When graphs and statistics lie
I should be clear, statistics don't lie, people lie. One of the easiest ways to trick your audience is to confuse correlation with causation.
Correlation versus causation
I don't think I would be allowed to publish this book without taking a deeper dive into the differences between correlation and causation. For this example, I will continue to use my data of TV consumption and work performance.
Correlation is a quantitative metric between -1 and 1 that measures how two variables move with each other. If two variables have a correlation close to -1, it means that as one variable increases, the other decreases, and if two variables have a correlation close to +1, it means that those variables move together in the same direction—as one increases, so does the other, and vice versa.
Causation is the idea that one variable affects another.
For example, we can look at two variables: the average hours of TV watched in a day and a 0-100 scale of work performance (0 being...