Qualitative Data P.227
Data based on descriptive information. Usually collected in a free-form manner.
Quantitative Data P.228
Data that can be measured, verified, and manipulated, also known as numerical data.
Discrete Data P.228
Count data and are sometime called categorical/attribute data.
Continuous Data P.228
Exist on an interval, or on several intervals. Variable data that can be transformed into attribute data, but the reverse is not true.
Measurement Scales P.229
Nominal Scales P.229
Classify data into categories with no order implied.
Ordinal Scales P.229
Refer to positions in a series, when order is important but precise differences between values aren’t defined. Bright, Brighter, Brightest.
Sometimes collected as discrete data but manipulated as continuous data and analyzed with parametric tests.
Interval Scales P.230
Scales have meaningful differences but no absolute zero, so ratios aren’t useful.
Ratio Scales P.230
Scales have meaningful differences, and an absolute zero exists.
Sampling concepts P.231
Type of sampling P.232
Random sampling P.233
Equal probability of being chosen. Selected independently of every other member.
Stratified sampling P.233
Members are assigned to a unique stratum that are mutually exclusive and collectively exhaustive. Stratification variables should create a heterogeneous set of strata.
Systematic sampling P.234
Sampling from an ordered population at a specified sampling interval, i. (interval sampling)
i = N/n, N (population) n (sample size)
k, k+i, k+2i…, k+(n-1)i.
Block sampling P.235
Non-probability sampling or judgement block sampling. The balance of a defined block are automatically chosen.
Factors influence Sample Size P.236
Determining sample size P.236
-As many as possible
-For correlational, experimental design, and causal-comparative studies: 30 per group.
<100: sample entire population
~500: sample 50% population
~1500: sample 20% population
>5000: sample 400 of the population
Sample size calculation when population is a known qty P. 237
n= N / 1+Ne^2
N= Population n= Sample size e= Margin of error 1/ √n
Good sampling design P.237
Data Collection: Operational Definition P.239
Common cause of poor data accuracy P.241
Useful data collection techniques P.243
Common data collection points
Data cleaning P.245
The process of detecting and correction and possibly removing inaccurate data form a set of data (usually through human means).