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Applied 1 - Chapter 1 + 2
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Created on February 26, 2024
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Transcript
LO's
Chapter 1 - Data Collection
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Knowledge check 1
1.1 - Populations and samples
Rules
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1.2 - Sampling
Rules
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1.2 - Sampling
Rules
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1.2 - Sampling
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1.3 - Non-random Sampling
Rules
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1.4 - Types of data
Rules
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1.5 - The large data set
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1.5 - The large data set
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1.5 - The large data set
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LO's
Chapter 2 - Measures of location + Spread
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Knowledge check 1
2.1 - Measures of central tendency
Rules
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2.1 - Measures of central tendency
Rules
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2.1 - Measures of central tendency
Rules
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2.2 - Other measures of location
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2.2 - Other measures of location
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2.2 - Other measures of location
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2.3 - Measures of spread
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2.4 - Variance + standard deviation
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2.4 - Variance + standard deviation
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2.4 - Variance + standard deviation
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2.5 - Coding
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2.5 - Coding
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Chapter 2 Learning Objectives
- Calculate measures of central tendency such as the mean, median and mode.
 - Calculate measures of location such as percentiles and deciles.
 - Calculate measure of spread such as range, interquartile range and interpercentile range.
 - Calculate variance and standard deviation.
 - Understand and use coding.
 
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A Level
Higher
Foundation
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b2-4ac
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A Level
Higher
Foundation
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b2-4ac
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b2-4ac
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b2-4ac
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A Level
Higher
Foundation
A Level
Higher
Foundation
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A Level
Higher
Foundation
A Level
Higher
Foundation
b2-4ac
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A Level
Higher
Foundation
b2-4ac
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b2-4ac
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A Level
Higher
Foundation
A Level
Higher
Foundation
A Level
Higher
Foundation
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A Level
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Chapter 1 Learning Objectives
- Understand 'population', 'sample', 'census', and comment on the advantages and disadvantages of each.
 - Understand the advantages and disadvantages of simple random sampling, systematic sampling, stratified sampling, quota sampling and opportunity sampling.
 - Define qualititative, quantitative, discrete and continuous data, and understand grouped data.
 - Understand the large data set and how to collect data from it, identify types of data and calculate simple statistics.
 
b2-4ac
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A Level
Higher
Foundation
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b2-4ac
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A Level
Higher
Foundation
A Level
Higher
Foundation
A Level
Higher
Foundation
A Level
Higher
Foundation
A Level
Higher
Foundation
b2-4ac
dy
dx
f(π₯+a)
y dπ₯
Logs
A Level
Higher
Foundation
A Level
Higher
Foundation
b2-4ac
dy
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Logs
b2-4ac
dy
dx
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A Level
Higher
Foundation
A Level
Higher
Foundation
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Logs
A Level
Higher
Foundation
A Level
Higher
Foundation