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Dissertation Studies. Quantitative Data Analysis. Basic Analysis Approaches. description of a particular phenomena associations of particular behaviours and conditions differences between certain sub-groups or conditions relationships between concepts. Basic statistical approaches.
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Dissertation Studies Quantitative Data Analysis
Basic Analysis Approaches • description of a particular phenomena • associations of particular behaviours and conditions • differences between certain sub-groups or conditions • relationships between concepts
Basic statistical approaches • Category / Discrete • nominal • Ordered • ordinal • Continuous • interval • ratio description of a particular phenomena associations of particular behaviours and conditions differences between certain sub-groups or conditions relationships between variables prediction of variables modelling of relationships
What can we do with category type questions? • frequency analysis • occurrence of a response for a particular question or observation • expressed as a number or percentage 54.5% 45.5%
What can we do with category type questions? • The respondents to the questionnaire comprised 74 males (33%) and 150 females (67%) of which 54.5% were full time • If you have a small number of participants don’t use percentages - absolute numbers are more meaningful! Example Text Hint!
What can we do with category type questions? • Pie charts and Bar charts are the most appropriate figures to use.
What can we do with category type questions? • If we want to know if there are significantly different numbers in each category – we use a one-way chi2 • An objective test to determine differences between group sizes • <5% chance of the result being a random occurrence The respondents to the questionnaire comprised 74 males (33%) and 150 females (67%). A one-way chi2 suggested that there was a significant difference in the size of these groups (chi2=25.786, df=1, p<0.001) Example Text
What can we do with continuous type questions? • if the information is meaningful a frequency analysis can be undertaken for some numerical type variables (e.g. scales)
What can we do with continuous type questions? • distribution charts are the most appropriate figure to indicate the frequency analysis for numerical type variables
What can we do with numerical type questions? • central tendency • Mode • the most popular value • Median • is the middle case • Mean • the average of the cases
What can we do with numerical type questions? • Mode - the most popular case
what can we do with numerical type questions? • Median - is the middle case • Method of calculation • arrange the cases in order • the value of the middle case is the median • Mean - the mathematic average of the cases • only meaningful for interval and ratio variables
What can we do with numerical type questions? • measures of dispersion • range • difference between highest and lowest cases • standard deviation (SD ) • the average deviation from the mean
What can we do with numerical type questions? • The participants perceived their competence with playing the Cajon to be low. The mean competence was 2.794 with a standard deviation of 1.021. Example Text
What can we do with numerical type questions? • sometimes a table can be used to present the descriptive statistics relating to several variables.
Associations between two category questions • AKA: “crosstabulation”
Associations between two category questions • The responses to the question about use teaching status were divided into two groups: full and part time. Ninety-one females and 31 males indicated that they worked full time, and 59 females and 43 males indicated that they worked part time Example Text
Associations between two category questions • Stacked bar chart • Don’t use both tables and charts to present the same information Hint!
Associations between two category questions • If we want to know if there are significantly different numbers in each category – we use a two-way chi2 • An objective test to determine differences between group sizes • <5% chance of the result being a random occurrence • The results of a 2-way chi2 suggested that there was an association between gender and full/part time teaching status (chi2=7.043; df=2,1; p=0.008) Example Text
Differences between sub-groups on numerical questions • AKA: “Comparison of Means”
Differences between sub-groups on numerical questions • The responses to the question regarding teaching competency were divided into two groups: male and female. Females indicated that they were moderately low in their ability (mean = 5.606; SD = 3.025). Males responded similarly (mean = 4.162; SD = 3.450). Example Text
Differences between sub-groups on numerical questions • If we want to know if there are significantly different means for each sub-group – we use a t-test • An objective test to determine differences between group means • <5% chance of the result being a random occurrence • The results of a t-test indicated that Females (mean = 3.887; SD = 1.392) felt they were more competent than males (mean = 3.663; SD = 1.546) (t=3.206, p=0.002). Example Text
Relationships between numerical questions • AKA: “scatter-plot”
Relationships between numerical questions • How tightly the dots are bunched on the line indicate the strength of the relationship • It is positive if it raises to the right; negative if it falls to the right Hints!
relationships between numerical questions • A scatterplot was constructed to see if there was a relationship between a competency in the use of the Cajon and their competency as a teacher. The scatter-plot (see Figure 1) suggested that there was a positive relationship between teaching ability and playing ability. Example Text If we want to know if the two concepts are significantly related we use a correlation
Correlation • An objective test to determine relationships between variables/questions • <5% chance of the result being a random occurrence • is usually expressed by… • r = 0.824, p < 0.001 • correlation: • is it positive or negative? • strength is determined by its closeness to 1 • significance: • is it less than the selected value (0.05) • if so then it is significant