GLOSSARY
Analyse
To examine, scrutinise, explore, review, consider in detail for the purpose of finding meaning or relationships, and identifying patterns, similarities and differences.
Communicates
Conveys knowledge and/or understandings to others.
Complex
Consisting of multiple interconnected parts or factors.
Data
The plural of datum; the measurement of an attribute, for example, the volume of gas or the type of rubber. This does not necessarily mean a single measurement: it may be the result of averaging several repeated measurements. Data may be quantitative or qualitative and be from primary or secondary sources.
Demonstrate
Give a practical exhibition as an explanation.
Describe
Give an account of characteristics or features.
Explain
Provide additional information that demonstrates understanding of reasoning and/or application.
Identify
Establish or indicate who or what someone or something is.
Investigate
Plan, collect and interpret data/information and draw conclusions.
Non-routine problems
Problems solved using procedures not previously encountered in prior.
Reasonableness
Reasonableness of conclusions or judgements: the extent to which a conclusion or judgement is sound and makes sense.
Recognise
Be aware of or acknowledge.
Reliability
The degree to which an assessment instrument or protocol consistently and repeatedly measures an attribute achieving similar results for the same population.
Routine problems
Problems solved using procedures encountered in prior learning activities.
Solve
Work out a correct solution to a problem.
Statistical investigation process
The statistical investigation process is a cyclical process that begins with the need to solve a real world problem and aims to reflect the way statisticians work. One description of the statistical investigation process in terms of four steps is as follows.
Step 1. Clarify the problem and formulate one or more questions that can be answered with data.
Step 2. Design and implement a plan to collect or obtain appropriate data.
Step 3. Select and apply appropriate graphical or numerical techniques to analyse the data.
Step 4. Interpret the results of this analysis and relate the interpretation to the original question; communicate findings in a systematic and concise manner.
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Understand
Perceive what is meant, grasp an idea, and to be thoroughly familiar with.
Validity
The extent to which tests measure what was intended; the extent to which data, inferences and actions produced from tests and other processes are accurate.