operationalised (precisely defined in terms of how the IV and DV will be manipulated or measured) • Aim of research is to accept/reject H1 or H0 • Complete the exercise
Inferential Statistics • Analyse using descriptive statistics (tells you whether a difference exists or not) • Analyse using inferential statistics (tells you whether the differences are significant) • If the sample has yielded significant results, we can infer the same is true of the population • The statistical tests stringently process the data to tell you whether or not chance has caused the outcome • Therefore part of the whole process involves having a null hypothesis (HO) and levels of significance or probability e.g. 5%
‘Proof’ • In science it is only possible to prove something is not the case • e.g. ”all swans are white” • Can’t be proved • But can be disproved – HOW?
Significance levels • Likelihood or probability • Expressed as a % and as a decimal • e.g. heads or tails 50% or 0.5 • Picking the ace of hearts from 4 aces 25% or 0.25 • Likelihood of having schizophrenia 1% or 0.01
Ruling out Chance • Standard level of significance in Psychology = 5% (0.05) • Accept H1 – then p < 0.05 • Accept H0 – then p > 0.05 • BUT a significant result might still be wrong 5 times in 100 – in other words it happened due to chance – we live with this risk
Type 1 and type 2 • Type 1 is more likely when we have a high significance level e.g. 10% • Type 2 is more likely when we have a low significance level e.g. 1% • At 5% both are equally likely
What you need to be able to do • Identify an appropriate statistical test • Explain your choice • State a conclusion based on a stats test • Write a null hypothesis • Explain why a particular stats test was used
Descriptive Statistics • Descriptive statistics give us a way to summarise and describe our data but do not allow us to make a conclusion related to our hypothesis. For example, measure of central tendency such as ____________, ___________ or ____________. It also includes graphs and charts, and measures of dispersion such as _________________ or ______________ _____________.
Tasks • Measure of central tendency • Match the definitions to the terms, and the strengths and weaknesses. • Measure of dispersion • What is a range? • Read about standard deviation • What are bar charts and scatter graphs? Define and draw an example. • Complete the memory experiment tasks
What is the point? • Why do we bother to use inferential statistical tests? • Inferential statistics allow us to draw conclusions from findings. • They allow us to see whether our results are the result of something happening, or are just down to chance. • Cross out the words on the sheet and fill in the table
Pg 20 • Read the example about the chip bins and female drivers. • Read “Using Statistical Tests” on pg 22-23 • Answer the questions on the sheet
Levels of significance • This refers to the minimum probability we will accept that our results are due to chance. If it is too lenient, then our results may appear to be significant when in fact they are not. If it is too stringent, then our results may appear to be insignificant when they actually they are. • In psychology, we generally aim for a significance level of _______%. This means that we can be _________% certain that our results are not due to chance. • This is written as P≤_______
Example • Read the example about biscuits • On the sheet, cross out the right words and fill in the table
Levels of measurement • Nominal • Ordinal • Interval • Ratio NOIR • Read the descriptions on the sheet give your own examples
Choosing the right test * Refers to Parametric tests (see handout)