bugl
bugl
HomeLearnPatternsSearch
HomeLearnPatternsSearch

Loading lesson path

Learn/AI/Statistics
AI•Statistics

Machine Learning Statistics

Statistics are tools to get answers to questions about data:

What is

Common?

What is

Expected?

What is

Normal?

What is the

Probability?

Inferential Statistics

Inferential statistics are methods for quantifying properties of a population from a small

Sample

You take data from a sample and make a prediction about the whole population. For example, you can stand in a shop and ask a sample of 100 people if they like chocolate. From your research, using inferential statistics, you could predict that 91% of all shoppers like chocolate.

Incredible Chocolate Facts

Nine out of ten people love chocolate. 50% of the US population cannot live without chocolate every day.

You use

Inferential Statistics to predict whole domains from small samples of data.

Descriptive Statistics

Descriptive Statistics summarizes (describes) observations from a set of data. Since we register every newborn baby, we can tell that 51 out of 100 are boys. From these collected numbers, we can predict a 51% chance that a new baby will be a boy. It is a mystery that the ratio is not 50%, like basic biology would predict. We only know that we have had this tilted sex ratio since the 17th century.

Note

Raw observations are only data. They are not real knowledge.

You use

Descriptive Statistics to transform raw observations into data that you can understand.

Descriptive Statistics Measurements

Descriptive statistics are broken down into different measures:

Tendency

(Measures of the Center) The Mean (the average value)value The Median (the mid point value) The Mode (the most common value)

Spread

(Measures of Variability)

Min and Max

Standard Deviation

Variance

Skewness

Kurtosis

Next

Descriptive Statistics