Week One Flashcards

1
Q

What is the difference between descriptive and inferential statistics

A

Descriptive: summaries and describe numbers e.g measures of central tendency and their deviations e.g SD

Inferential: used to estimate a number that is unknown in a population // used to draw inferences about our data

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2
Q

What is the statistical method picked decided on?

A

Number of variable e.g two or more than two

Level of measurement e.g nominal, ordinal, interval and ratio

Types of comparisons e.g. differences between conditions v relationships among variables

Research design e.g. correlational design, experimental design or quasi-experimental design

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3
Q

Describe data and variable

A

Data: variables that have been organised for analysis

Variable: something that varies and that is measured - opposite of a variable is a constant as it doesn’t change

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4
Q

What are the three types of variables

A

Categorical: arbitrary values represent categories e.g gender or type of crime

Discrete: can only have certain values within a range e.g the number of campus crimes last year (whole number)

Continuous: can take on any value e.g gpa or crime rate can be whole number or decimals

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5
Q

Define the IV and DV

A

IV - controlled or manipulated by the research. Also referred to as the antecedent and is the cause in a cause/ effect relationship

DV - not controlled or manipulated by the researcher. Also referred to as the outcome and is considered the effect in a cause and effect relationships

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6
Q

What are the four levels of measurements

A

Nominal: categories associated with the variable are different eg yes and no, genders, cities etc

Ordinal: categories associated with the variables are different and the categories are rankable eg likert scales, letter grades

Nominal and ordinal are qualitative - categories have numerical value but no mathematical meaning

Interval data: categories associated w variables are different, and categories are rankable and the intervals are equal distances between gaps e.g temperature

Ratio: categories that are different, rankable, intervals are equal distance apart and there is a true zero eg victimization rate

Interval and ratio are quantitative and have mathematical meaning

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7
Q

What are the three research design

A

Experimental: may be able to infer causation if the researcher has manipulated the IV. True experiment involves random allocation to minimise confounding variables e.g ensure outcome is not caused by other factors

Quasi experimental: those that compared outcomes for an IV, but the IV has not been manipulated or participants have not been randomly allocated.

Correlational: rest relationships, cannot infer causation.

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