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Summary Statistics 1 - all the theory needed for the exam

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Subido en
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Escrito en
2025/2026

All of the theory of statistics one. From lectures + assignments combined into one document with everything.

Institución
Grado

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Statistics 1:
Population and Sample​ 2
Central Limit Theorem​ 2
Standard Error = ​σ​/ n​ 3
Sampling:​ 3
Variables: measurement levels​ 4
Formula: For a population​ 4
Formula: For a sample:​ 4
Measures of Centrality​ 4
Rule of Thumb: Confidence interval​ 5
Symbols and meanings​ 5
Common Charts​ 6
Inferential statistics​ 6
Overview of Inference​ 6
Classical Hypothesis Testing​ 6
Confidence interval​ 7
Prob-value (or p-value)​ 7
Distribution​ 7
Step-by-Step to Assess Distribution​ 8
Exploratory Data Analysis (EDA)​ 8
Z-testing and T-testing​ 9
Z-testing​ 9
T-Testing​ 9
What is the t-Statistic?​ 9
Steps for Z- and T-Test​ 10
Key Differences​ 11
Kind of Tests​ 12
Summary Table: Must-Know Tests​ 12
HOW TO ANSWER:​ 13
General Approach​ 13
Difference between errors:​ 13
Non-parametric methods​ 14
Types of Non-parametric Tests​ 14
Sign Test​ 15
Steps:​ 15
Wilcoxon-Signed-Rank Test​ 15
Mann-Whitney Test​ 16
Requirements:​ 16
Binomial Test​ 17
Steps to Perform a Binomial Test​ 18
Special Notes​ 18

, 1



Population and Sample

Population ​ The entire set of elements
Sample​ A subset of elements from the population, taken with the intention of making
inferences about the population

Parameter​ Numerical property of the population
Statistic​ Numerical property of a sample

Variability​ The phenomenon whereby repeated sampling from the same population results
in different values for the statistic

Sampling distribution​
Describes how the statistic varies when sampling is repeated, in other words: describes (extent
of) variability. This is the basis for inference

Central Limit Theorem

Even if a variable X is not normally distributed in the population, the Central Limit Theorem
tells us that:
-​ The sampling distribution of the mean will be approximately normal if the sample size is
large enough and the standard deviation (σ) is fixed.

Standard Error = ​σ​/ 𝑛
-​ where σ is the population standard deviation, and n is the sample size.

This means we can use normal distribution methods for the sample mean, even when the
population data is not normally distributed.

Sampling Bias: It occurs when the method of collecting your sample makes it more likely to
include individuals with certain characteristics from the population.

Sampling:
Method Example Best For

Systematic Survey every 5th customer in a queue Simple and evenly spaced samples;
avoids random clustering.


Cluster Survey all students in 3 randomly The population is divided into clusters, and
chosen schools a random selection of entire clusters is
made. Then, all individuals within the
selected clusters are surveyed.

, 2


Stratified Survey 10% from each income The population is divided into strata
bracket (groups based on specific characteristics,
like age or income)


Other types of sampling
-​ Simple Random Sampling: Every member of the population has an equal chance of
being selected.
-​ Convenience Sampling: Selection based on ease of access, without randomization,
which may lead to bias.
-​ Quota Sampling: Non-random selection to ensure the sample reflects certain
characteristics of the population.
-​ Snowball Sampling: Existing study subjects recruit future subjects from among their
acquaintances, useful for hard-to-reach populations.

Types of data:

1.​ Qualitative: ​ Non-numerical values
2.​ Quantitative:​ Numerical values (counts, measurements)
-​ Discrete: ​ Range of possible values is limited
-​ Continuous:​ Intermittent values (that occur at irregular intervals) are also possible.


Variables: measurement levels
Scale Characteristics Examples

Nominal Categorical, no order or ranking Eye color, car types,
koppen climate

Ordinal Categorical, ranked; differences between ranks Education levels,
unknown satisfaction, beaufort
scale

Ratio/Interval Measurable, equal intervals; allows meaningful Temperature K, height,
comparisons (0 means none) income

Interval Does not exist (0 doesn’t mean “none”). Temperature (°C or °F),
IQ scores, calendar
years.


Binary variable (a.k.a.: Dummy, or Boolean):
Is a type of variable that can take on only two possible values.
-​ True or not true, yes or no, 1 or 0
-​ Special case of a nominal variable: Mean = proportion of “1”

Escuela, estudio y materia

Institución
Estudio
Grado

Información del documento

Subido en
18 de marzo de 2026
Número de páginas
20
Escrito en
2025/2026
Tipo
RESUMEN

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