• wonderlic tests
  • EXAM REVIEW
  • NCCCO Examination
  • Summary
  • Class notes
  • QUESTIONS & ANSWERS
  • NCLEX EXAM
  • Exam (elaborations)
  • Study guide
  • Latest nclex materials
  • HESI EXAMS
  • EXAMS AND CERTIFICATIONS
  • HESI ENTRANCE EXAM
  • ATI EXAM
  • NR AND NUR Exams
  • Gizmos
  • PORTAGE LEARNING
  • Ihuman Case Study
  • LETRS
  • NURS EXAM
  • NSG Exam
  • Testbanks
  • Vsim
  • Latest WGU
  • AQA PAPERS AND MARK SCHEME
  • DMV
  • WGU EXAM
  • exam bundles
  • Study Material
  • Study Notes
  • Test Prep

Cases are subjects in a study, units in a experiment etc.

Class notes Dec 27, 2025 ★★★★★ (5.0/5)
Loading...

Loading document viewer...

Page 0 of 0

Document Text

Samenvatting Moore, McCabe & Craig: Introduction to the practice of statistics Hoofdstuk 1 Cases are subjects in a study, units in a experiment etc.Individuals are objects described in a set of data.Variables describe characteristics of a case, they can have different values. A label is a variable used to identify cases. Some variables are categorical/qualitative and others are quantitative.The key characteristics of a data set answer the questions Who?, What? and Why?Exploratory data analysis uses graphs and numerical summaries to describe the variables in a data set and the relations among them. The distribution of a variable tells us what values is takes and how often it takes these values.Bar graphs and pie charts display the distributions of categorical variables. These graphs use the counts or percents of the categories. Stemplots (for small data sets) and histograms (frequency table) display the distributions of quantitative variables. Stempots seperate each observation into a stem and a one-digit leaf. Histograms plot the frequencies (counts) of the percents of equal-width classes of values.When examining a distribution, look for shape, center (mean, median) and spread (sd, five number summary) and for clear deviations from the overall shape. Some distributions have simple shapes, such as symmetric or skewed. The number of modes (major peaks) is another aspect of overall shape. Unimodal = a distribution with a major peak.Outliers are observations that lie outside the overall pattern of a distribution.When observations on a variable are taken over time, make a time plot that graphs time horizontally and the values of the variable vertically. A time plot can reveal changes over time.

Categorical: bar graph, pie chart

Quantitative: stemplot and histogram

A numerical summary of a distribution should report its center and its spread or variability. The mean x-bar and the median M describe the center of a distribution in different ways. The mean is the arithmetic average of the observations, and the median is their midpoint. Find mean: (n+1)/2. When you use the median to describe the center of a distribution, describe it’s spead by giving the 1 / 3

Samenvatting Moore, McCabe & Craig: Introduction to the practice of statistics quartiles. The first quartile Q1 has one-fourth of the observations below it, and the third quartile Q3 has three-fourths of the observations below it.The interquartile range (Q3-Q1) is the difference between the quartiles. It’s the spread of the center half of the data. The 1.5 x IQR rule flags observations more than 1.5 x IQR beyond the quartiles as possible outliers.The five-number summary consisting of the median, the quartiles and the smallest and largest individual observations provides a quick overall description of a distribution. The median describes the center, and the quartiles and extremes show the spread.Boxplots based on the five number summary are useful for comparing several distributions. In a modified boxplot, outliers are plotted individually. Side-by-side boxplots can be used to display boxplots for more than group on the same graph.The variance s2 and especially its square root, the standard deviation s, are common measures of spread about the mean as center. The standard deviation is zero when there is no spread.Degrees of freedom of the variance or standard deviation = n-1.A resistant measure of any aspect of a distribution relatively unaffected by changes in the numerical value. The median and the quartiles are resistant. The mean and standard deviation are not resistant and are most useful for Normal distributions. The five- number summary is a better description for skewed distributions.Linear transformations have the form xnew = a + bx. A linear transformation changes the origin if a ≠

  • and changes the size of the unit of measurement is b > 0. Linear transformations do not change the
  • overall shape of a distribution. A linear transformation multiplies a measure of spread by b and changes a percentile or measure of center m into a+bm.

Five number summary  boxplot Modified boxplot

Side by side boxplot Numerical measures of particular aspects of a distribution, such as center and spread, do not report the entire shape of most distributions. In some cases, particularly distributions with multiple peaks and gaps, these measures may not be very informative 2 / 3

Samenvatting Moore, McCabe & Craig: Introduction to the practice of statistics The overall pattern of a distribution can often be described by a density curve (idealized overall pattern) A density curve has a total area 1 underneath it. Areas under a density curve give proportions of observations for the distribution. The mean mu (balance point), the median (equal areas point) and the quartiles can be approximately located by eye on a density curve. The standard deviation sigma cannot be located by eye on the most density curves. The mean and median are equal for symmetric density curves, but the mean of a skewed curve is located farther toward the long tail than is the median.The Normal distributions are described by bell-shaped, symmetric, unimodal density curves. The mean mu and the standard deviation sigma completely specify the Normal distribution N(mu, sigma).All Normal distributions satisfy the 68-95-99.7 rule.To standardize any observation x, subtract the mean of the distribution and then divide by the standard deviation. The resulting z-score (z= (x-mu)/sigma) says how many standard deviations x lies from the distribution mean.If X has the N(mu, sigma) distribution, then the standardized variable Z=(X-mu)/sigma has the standard Normal distribution N(0,1). The standard Normal table gives cumulative proportions of Z < z for many values of z.The adequacy of a Normal model for describing a distribution of data is best assessed by a Normal quantile plot. A pattern on such a plot that deviates substantially from a straight line indicates that the data are not Normal.Symbolen Hoofletters verwijzen naar een variabele, distributie of event

(Z, X)

Kleine letters verwijzen naar een waarde van een variabele, distributie of event (z, x), dus vaak in een sample Mu en x-bar verwijzen allebei naar de mean, maar mu is de mean van een populatie (parameter) en x-bar is de mean van een sample.Sigma verwijst naar een parameter en sd (of s) verwijst naar een standaarddeviatie in een steekproef.Z-score en proporties  er is geen verschil tussen kleiner dan (groter dan) of gelijk / gelijk.

  • / 3

User Reviews

★★★★★ (5.0/5 based on 1 reviews)
Login to Review
S
Student
May 21, 2025
★★★★★

With its step-by-step guides, this document made learning easy. Definitely a impressive choice!

Download Document

Buy This Document

$1.00 One-time purchase
Buy Now
  • Full access to this document
  • Download anytime
  • No expiration

Document Information

Category: Class notes
Added: Dec 27, 2025
Description:

Samenvatting Moore, McCabe & Craig: Introduction to the practice of statistics Hoofdstuk 1 Cases are subjects in a study, units in a experiment etc. Individuals are objects described in a set of da...

Unlock Now
$ 1.00