IB Maths AI 4.10 Notes
This page contains our IB Maths AI notes for 4.10. By reading each one of these notes, you will fully cover the content for IB Maths AI 'Linear transformations & combinations'.
Chapters
Linear transformations
In this section, we study how expectation and variance change when a random variable is transformed, how to work with linear combinations of random variables, and why certain sample statistics are used as unbiased estimates of population parameters. We begin by reviewing linear transformations, which work the same as introduced in distribution properties. Let be a random variable. If we transform to , then the expectation changes linearly:
This means multiplying by multiplies the mean by , and adding shifts the mean by .
The variance changes differently:
The constant does not affect the variance, because shifting all values by the same amount does not change the spread.
A few examples are:
- If , then .
- If , then .
- If , then .
For variance:
- If , then .
- If , then .
- If , then .
Standard deviation is then calculated as the .
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