AP Stats Master Review

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Last updated 12:13 AM on 5/2/26
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330 Terms

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Individual in statistics

The person, animal, or object described by a set of data.

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Variable

A characteristic that changes from one individual to another.

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Categorical variable

A variable that places individuals into groups or categories.

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Quantitative variable

A variable that measures numerical values where arithmetic makes sense.

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Discrete quantitative variable

A numerical variable with separated countable values, often integers with gaps.

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Continuous quantitative variable

A numerical variable that can take any value in an interval.

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Frequency table

A table showing the number of times each category or value occurs.

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Relative frequency table

A table showing the proportion or percentage of observations in each category.

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Cumulative frequency

The running total of counts up to a certain category or value.

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Cumulative relative frequency

The running total of proportions or percentages up to a certain value.

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Bar graph

A graph for categorical data using separated bars to compare counts or percentages.

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Pie chart

A circular graph showing parts of a whole, but it can be misleading if area or angles are distorted.

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Rule for all data displays

Include a title, labels, appropriate scales, and avoid distorting size or area.

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Why distorted graphs are dangerous

They can make differences look bigger or smaller than they actually are.

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Histogram

A graph for quantitative data that groups values into intervals and shows frequency.

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Why histograms are useful

They show the overall shape of large quantitative data sets.

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Limitation of histograms

Individual data values are not visible.

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Dotplot

A graph that shows each data value as a dot above a number line.

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Strength of dotplots

They show individual data points clearly.

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Weakness of dotplots

They become messy with large data sets.

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Stemplot

A display that separates data into stems and leaves while preserving individual values.

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When stemplots work best

For small to moderate data sets with values that can be neatly split.

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CUSS for describing a distribution

Center, Unusual features, Shape, Spread.

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Center of a distribution

The typical or middle value, often measured by mean or median.

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Mean

The arithmetic average of a data set.

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Median

The middle value when data are ordered.

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When mean is preferred

When the distribution is roughly symmetric and has no strong outliers.

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When median is preferred

When the distribution is skewed or has outliers.

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Resistant statistic

A statistic not strongly affected by outliers.

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Median as resistant

The median is resistant because extreme values do not greatly change its position.

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IQR as resistant

IQR is resistant because it uses the middle 50% of the data.

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Nonresistant statistic

A statistic strongly affected by outliers.

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Mean as nonresistant

The mean changes when extreme values are added.

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Standard deviation as nonresistant

Standard deviation increases when outliers create larger distances from the mean.

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Shape of a distribution

The overall pattern, including symmetry, skew, clusters, and modality.

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Symmetric distribution

A distribution where the left and right sides are roughly mirror images.

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Skewed right

A distribution with a long tail to the right.

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Skewed left

A distribution with a long tail to the left.

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Direction of skew

The direction of the tail, not the side with most of the data.

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Unimodal

A distribution with one clear peak.

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Bimodal

A distribution with two clear peaks.

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Multimodal

A distribution with more than two peaks.

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Uniform distribution

A distribution where values occur with roughly equal frequency.

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Unusual features

Gaps, clusters, or outliers that stand out from the general pattern.

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Gap

A region in the distribution with no observations.

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Cluster

A group of observations concentrated near one another.

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Outlier

A data value that falls far from the rest of the data.

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IQR

The interquartile range, calculated as Q3 minus Q1.

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Q1

The first quartile, or the median of the lower half of the data.

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Q3

The third quartile, or the median of the upper half of the data.

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Five

number summary

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Boxplot

A graph showing the five

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1.5 IQR rule

Outliers are below Q1 − 1.5(IQR) or above Q3 + 1.5(IQR).

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Standard deviation

The typical distance of data values from the mean.

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Sample standard deviation

Usually written as s, used when describing a sample.

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Population standard deviation

Usually written as σ, used when describing a population.

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Parameter

A number that describes a population.

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Statistic

A number that describes a sample.

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Why parameters are often unknown

We usually cannot measure every individual in the population.

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Why statistics vary

Different random samples usually produce different values.

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Z

score

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Z

score formula

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Meaning of positive z

score

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Meaning of negative z

score

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Meaning of z = 0

The value equals the mean.

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Why z

scores have no units

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Why z

scores are useful

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Effect of adding a constant to data

Measures of position shift by that constant, but spread does not change.

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Effect of subtracting a constant from data

Measures of position decrease by that constant, but spread stays the same.

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Effect of multiplying data by a positive constant

Measures of position and spread are multiplied by that constant.

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Effect of dividing data by a positive constant

Measures of position and spread are divided by that constant.

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Effect of changing units from inches to feet

Both position and spread are rescaled.

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Association between categorical variables

A relationship where the distribution of one variable changes depending on the other variable.

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No association in categorical data

Conditional distributions are approximately the same across groups.

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Two

way table

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Marginal distribution

The distribution of one categorical variable using the row or column totals.

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Conditional distribution

The distribution of one variable among only individuals in a specific category of another variable.

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Joint relative frequency

A proportion involving one cell of a two

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Marginal relative frequency

A row or column total divided by the grand total.

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Conditional relative frequency

A cell count divided by its row or column total, depending on the condition.

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Segmented bar graph

A graph showing conditional distributions within categories.

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Side

by

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Best graph for comparing conditional distributions

A segmented bar graph or side

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Explanatory variable

The variable that may explain or predict changes in another variable.

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Response variable

The variable being measured or predicted.

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Scatterplot

A graph showing the relationship between two quantitative variables.

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What to describe in a scatterplot

Direction, form, strength, and unusual points.

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Positive association

As x increases, y tends to increase.

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Negative association

As x increases, y tends to decrease.

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Linear form

The pattern in a scatterplot is roughly a straight line.

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Nonlinear form

The pattern in a scatterplot curves or does not follow a straight line.

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Strong association

Points fall close to a clear pattern.

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Weak association

Points are widely scattered around the pattern.

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Correlation r

A number measuring the direction and strength of a linear relationship.

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Range of r

−1 ≤ r ≤ 1.

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r close to 1

Strong positive linear association.

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r close to −1

Strong negative linear association.

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r close to 0

Weak or no linear association.

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What r does not measure

Form, unusual features, or causation.

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Correlation has no units

r is standardized, so it does not use the original units of x or y.