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Test your basic knowledge |
Measuring And Evaluating Teaching
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Study First
Subject
:
teaching
Instructions:
Answer 50 questions in 15 minutes.
If you are not ready to take this test, you can
study here
.
Match each statement with the correct term.
Don't refresh. All questions and answers are randomly picked and ordered every time you load a test.
This is a study tool. The 3 wrong answers for each question are randomly chosen from answers to other questions. So, you might find at times the answers obvious, but you will see it re-enforces your understanding as you take the test each time.
1. The extent to which the assessment can predict or agree with external constructs. Criterion validity is determined by looking at the correlation between the instrument and the criterion measure.
Ordinal Variables
balanced Scorecard Approach
Criterion Validity
Independent Variable
2. Variable that make it possible to rank order items measured in terms of which has less and which has more of the quality represented by the variable.
Ordinal Variables
Mean Score
Discrete Variable
Variance
3. The error of distorting a statistical analysis be pre-or post selecting the samples.
Selection Bias
Qualitative Data
Interval Variables
Effect Size
4. A variable that falls into one of two possible classifications (for example - number of children - number of defects).
Independent Variable
Dependent Variable
Hard Data
Dichotomous Variable
5. Objective and measurable quantitative measures - whether stated in terms of frequency - percentage - proportion - or time.
Soft Data
Hard Data
Split-half Reliability
Qualitative Data
6. Asymmetry in the distribution of sample data values.
Nominal Data
Concurrent Validity
Skewness
Interval Variables
7. The process of organizing an experiment properly to ensure that the right type of data - and enough of it - is available to answer questions of interest as clearly and efficiently as possible.
Experimental Design
Hard Data
Regression Line
Skewness
8. The best-fitting straight line through all value pairs of correlation coefficients.
Interval Variables
Intervention
Regression Line
Smile Sheet
9. The term researchers and statisticians use to define the 'manipulated' variable in an experiment. An 'experiment group' receives a treatment (for example - attends a training program) - and a control group does not.
Confounding Variable
Skewness
Treatment (Experimental) Variable
Independent Variable
10. A group of participants in an experiment that's equal in all ways to the experimental group - except the control group doesn't receive the experimental treatment.
Confidence Interval
Soft Data
Control Group
Continuous Variable
11. The process of assigning the sample that's drawn to different groups or treatments in the study.
Random Assignment
Hard Data
Experimental Design
Variance
12. A variable in which the units are in the whole numbers - or 'discrete' units (for example - number of children - number of defects).
Randomization
Discrete Variable
Experimental Design
Extraneous Variables
13. Assess the impact of a training program on learning.
Program Evaluation
Nominal Data
Confounding Variable
Reliability
14. The process of drawing the sample of people for a study from the population.
Independent Variable
Experimental Design
Selection Bias
Random Selection
15. Is a particular way in which observation tend to pile up around a particular value rather than be spread evenly across a range of values.
Normal Distribution
Concurrent Validity
Formative Evaluation
Mean Score
16. Each person in the population has an equal chance of being chosen for the sample. Choosing every tenth person from an alphabetical list of names - for example - creates a random sample.
Random Sampling
Treatment (Experimental) Variable
Effect Size
Extraneous Variables
17. A type of test reliability in which one test is split into two shorter ones.
Control Group
Split-half Reliability
Smile Sheet
Concurrent Validity
18. Qualitative measures are more intangible - anecdotal - personal - and subjective - as in opinions - attitudes - assumptions - feelings - values - and desires. Qualitative data can't be objectified - and that characteristic makes this type of data val
Program Evaluation
Qualitative Data
Intervention
Soft Data
19. A way of quantifying the difference - using standard deviation - between two groups. For example - if one group (the treatment group) has had an experimental treatment and the other (the control group) has not - the effect size is a measure of the ef
Reliability
Effect Size
Correlation
Stratified Random Sampling
20. A method that helps diffuses the covariates across the experimental and control groups. Researchers in organizations often have multiple dependent variable with one independent variable (for example - performance
Random Selection
Split-half Reliability
Inferential Statistics
Randomization
21. A variable whose quantification can be broken down into extremely small units (for example - time - speed - distance).
Ordinal Data
Validity
Continuous Variable
Training Transfer Evaluation
22. The extent to which an instrument agrees with the results of other instruments administered at approximately the same time to measure the same characteristics.
Split-half Reliability
Validity
Ordinal Data
Concurrent Validity
23. The treatment group; those participants who receive the 'treatment.'
Frequency Distributions
Experimental Group
Extraneous Variables
Split-half Reliability
24. Involves looking at participant's opinions - behaviors - and attributes and is often descriptive.
Discrete Variable
Qualitative Analysis
Validity
Randomization
25. Involves measuring what the practitioner intended to measure.
Discrete Variable
Selection Bias
Validity
Training Transfer Evaluation
26. The ability to achieve consistent results from a measurement over time.
Hard Data
Formative Evaluation
Reliability
Dichotomous Variable
27. A model for measuring effectiveness through four perspectives: the customer perspective - the innovation and learning perspective - the internal business perspective - and the financial perspective.
Continuous Variable
Validity
Covariates
balanced Scorecard Approach
28. Is information that can be difficult to express in measures or numbers.
balanced Scorecard Approach
Confounding Variable
Independent Variable
Qualitative Data
29. A nickname for the instructor and class training evaluation forms used in Level 1 evaluation.
Experimental Group
Extraneous Variables
Random Assignment
Smile Sheet
30. The range where something is expected to be.
Confidence Interval
Frequency Distributions
Selection Bias
Interval Variables
31. Frequently thought of as the 'outcome.' Or treatment variable. The dependent variable's outcome depends on the independent variable and covariates.
Inferential Statistics
Reliability
Ordinal Variables
Dependent Variable
32. Dividing the population into constituent parts - and then choosing sample members randomly choosing people from each age group creates a stratified random sample.
Smile Sheet
Reliability
Random Sampling
Stratified Random Sampling
33. Means probably true (not by chance) in statistics.
Validity
Concurrent Validity
Significant
Regression Line
34. An unknown or uncontrolled variable that produces an effect in experimental setting. A confounding variable is an independent variable that the evaluator didn't somehow recognize or control. It becomes a variable that confounds the experiment.
Hard Data
Program Evaluation
Formative Evaluation
Confounding Variable
35. Another name for a solution or set of solutions - usually a combination of (outliners) - of the three types of central tendency because each number in the data set has an impact on its (mean) value.
Skewness
Intervention
Standard Deviation
Qualitative Data
36. An assessment done when while its being formed.
Formative Evaluation
Experimental Group
Independent Variable
Split-half Reliability
37. A data point that's far removed in value from others in the data set.
Intervention
Selection Bias
Validity
Outlier
38. A measure of the relationship between two or more variables; if one changes - the other is likely to make a corresponding change. If such a change moves the variables in opposite directions - it is a negative correlation.
Correlation
Significant
Inferential Statistics
Criterion Validity
39. A commonly used measure or indicator of the amount of variability of scores from the mean. The standard deviation is often used in formulas for advanced or inferential statistics.
Continuous Variable
Standard Deviation
Program Evaluation
Inferential Statistics
40. The most robust - or least affected by the presence of extreme values (outliers) - of the three types of central tendency because each number in the data set has an impact on its (mean) value.
Program Evaluation
Mean Score
Treatment (Experimental) Variable
Soft Data
41. Numbers or variables that make it possible to rank order items measured in terms of which has less and which has more of the quality represented by the variable.
Ordinal Data
Dependent Variable
Frequency Distributions
Extraneous Variables
42. The variable that influences the dependent variable. Age - seniority - gender - shift - level of education - and so on may all be factors (independent variables) that influence a person's performance (the dependent variable).
Extant Data
Randomization
Independent Variable
Concurrent Validity
43. The multiple dependent variables in a study with multiple independent variables.
Correlation
Selection Bias
Covariates
Confounding Variable
44. Show the actual number of observations falling in each range or percentage of observations.
Selection Bias
Soft Data
Mean Score
Frequency Distributions
45. Measures the success of the learner's ability to transfer and implement the learning back on the job.
Training Transfer Evaluation
Standard Deviation
Continuous Variable
Independent Variable
46. Archival or existing records - reports - and data that may be available inside or outside an organization. Examples include - job descriptions - competency models - benchmarking reports - annual reports - financial statements - strategic plans - miss
Randomization
Selection Bias
Extant Data
Interval Variables
47. Undesirable variables that influence the relationship between variables an evaluator is examining.
Hard Data
Extraneous Variables
Frequency Distributions
Random Selection
48. Make it possible to rank order the items measured and quantify and compare the sizes of differences between them.
Interval Variables
Confounding Variable
Ordinal Variables
Concurrent Validity
49. Evaluators to make inferences about data from the sample to a compare the sixes of differences between them.
Concurrent Validity
Treatment (Experimental) Variable
Dichotomous Variable
Inferential Statistics
50. A measure of how spread out a distribution is. It's calculated as the average squared deviation of each number from the mean of a data set
Ordinal Data
Covariates
Interval Variables
Variance