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Learn about statistical thinking and concepts, and how to visualize data distributions using graphs. Understand different types of variables and their representations, and explore case studies to apply these concepts. Suitable for beginners in statistics.
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Stat 1510 Statistical Thinking & Concepts Picturing Distributions with Graphs
Statistics Statistics is a science that involves the extraction of information from numerical data obtained during an experiment or from a sample. It involves the design of the experiment or sampling procedure, the collection and analysis of the data, and making inferences (statements) about the population based upon information in a sample.
Individuals and Variables • Individuals • the objects described by a set of data • may be people, animals, or things • Variable • any characteristic of an individual • can take different values for different individuals Example – Temperature, Pressure, Weight Height, Sex, Major Course, etc.
Variables • Categorical • Places an individual into one of several groups or categories Examples – Sex, Grade (A, B, C..), Number of Defects, Type of Defects, Status of application • Quantitative (Numerical) • Takes numerical values for which arithmetic operations such as adding and averaging make sense Examples – Height, Weight, Pressure, etc.
Case Study The Effect of Hypnosis on the Immune System reported in Science News, Sept. 4, 1993, p. 153
Case Study Weight Gain Spells Heart Risk for Women “Weight, weight change, and coronary heart disease in women.” W.C. Willett, et. al., vol. 273(6), Journal of the American Medical Association, Feb. 8, 1995. (Reported in Science News, Feb. 4, 1995, p. 108)
Case Study Weight Gain Spells Heart Risk for Women Objective: To recommend a range of body mass index (a function of weight and height) in terms of coronary heart disease (CHD) risk in women.
Case Study • Study started in 1976 with 115,818 women aged 30 to 55 years and without a history of previous CHD. • Each woman’s weight (body mass) was determined. • Each woman was asked her weight at age 18.
Case Study • The cohort of women were followed for 14 years. • The number of CHD (fatal and nonfatal) cases were counted (1292 cases).
Age (in 1976) Weight in 1976 Weight at age 18 Incidence of coronary heart disease Smoker or nonsmoker Family history of heart disease Case Study Variables measured quantitative categorical
Study on Laptop • Objective is to identify the type of laptop computers used by university students. • A random sample of 1000 university students selected for this study • Each student is asked the question whether s/he have a laptop and if yes, the type of laptop (brand name) • Variables ?
Distribution • Tells what values a variable takes and how often it takes these values • Can be a table, graph, or function
Displaying Distributions • Categorical variables • Pie charts • Bar graphs • Quantitative variables • Histograms • Stemplots (stem-and-leaf plots)
Class Make-up on First Day Data Table
Class Make-up on First Day Pie Chart
Class Make-up on First Day Bar Graph
Example: U.S. Solid Waste (2000) Data Table
Example: U.S. Solid Waste (2000) Pie Chart
Example: U.S. Solid Waste (2000) Bar Graph
Time Plots • A time plot shows behavior over time. • Time is always on the horizontal axis, and the variable being measured is on the vertical axis. • Look for an overall pattern (trend), and deviations from this trend. Connecting the data points by lines may emphasize this trend. • Look for patterns that repeat at known regular intervals (seasonal variations).
Examining the Distribution of Quantitative Data • Observe overall pattern • Deviations from overall pattern • Shape of the data • Center of the data • Spread of the data (Variation) • Outliers
Shape of the Data • Symmetric • bell shaped • other symmetric shapes • Asymmetric • right skewed • left skewed • Unimodal, bimodal
Outliers • Extreme values that fall outside the overall pattern • May occur naturally • May occur due to error in recording • May occur due to error in measuring • Observational unit may be fundamentally different
Histograms • For quantitative variables that take many values • Divide the possible values into class intervals (we will only consider equal widths) • Count how many observations fall in each interval (may change to percents) • Draw picture representing distribution
Histograms: Class Intervals • How many intervals? • One idea: Square root of the sample size ( round the value) • Size of intervals? • Divide range of data (maxmin) by number of intervals desired, and round to convenient number • Pick intervals so each observation can only fall in exactly one interval (no overlap)
Usefulness of Histograms • To know the central value of the group • To know the extent of variation in the group • To estimate the percentage non-conformance, if some specified values are available • To see whether non-conformance is due to shift In mean or large variability
Case Study Weight Data Introductory Statistics classSpring, 1997 Virginia Commonwealth University
Weight Data: Frequency Table sqrt(53) = 7.2, or 8 intervals; range (260100=160) / 8 = 20= class width
100 120 140 160 180 200 220 240 260 280 Weight Data: Histogram Number of students Weight * Left endpoint is included in the group, right endpoint is not.
Stemplots(Stem-and-Leaf Plots) • For quantitative variables • Separate each observation into a stem (first part of the number) and a leaf (the remaining part of the number) • Write the stems in a vertical column; draw a vertical line to the right of the stems • Write each leaf in the row to the right of its stem; order leaves if desired
1 2 Weight Data
10 11 12 13 14 15 16 17 18 19 20 21 22 23 24 25 26 Weight Data:Stemplot(Stem & Leaf Plot) 192 5 152 2 135 Key 20|3 means203 pounds Stems = 10’sLeaves = 1’s 2
10 0166 11 009 12 0034578 13 00359 14 08 15 00257 16 555 17 000255 18 000055567 19 245 20 3 21 025 22 0 23 24 25 26 0 Weight Data:Stemplot(Stem & Leaf Plot) Key 20|3 means203 pounds Stems = 10’sLeaves = 1’s
Extended Stem-and-Leaf Plots If there are very few stems (when the data cover only a very small range of values), then we may want to create more stems by splitting the original stems.
151516161717 Extended Stem-and-Leaf Plots Example: if all of the data values were between 150 and 179, then we may choose to use the following stems: Leaves 0-4 would go on each upper stem (first “15”), and leaves 5-9 would go on each lower stem (second “15”).