+ Statistical Methods in

Size: px
Start display at page:

Download "+ Statistical Methods in"

Transcription

1 + Statistical Methods in Practice STA/MTH Dr. A. B. W. Manage Associate Professor of Statistics Department of Mathematics & Statistics Sam Houston State University Discovering Statistics 2nd Edition Daniel T. Larose Chapter 2: Describing Data Using Graphs and Tables Lecture PowerPoint Slides + Chapter 2 Overview 3 + The Big Picture Graphs and Tables for Categorical Data 2.2 Graphs and Tables for Quantitative Data 2.3 Further Graphs and Tables for Quantitative Data 2.4 Graphical Misrepresentations of Data Where we are coming from and where we are headed In Chapter 1 we learned the basic concepts of statistics, such as population, sample, and types of variables, along with methods of collecting data. In Chapter 2 we learn about graphs and tables for summarizing qualitative and quantitative data, and we examine how to prevent our graphics from being misleading. In Chapter 3, we will learn how to describe a data set using numerical measures like statistics rather than graphs and tables. 1

2 + 2.1: Graphs and Tables for Categorical Data Objectives: Construct and interpret a frequency distribution and a relative frequency distribution for qualitative data. Construct and interpret bar graphs and Pareto charts. 5 6 Frequency Distributions Data sets are not always clear. We need ways to summarize the values in a data set. The frequency, or count, of a category refers to the number of observations in each category. A frequency distribution for a qualitative variable is a listing of all the values (e.g., categories) that the variable can take, together with the frequencies for each value. Construct and interpret pie charts. Construct crosstabulations to describe the relationship between two variables. Construct a clustered bar graph to describe the relationship between two variables. Relative Frequency Distributions Suppose you don t know the size of the sample in the survey. Comparing the frequency to the total sample size gives us the relative frequency. The relative frequency of a particular category of a qualitative variable is its frequency divided by the sample size. A relative frequency distribution for a qualitative variable is a listing of all values that the variable can take, together with the relative frequencies for each value. 7 Bar Graphs (Bar Charts) Frequency distributions and relative frequency distributions are tabular. The graphical equivalent of these distributions is called a bar graph. A bar graph (or bar chart) is used to represent the frequencies or relative frequencies for categorical data. It is constructed as follows. 1. On the horizontal axis, provide a label for each category. 2. Draw rectangles (bars) of equal width for each category. The height of each rectangle represents the frequency or relative frequency for that category. Ensure that the bars are not touching each other. 8 2

3 Pareto Charts 9 Pie Charts 10 The bars in a bar graph may be presented horizontally or vertically. Pie charts are a common graphical device for displaying the relative frequencies of a categorical variable A pie chart is a circle divided into sections, with each section representing a particular category. The size of the section is proportional to the relative frequency of the category. A Pareto chart is a bar graph in which the rectangles are presented in decreasing order from left to right. Crosstabulations Crosstabulation is a tabular method for simultaneously summarizing the data for two categorical variables. Steps for Constructing a Crosstabulation 1. Put the categories of one variable at the top of each column, and the categories of the other variable at the beginning of each row. 2. For each row and column combination, enter the number of observations that fall in the two categories. 3. The bottom of the table gives the column totals, and the right-hand column gives the row totals. 11 Clustered Bar Graphs Clustered bar graphs are useful for comparing two categorical variables and are often used in conjunction with crosstabulations. Emotion Gender Sadness Fear Anger Disbelief Vulnerability Not sure Total Female Male Total Crosstabulations are also known as two-way tables or contingency tables. Emotion Disbelief Gender Sadness Fear Anger Vulnerability Not sure Total Female Male Total

4 + 2.2: Graphs and Tables for Quantitative Data Objectives: Construct and interpret a frequency distribution and a relative frequency distribution for discrete and continuous data. 13 Frequency Distributions and 14 Relative Frequency Distributions Section 2.1 introduced tables and graphs for summarizing qualitative data. Most of the data sets we will encounter are quantitative. We can apply frequency and relative frequency distributions to quantitative data just as we did for qualitative data. Consider Table 2.13 on page 54. Use histograms and frequency polygons to summarize quantitative data. Construct and interpret stem-and-leaf displays and dotplots. Recognize distribution shape, symmetry, and skewness. Classes We can combine several ages together into classes, in order to produce a more concise distribution. Classes represent a range of data values and are used to group the elements in a data set. 15 Class Limits We use the following to construct frequency distributions and histograms. The lower class limit of a class equals the smallest value within that class. The upper class limit of a class equals the largest value within that class. The class width equals the difference between the lower class limits of two successive classes. The class boundary of two successive classes is found by taking the sum of the upper class limit of a class and the lower class limit of the class to its right, and dividing sum by two. The lower class boundary of the left-most class equals its upper class boundary minus the class width. The upper class boundary of the right-most class equals its lower class boundary plus the class width. To construct a frequency distribution for continuous data: 1. Choose the number of classes. 2. Determine the class width. 3. Find the upper and lower class limits. 4. Calculate the class boundaries. 5. Find the frequencies of each class. 16 4

5 Histograms One example of a graphical summary for quantitative data is a histogram. A histogram is constructed using rectangles for each class of data. The heights of the rectangles represent the frequencies or relative frequencies of the class. The widths of the rectangles represent the class widths of the corresponding distribution. The class boundaries are placed on the horizontal axis, so that the rectangles are touching each other. 17 Histograms Twenty management students, in preparation for graduation, took a course to prepare them for a management aptitude test. A simulated test provided the following scores: To construct a histogram: 1. Find the class limits and draw the horizontal axis. 2. Determine the frequencies and draw the vertical axis. 3. Draw the rectangles. Frequency Polygons Frequency polygons provide the same information as histograms, but in a slightly different format. A frequency polygon is constructed as follows: 1. For each class, plot a point at the class midpoint, at a height equal to the frequency for that class. 2. Join each consecutive pair of points with a line segment. 19 Stem-and-Leaf Displays Stem-and-leaf displays contain more information than frequency distributions and histograms. Consider the final-exam scores of 20 psychology students below: Find the leading digits of the numbers. Place these five numbers, called the stems, in a column: Now consider the ones place of each data value. Place this number, called the leaf, next to its stem. 5

6 Dotplots 21 Distribution Shape 22 A simple but effective graphical display is a dotplot. In a dotplot, each data point is represented by a dot above the number line. Below is a dotplot of the 20 management aptitude test scores. Dotplots are useful for comparing two variables. Suppose an instructor taught two sections of a management course and gave a simulated MAT exam in each section. The two groups could be compared using dotplots. Frequency distributions are tabular summaries of the set of values that a variable takes. The distribution of a variable is a table, graph, or formula that identifies the variable values and frequencies for all elements in the data set. The shape of a distribution is the overall form of a graphical summary, approximated by a smooth curve. A distribution is symmetric if there is a line (axis of symmetry) that splits the image in half so that one side is the mirror image of the other. A distribution is skewed if it has a longer tail on one side of the image. Distribution Shape : Further Graphs and Tables for Quantitative Data 24 Symmetric, bell-shaped Objectives: Build cumulative frequency distributions and cumulative relative frequency distributions. Create frequency ogives and relative frequency ogives. Right-skewed Construct and interpret time series graphs. Left-skewed 6

7 25 Cumulative Frequency Distributions Since quantitative data can be put in ascending order, we can keep track of the accumulated counts at or below a certain value using a cumulative frequency distribution or cumulative relative frequency distribution. Cumulative Frequency Distributions The frequency distribution below displays the total 2007 attendance for 25 Major League Baseball teams. We can use this to construct a cumulative relative frequency distribution. 26 For a discrete variable, a cumulative frequency distribution shows the total number of observations less than or equal to the category value. For a continuous variable, a cumulative frequency distribution shows the total number of observations less than or equal to the upper class limit. A cumulative relative frequency distribution shows the proportion of observations less than or equal to the category value (for a discrete variable) or the proportion of observations less than or equal to the upper class limit (for a continuous variable). Ogives 27 Time Series Graphs 28 Histograms and frequency polygons are the graphical equivalent of frequency distributions. Ogives are the graphical equivalent of cumulative frequency distributions. An ogive (pronounced oh jive ) is the graphical equivalent of a cumulative frequency distribution or a cumulative relative frequency distribution. Like a frequency polygon, an ogive consists of a set of plotted points connected by line segments. The x coordinates of these points are the upper class limits; the y coordinates are the cumulative frequencies or cumulative relative frequencies. Data analysts are often interested in how the value of a variable changes over time. Data that are analyzed with respect to time are called time series data. A graph of time series data is called a time series plot. The horizontal axis of a time series plot represents time (e.g., hours, days, months, years). The values of the time series data are plotted on the vertical axis, and line segments are drawn to connect the points. Atmospheric CO 2 at Mauna Loa 7

8 + 2.4: Graphical Misrepresentations of Data Objectives: Eight Common Methods for Understand what can make a graph misleading, confusing, or deceptive. In the Information Age, when our world is awash in data, it is important for citizens to understand how graphics may be misleading, confusing, or deceptive. Such an understanding enhances our statistical literacy and makes us less prone to be deceived by misleading graphics. 1. Graphing/selecting an inappropriate statistic. 2. Omitting the zero on the relevant scale. 3. Manipulating the scale. 4. Using two dimensions (area) to emphasize a onedimensional difference. 5. Careless combination of categories in a bar graph. 6. Inaccuracy in relative lengths of bars in a bar graph. 7. Biased distortion or embellishment. 8. Unclear labeling Example 2.19 Inappropriate choice of statistic Example 2.20 Omitting the zero MediaMatters.com reported that CNN.com used a misleading graph to exaggerate the difference between the percentages of Democrats and Republicans who agreed with the Florida court s decision to remove the feeding tube from Terri Schiavo in

9 33 34 Example 2.21 Manipulating the scale This figure shows a Minitab relative frequency bar graph of the majors chosen by 25 business school students. Example 2.22 Using two dimensions for a one-dimensional difference This graphic compares the leaders in career points scored in the NBA All-Star Game among players active in If we wanted to de-emphasize the differences, we could extend the vertical scale up to its maximum, 1.0 = 100%. The height of the players is supposed to represent the total points, but this is not clearly labeled. Points should be indicated using a vertical axis, but there is no vertical axis at all Example 2.23 Careless combination of categories and biased embellishment This figure shows a graphic of how often people have observed drivers running red lights. Example 2.24 Inaccuracy in relative lengths of bars and unclear labeling This figure is a horizontal bar graph of the three teams with the most World Series victories in baseball history. Note that 127 is more than twice as many as 52, and so the Yankees bar should be more than twice as long as the Cardinals bar, which it is not. 9

10 37 + Chapter 2 Overview 38 Example 2.25 Presenting the same data set as symmetric and skewed The table below displays scores on the TIMSS Science test, administered to eighth-grade students in different countries. 2.1 Graphs and Tables for Categorical Data 2.2 Graphs and Tables for Quantitative Data 2.3 Further Graphs and Tables for Quantitative Data 2.4 Graphical Misrepresentations of Data 10

Section 2-2 Frequency Distributions. Copyright 2010, 2007, 2004 Pearson Education, Inc

Section 2-2 Frequency Distributions. Copyright 2010, 2007, 2004 Pearson Education, Inc Section 2-2 Frequency Distributions Copyright 2010, 2007, 2004 Pearson Education, Inc. 2.1-1 Frequency Distribution Frequency Distribution (or Frequency Table) It shows how a data set is partitioned among

More information

Lecture Slides. Elementary Statistics Twelfth Edition. by Mario F. Triola. and the Triola Statistics Series. Section 2.1- #

Lecture Slides. Elementary Statistics Twelfth Edition. by Mario F. Triola. and the Triola Statistics Series. Section 2.1- # Lecture Slides Elementary Statistics Twelfth Edition and the Triola Statistics Series by Mario F. Triola Chapter 2 Summarizing and Graphing Data 2-1 Review and Preview 2-2 Frequency Distributions 2-3 Histograms

More information

2.1: Frequency Distributions

2.1: Frequency Distributions 2.1: Frequency Distributions Frequency Distribution: organization of data into groups called. A: Categorical Frequency Distribution used for and level qualitative data that can be put into categories.

More information

Chapter 2 - Graphical Summaries of Data

Chapter 2 - Graphical Summaries of Data Chapter 2 - Graphical Summaries of Data Data recorded in the sequence in which they are collected and before they are processed or ranked are called raw data. Raw data is often difficult to make sense

More information

Chapter 2 Organizing and Graphing Data. 2.1 Organizing and Graphing Qualitative Data

Chapter 2 Organizing and Graphing Data. 2.1 Organizing and Graphing Qualitative Data Chapter 2 Organizing and Graphing Data 2.1 Organizing and Graphing Qualitative Data 2.2 Organizing and Graphing Quantitative Data 2.3 Stem-and-leaf Displays 2.4 Dotplots 2.1 Organizing and Graphing Qualitative

More information

Chapter 2: Graphical Summaries of Data 2.1 Graphical Summaries for Qualitative Data. Frequency: Frequency distribution:

Chapter 2: Graphical Summaries of Data 2.1 Graphical Summaries for Qualitative Data. Frequency: Frequency distribution: Chapter 2: Graphical Summaries of Data 2.1 Graphical Summaries for Qualitative Data Frequency: Frequency distribution: Example 2.1 The following are survey results from Fall 2014 Statistics class regarding

More information

Organizing and Summarizing Data

Organizing and Summarizing Data 1 Organizing and Summarizing Data Key Definitions Frequency Distribution: This lists each category of data and how often they occur. : The percent of observations within the one of the categories. This

More information

Overview. Frequency Distributions. Chapter 2 Summarizing & Graphing Data. Descriptive Statistics. Inferential Statistics. Frequency Distribution

Overview. Frequency Distributions. Chapter 2 Summarizing & Graphing Data. Descriptive Statistics. Inferential Statistics. Frequency Distribution Chapter 2 Summarizing & Graphing Data Slide 1 Overview Descriptive Statistics Slide 2 A) Overview B) Frequency Distributions C) Visualizing Data summarize or describe the important characteristics of a

More information

Test Bank for Privitera, Statistics for the Behavioral Sciences

Test Bank for Privitera, Statistics for the Behavioral Sciences 1. A simple frequency distribution A) can be used to summarize grouped data B) can be used to summarize ungrouped data C) summarizes the frequency of scores in a given category or range 2. To determine

More information

This chapter will show how to organize data and then construct appropriate graphs to represent the data in a concise, easy-to-understand form.

This chapter will show how to organize data and then construct appropriate graphs to represent the data in a concise, easy-to-understand form. CHAPTER 2 Frequency Distributions and Graphs Objectives Organize data using frequency distributions. Represent data in frequency distributions graphically using histograms, frequency polygons, and ogives.

More information

Elementary Statistics

Elementary Statistics 1 Elementary Statistics Introduction Statistics is the collection of methods for planning experiments, obtaining data, and then organizing, summarizing, presenting, analyzing, interpreting, and drawing

More information

Section 1.2. Displaying Quantitative Data with Graphs. Mrs. Daniel AP Stats 8/22/2013. Dotplots. How to Make a Dotplot. Mrs. Daniel AP Statistics

Section 1.2. Displaying Quantitative Data with Graphs. Mrs. Daniel AP Stats 8/22/2013. Dotplots. How to Make a Dotplot. Mrs. Daniel AP Statistics Section. Displaying Quantitative Data with Graphs Mrs. Daniel AP Statistics Section. Displaying Quantitative Data with Graphs After this section, you should be able to CONSTRUCT and INTERPRET dotplots,

More information

At the end of the chapter, you will learn to: Present data in textual form. Construct different types of table and graphs

At the end of the chapter, you will learn to: Present data in textual form. Construct different types of table and graphs DATA PRESENTATION At the end of the chapter, you will learn to: Present data in textual form Construct different types of table and graphs Identify the characteristics of a good table and graph Identify

More information

Lecture Slides. Elementary Statistics Tenth Edition. by Mario F. Triola. and the Triola Statistics Series. Slide 1

Lecture Slides. Elementary Statistics Tenth Edition. by Mario F. Triola. and the Triola Statistics Series. Slide 1 Lecture Slides Elementary Statistics Tenth Edition and the Triola Statistics Series by Mario F. Triola Slide 1 Chapter 2 Summarizing and Graphing Data 2-1 Overview 2-2 Frequency Distributions 2-3 Histograms

More information

TMTH 3360 NOTES ON COMMON GRAPHS AND CHARTS

TMTH 3360 NOTES ON COMMON GRAPHS AND CHARTS To Describe Data, consider: Symmetry Skewness TMTH 3360 NOTES ON COMMON GRAPHS AND CHARTS Unimodal or bimodal or uniform Extreme values Range of Values and mid-range Most frequently occurring values In

More information

The basic arrangement of numeric data is called an ARRAY. Array is the derived data from fundamental data Example :- To store marks of 50 student

The basic arrangement of numeric data is called an ARRAY. Array is the derived data from fundamental data Example :- To store marks of 50 student Organizing data Learning Outcome 1. make an array 2. divide the array into class intervals 3. describe the characteristics of a table 4. construct a frequency distribution table 5. constructing a composite

More information

STP 226 ELEMENTARY STATISTICS NOTES

STP 226 ELEMENTARY STATISTICS NOTES ELEMENTARY STATISTICS NOTES PART 2 - DESCRIPTIVE STATISTICS CHAPTER 2 ORGANIZING DATA Descriptive Statistics - include methods for organizing and summarizing information clearly and effectively. - classify

More information

Frequency Distributions

Frequency Distributions Displaying Data Frequency Distributions After collecting data, the first task for a researcher is to organize and summarize the data so that it is possible to get a general overview of the results. Remember,

More information

Chapter 2: Frequency Distributions

Chapter 2: Frequency Distributions Chapter 2: Frequency Distributions Chapter Outline 2.1 Introduction to Frequency Distributions 2.2 Frequency Distribution Tables Obtaining ΣX from a Frequency Distribution Table Proportions and Percentages

More information

MATH 117 Statistical Methods for Management I Chapter Two

MATH 117 Statistical Methods for Management I Chapter Two Jubail University College MATH 117 Statistical Methods for Management I Chapter Two There are a wide variety of ways to summarize, organize, and present data: I. Tables 1. Distribution Table (Categorical

More information

Graphical Presentation for Statistical Data (Relevant to AAT Examination Paper 4: Business Economics and Financial Mathematics) Introduction

Graphical Presentation for Statistical Data (Relevant to AAT Examination Paper 4: Business Economics and Financial Mathematics) Introduction Graphical Presentation for Statistical Data (Relevant to AAT Examination Paper 4: Business Economics and Financial Mathematics) Y O Lam, SCOPE, City University of Hong Kong Introduction The most convenient

More information

2.1 Objectives. Math Chapter 2. Chapter 2. Variable. Categorical Variable EXPLORING DATA WITH GRAPHS AND NUMERICAL SUMMARIES

2.1 Objectives. Math Chapter 2. Chapter 2. Variable. Categorical Variable EXPLORING DATA WITH GRAPHS AND NUMERICAL SUMMARIES EXPLORING DATA WITH GRAPHS AND NUMERICAL SUMMARIES Chapter 2 2.1 Objectives 2.1 What Are the Types of Data? www.managementscientist.org 1. Know the definitions of a. Variable b. Categorical versus quantitative

More information

2.1: Frequency Distributions and Their Graphs

2.1: Frequency Distributions and Their Graphs 2.1: Frequency Distributions and Their Graphs Frequency Distribution - way to display data that has many entries - table that shows classes or intervals of data entries and the number of entries in each

More information

Chapter 2: Understanding Data Distributions with Tables and Graphs

Chapter 2: Understanding Data Distributions with Tables and Graphs Test Bank Chapter 2: Understanding Data with Tables and Graphs Multiple Choice 1. Which of the following would best depict nominal level data? a. pie chart b. line graph c. histogram d. polygon Ans: A

More information

Lecture Series on Statistics -HSTC. Frequency Graphs " Dr. Bijaya Bhusan Nanda, Ph. D. (Stat.)

Lecture Series on Statistics -HSTC. Frequency Graphs  Dr. Bijaya Bhusan Nanda, Ph. D. (Stat.) Lecture Series on Statistics -HSTC Frequency Graphs " By Dr. Bijaya Bhusan Nanda, Ph. D. (Stat.) CONTENT Histogram Frequency polygon Smoothed frequency curve Cumulative frequency curve or ogives Learning

More information

AND NUMERICAL SUMMARIES. Chapter 2

AND NUMERICAL SUMMARIES. Chapter 2 EXPLORING DATA WITH GRAPHS AND NUMERICAL SUMMARIES Chapter 2 2.1 What Are the Types of Data? 2.1 Objectives www.managementscientist.org 1. Know the definitions of a. Variable b. Categorical versus quantitative

More information

Chapter 2: Descriptive Statistics

Chapter 2: Descriptive Statistics Chapter 2: Descriptive Statistics Student Learning Outcomes By the end of this chapter, you should be able to: Display data graphically and interpret graphs: stemplots, histograms and boxplots. Recognize,

More information

Frequency Distributions and Graphs

Frequency Distributions and Graphs //05 C H A P T E R T W O s and s and Outline CHAPTER - Organizing Data - Histograms, Polygons, and - Other Types of -4 Paired Data and Scatter Plots Learning Objectives Organize data using a frequency

More information

1.2. Pictorial and Tabular Methods in Descriptive Statistics

1.2. Pictorial and Tabular Methods in Descriptive Statistics 1.2. Pictorial and Tabular Methods in Descriptive Statistics Section Objectives. 1. Stem-and-Leaf displays. 2. Dotplots. 3. Histogram. Types of histogram shapes. Common notation. Sample size n : the number

More information

Chapter 2 Describing, Exploring, and Comparing Data

Chapter 2 Describing, Exploring, and Comparing Data Slide 1 Chapter 2 Describing, Exploring, and Comparing Data Slide 2 2-1 Overview 2-2 Frequency Distributions 2-3 Visualizing Data 2-4 Measures of Center 2-5 Measures of Variation 2-6 Measures of Relative

More information

Statistical Methods. Instructor: Lingsong Zhang. Any questions, ask me during the office hour, or me, I will answer promptly.

Statistical Methods. Instructor: Lingsong Zhang. Any questions, ask me during the office hour, or  me, I will answer promptly. Statistical Methods Instructor: Lingsong Zhang 1 Issues before Class Statistical Methods Lingsong Zhang Office: Math 544 Email: lingsong@purdue.edu Phone: 765-494-7913 Office Hour: Monday 1:00 pm - 2:00

More information

Chapter 2 - Frequency Distributions and Graphs

Chapter 2 - Frequency Distributions and Graphs 1. Which of the following does not need to be done when constructing a frequency distribution? A) select the number of classes desired B) find the range C) make the class width an even number D) use classes

More information

Raw Data. Statistics 1/8/2016. Relative Frequency Distribution. Frequency Distributions for Qualitative Data

Raw Data. Statistics 1/8/2016. Relative Frequency Distribution. Frequency Distributions for Qualitative Data Statistics Raw Data Raw data is random and unranked data. Organizing Data Frequency distributions list all the categories and the numbers of elements that belong to each category Frequency Distributions

More information

Chapter 2 Descriptive Statistics I: Tabular and Graphical Presentations. Learning objectives

Chapter 2 Descriptive Statistics I: Tabular and Graphical Presentations. Learning objectives Chapter 2 Descriptive Statistics I: Tabular and Graphical Presentations Slide 1 Learning objectives 1. Single variable 1.1. How to use Tables and Graphs to summarize data 1.1.1. Qualitative data 1.1.2.

More information

download instant at Summarizing Data: Listing and Grouping

download instant at   Summarizing Data: Listing and Grouping Ch. 2 download instant at www.easysemester.com Summarizing Data: Listing and Grouping 2.1 Multiple Choice Questions MULTIPLE CHOICE. Choose the one alternative that best completes the statement or answers

More information

Ms Nurazrin Jupri. Frequency Distributions

Ms Nurazrin Jupri. Frequency Distributions Frequency Distributions Frequency Distributions After collecting data, the first task for a researcher is to organize and simplify the data so that it is possible to get a general overview of the results.

More information

Round each observation to the nearest tenth of a cent and draw a stem and leaf plot.

Round each observation to the nearest tenth of a cent and draw a stem and leaf plot. Warm Up Round each observation to the nearest tenth of a cent and draw a stem and leaf plot. 1. Constructing Frequency Polygons 2. Create Cumulative Frequency and Cumulative Relative Frequency Tables 3.

More information

UNIT 1A EXPLORING UNIVARIATE DATA

UNIT 1A EXPLORING UNIVARIATE DATA A.P. STATISTICS E. Villarreal Lincoln HS Math Department UNIT 1A EXPLORING UNIVARIATE DATA LESSON 1: TYPES OF DATA Here is a list of important terms that we must understand as we begin our study of statistics

More information

a. divided by the. 1) Always round!! a) Even if class width comes out to a, go up one.

a. divided by the. 1) Always round!! a) Even if class width comes out to a, go up one. Probability and Statistics Chapter 2 Notes I Section 2-1 A Steps to Constructing Frequency Distributions 1 Determine number of (may be given to you) a Should be between and classes 2 Find the Range a The

More information

Basic Statistical Terms and Definitions

Basic Statistical Terms and Definitions I. Basics Basic Statistical Terms and Definitions Statistics is a collection of methods for planning experiments, and obtaining data. The data is then organized and summarized so that professionals can

More information

B. Graphing Representation of Data

B. Graphing Representation of Data B Graphing Representation of Data The second way of displaying data is by use of graphs Although such visual aids are even easier to read than tables, they often do not give the same detail It is essential

More information

2.3 Organizing Quantitative Data

2.3 Organizing Quantitative Data 2.3 Organizing Quantitative Data This section will focus on ways to organize quantitative data into tables, charts, and graphs. Quantitative data is organized by dividing the observations into classes

More information

Making Science Graphs and Interpreting Data

Making Science Graphs and Interpreting Data Making Science Graphs and Interpreting Data Eye Opener: 5 mins What do you see? What do you think? Look up terms you don t know What do Graphs Tell You? A graph is a way of expressing a relationship between

More information

Prepare a stem-and-leaf graph for the following data. In your final display, you should arrange the leaves for each stem in increasing order.

Prepare a stem-and-leaf graph for the following data. In your final display, you should arrange the leaves for each stem in increasing order. Chapter 2 2.1 Descriptive Statistics A stem-and-leaf graph, also called a stemplot, allows for a nice overview of quantitative data without losing information on individual observations. It can be a good

More information

Name Date Types of Graphs and Creating Graphs Notes

Name Date Types of Graphs and Creating Graphs Notes Name Date Types of Graphs and Creating Graphs Notes Graphs are helpful visual representations of data. Different graphs display data in different ways. Some graphs show individual data, but many do not.

More information

AP Statistics Summer Assignment:

AP Statistics Summer Assignment: AP Statistics Summer Assignment: Read the following and use the information to help answer your summer assignment questions. You will be responsible for knowing all of the information contained in this

More information

CHAPTER 2: ORGANIZING AND VISUALIZING VARIABLES

CHAPTER 2: ORGANIZING AND VISUALIZING VARIABLES Organizing and Visualizing Variables 2-1 CHAPTER 2: ORGANIZING AND VISUALIZING VARIABLES SCENARIO 2-1 An insurance company evaluates many numerical variables about a person before deciding on an appropriate

More information

2. The histogram. class limits class boundaries frequency cumulative frequency

2. The histogram. class limits class boundaries frequency cumulative frequency MA 115 Lecture 03 - Some Standard Graphs Friday, September, 017 Objectives: Introduce some standard statistical graph types. 1. Some Standard Kinds of Graphs Last week, we looked at the Frequency Distribution

More information

12. A(n) is the number of times an item or number occurs in a data set.

12. A(n) is the number of times an item or number occurs in a data set. Chapter 15 Vocabulary Practice Match each definition to its corresponding term. a. data b. statistical question c. population d. sample e. data analysis f. parameter g. statistic h. survey i. experiment

More information

Chapter 2. Frequency Distributions and Graphs. Bluman, Chapter 2

Chapter 2. Frequency Distributions and Graphs. Bluman, Chapter 2 Chapter 2 Frequency Distributions and Graphs 1 Chapter 2 Overview Introduction 2-1 Organizing Data 2-2 Histograms, Frequency Polygons, and Ogives 2-3 Other Types of Graphs 2 Chapter 2 Objectives 1. Organize

More information

Chapter 2. Descriptive Statistics: Organizing, Displaying and Summarizing Data

Chapter 2. Descriptive Statistics: Organizing, Displaying and Summarizing Data Chapter 2 Descriptive Statistics: Organizing, Displaying and Summarizing Data Objectives Student should be able to Organize data Tabulate data into frequency/relative frequency tables Display data graphically

More information

Chapter 2 Descriptive Statistics. Tabular and Graphical Presentations

Chapter 2 Descriptive Statistics. Tabular and Graphical Presentations Chapter 2 Descriptive Statistics Tabular and Graphical Presentations Frequency Distributions Frequency distribution tabular summary of data showing the number of items that appear in non-overlapping classes.

More information

Tabular & Graphical Presentation of data

Tabular & Graphical Presentation of data Tabular & Graphical Presentation of data bjectives: To know how to make frequency distributions and its importance To know different terminology in frequency distribution table To learn different graphs/diagrams

More information

CHAPTER 2: SAMPLING AND DATA

CHAPTER 2: SAMPLING AND DATA CHAPTER 2: SAMPLING AND DATA This presentation is based on material and graphs from Open Stax and is copyrighted by Open Stax and Georgia Highlands College. OUTLINE 2.1 Stem-and-Leaf Graphs (Stemplots),

More information

Slides Prepared by JOHN S. LOUCKS St. Edward s s University Thomson/South-Western. Slide

Slides Prepared by JOHN S. LOUCKS St. Edward s s University Thomson/South-Western. Slide s Prepared by JOHN S. LOUCKS St. Edward s s University 1 Chapter 2 Descriptive Statistics: Tabular and Graphical Presentations Part B Exploratory Data Analysis Crosstabulations and y Scatter Diagrams x

More information

2.4-Statistical Graphs

2.4-Statistical Graphs 2.4-Statistical Graphs Frequency Polygon: A frequency polygon uses line segments connected to points directly above class midpoint values. Example: Given the following frequency table for the pulse rate

More information

Univariate Statistics Summary

Univariate Statistics Summary Further Maths Univariate Statistics Summary Types of Data Data can be classified as categorical or numerical. Categorical data are observations or records that are arranged according to category. For example:

More information

Statistical Tables and Graphs

Statistical Tables and Graphs Unit 5C Statistical Tables and Graphs Ms. Young Slide 5-1 Frequency Tables A basic frequency table has two columns: The first column lists the categories of data. The second column lists the frequency

More information

CHAPTER 2. Objectives. Frequency Distributions and Graphs. Basic Vocabulary. Introduction. Organise data using frequency distributions.

CHAPTER 2. Objectives. Frequency Distributions and Graphs. Basic Vocabulary. Introduction. Organise data using frequency distributions. CHAPTER 2 Objectives Organise data using frequency distributions. Distributions and Graphs Represent data in frequency distributions graphically using histograms, frequency polygons, and ogives. Represent

More information

Statistics for Managers Using Microsoft Excel, 7e (Levine) Chapter 2 Organizing and Visualizing Data

Statistics for Managers Using Microsoft Excel, 7e (Levine) Chapter 2 Organizing and Visualizing Data Statistics for Managers Using Microsoft Excel, 7e (Levine) Chapter 2 Organizing and Visualizing Data 1) A summary measure that is computed to describe a characteristic from only a sample of the population

More information

Things you ll know (or know better to watch out for!) when you leave in December: 1. What you can and cannot infer from graphs.

Things you ll know (or know better to watch out for!) when you leave in December: 1. What you can and cannot infer from graphs. 1 2 Things you ll know (or know better to watch out for!) when you leave in December: 1. What you can and cannot infer from graphs. 2. How to construct (in your head!) and interpret confidence intervals.

More information

Organisation and Presentation of Data in Medical Research Dr K Saji.MD(Hom)

Organisation and Presentation of Data in Medical Research Dr K Saji.MD(Hom) Organisation and Presentation of Data in Medical Research Dr K Saji.MD(Hom) Any data collected by a research or reference also known as raw data are always in an unorganized form and need to be organized

More information

STAT STATISTICAL METHODS. Statistics: The science of using data to make decisions and draw conclusions

STAT STATISTICAL METHODS. Statistics: The science of using data to make decisions and draw conclusions STAT 515 --- STATISTICAL METHODS Statistics: The science of using data to make decisions and draw conclusions Two branches: Descriptive Statistics: The collection and presentation (through graphical and

More information

8. MINITAB COMMANDS WEEK-BY-WEEK

8. MINITAB COMMANDS WEEK-BY-WEEK 8. MINITAB COMMANDS WEEK-BY-WEEK In this section of the Study Guide, we give brief information about the Minitab commands that are needed to apply the statistical methods in each week s study. They are

More information

28 CHAPTER 2 Summarizing and Graphing Data

28 CHAPTER 2 Summarizing and Graphing Data 8 CHAPTER Summarizing and Graphing Data. The two requested histograms are given below. They give very different visual images of the shape of the distribution. An outlier can have a significant effect

More information

UNIT 15 GRAPHICAL PRESENTATION OF DATA-I

UNIT 15 GRAPHICAL PRESENTATION OF DATA-I UNIT 15 GRAPHICAL PRESENTATION OF DATA-I Graphical Presentation of Data-I Structure 15.1 Introduction Objectives 15.2 Graphical Presentation 15.3 Types of Graphs Histogram Frequency Polygon Frequency Curve

More information

Section 2-2. Histograms, frequency polygons and ogives. Friday, January 25, 13

Section 2-2. Histograms, frequency polygons and ogives. Friday, January 25, 13 Section 2-2 Histograms, frequency polygons and ogives 1 Histograms 2 Histograms The histogram is a graph that displays the data by using contiguous vertical bars of various heights to represent the frequencies

More information

Data can be in the form of numbers, words, measurements, observations or even just descriptions of things.

Data can be in the form of numbers, words, measurements, observations or even just descriptions of things. + What is Data? Data is a collection of facts. Data can be in the form of numbers, words, measurements, observations or even just descriptions of things. In most cases, data needs to be interpreted and

More information

Probability and Statistics. Copyright Cengage Learning. All rights reserved.

Probability and Statistics. Copyright Cengage Learning. All rights reserved. Probability and Statistics Copyright Cengage Learning. All rights reserved. 14.6 Descriptive Statistics (Graphical) Copyright Cengage Learning. All rights reserved. Objectives Data in Categories Histograms

More information

Raw Data is data before it has been arranged in a useful manner or analyzed using statistical techniques.

Raw Data is data before it has been arranged in a useful manner or analyzed using statistical techniques. Section 2.1 - Introduction Graphs are commonly used to organize, summarize, and analyze collections of data. Using a graph to visually present a data set makes it easy to comprehend and to describe the

More information

Courtesy :

Courtesy : STATISTICS The Nature of Statistics Introduction Statistics is the science of data Statistics is the science of conducting studies to collect, organize, summarize, analyze, and draw conclusions from data.

More information

Distributions of Continuous Data

Distributions of Continuous Data C H A P T ER Distributions of Continuous Data New cars and trucks sold in the United States average about 28 highway miles per gallon (mpg) in 2010, up from about 24 mpg in 2004. Some of the improvement

More information

No. of blue jelly beans No. of bags

No. of blue jelly beans No. of bags Math 167 Ch5 Review 1 (c) Janice Epstein CHAPTER 5 EXPLORING DATA DISTRIBUTIONS A sample of jelly bean bags is chosen and the number of blue jelly beans in each bag is counted. The results are shown in

More information

Select Cases. Select Cases GRAPHS. The Select Cases command excludes from further. selection criteria. Select Use filter variables

Select Cases. Select Cases GRAPHS. The Select Cases command excludes from further. selection criteria. Select Use filter variables Select Cases GRAPHS The Select Cases command excludes from further analysis all those cases that do not meet specified selection criteria. Select Cases For a subset of the datafile, use Select Cases. In

More information

Chapter 2 Modeling Distributions of Data

Chapter 2 Modeling Distributions of Data Chapter 2 Modeling Distributions of Data Section 2.1 Describing Location in a Distribution Describing Location in a Distribution Learning Objectives After this section, you should be able to: FIND and

More information

1.3 Graphical Summaries of Data

1.3 Graphical Summaries of Data Arkansas Tech University MATH 3513: Applied Statistics I Dr. Marcel B. Finan 1.3 Graphical Summaries of Data In the previous section we discussed numerical summaries of either a sample or a data. In this

More information

23.2 Normal Distributions

23.2 Normal Distributions 1_ Locker LESSON 23.2 Normal Distributions Common Core Math Standards The student is expected to: S-ID.4 Use the mean and standard deviation of a data set to fit it to a normal distribution and to estimate

More information

Downloaded from

Downloaded from UNIT 2 WHAT IS STATISTICS? Researchers deal with a large amount of data and have to draw dependable conclusions on the basis of data collected for the purpose. Statistics help the researchers in making

More information

Chapter 3 - Displaying and Summarizing Quantitative Data

Chapter 3 - Displaying and Summarizing Quantitative Data Chapter 3 - Displaying and Summarizing Quantitative Data 3.1 Graphs for Quantitative Data (LABEL GRAPHS) August 25, 2014 Histogram (p. 44) - Graph that uses bars to represent different frequencies or relative

More information

Slides by. John Loucks. St. Edward s University. Slide South-Western, a part of Cengage Learning

Slides by. John Loucks. St. Edward s University. Slide South-Western, a part of Cengage Learning Slides by John Loucks St. Edward s University Slide 1 Chapter 2, Part B Descriptive Statistics: Tabular and Graphical Presentations Exploratory Data Analysis: Stem-and-Leaf Display Crosstabulations and

More information

Using a percent or a letter grade allows us a very easy way to analyze our performance. Not a big deal, just something we do regularly.

Using a percent or a letter grade allows us a very easy way to analyze our performance. Not a big deal, just something we do regularly. GRAPHING We have used statistics all our lives, what we intend to do now is formalize that knowledge. Statistics can best be defined as a collection and analysis of numerical information. Often times we

More information

MATH1635, Statistics (2)

MATH1635, Statistics (2) MATH1635, Statistics (2) Chapter 2 Histograms and Frequency Distributions I. A Histogram is a form of bar graph in which: A. The width of a bar is designated by an interval or ratio data value and thus

More information

Frequency distribution

Frequency distribution Frequency distribution In order to describe situations, draw conclusions, or make inferences about events, the researcher must organize the data in some meaningful way. The most convenient method of organizing

More information

Table of Contents (As covered from textbook)

Table of Contents (As covered from textbook) Table of Contents (As covered from textbook) Ch 1 Data and Decisions Ch 2 Displaying and Describing Categorical Data Ch 3 Displaying and Describing Quantitative Data Ch 4 Correlation and Linear Regression

More information

Statistics Lecture 6. Looking at data one variable

Statistics Lecture 6. Looking at data one variable Statistics 111 - Lecture 6 Looking at data one variable Chapter 1.1 Moore, McCabe and Craig Probability vs. Statistics Probability 1. We know the distribution of the random variable (Normal, Binomial)

More information

Chapter 2. Frequency distribution. Summarizing and Graphing Data

Chapter 2. Frequency distribution. Summarizing and Graphing Data Frequency distribution Chapter 2 Summarizing and Graphing Data Shows how data are partitioned among several categories (or classes) by listing the categories along with the number (frequency) of data values

More information

Chapter 2 - Descriptive Statistics

Chapter 2 - Descriptive Statistics Chapter 2 - Descriptive Statistics Our ultimate aim in this class is to study Inferential statistics but before we can start making decisions about data we need to know how to describe this data in a useful

More information

Vocabulary. 5-number summary Rule. Area principle. Bar chart. Boxplot. Categorical data condition. Categorical variable.

Vocabulary. 5-number summary Rule. Area principle. Bar chart. Boxplot. Categorical data condition. Categorical variable. 5-number summary 68-95-99.7 Rule Area principle Bar chart Bimodal Boxplot Case Categorical data Categorical variable Center Changing center and spread Conditional distribution Context Contingency table

More information

- 1 - Class Intervals

- 1 - Class Intervals - 1 - Class Intervals To work with continuous numeric data and to represent it in some sort of a graph or a chart, you have to separate the data into class intervals that is, intervals of equal length.

More information

8: Statistics. Populations and Samples. Histograms and Frequency Polygons. Page 1 of 10

8: Statistics. Populations and Samples. Histograms and Frequency Polygons. Page 1 of 10 8: Statistics Statistics: Method of collecting, organizing, analyzing, and interpreting data, as well as drawing conclusions based on the data. Methodology is divided into two main areas. Descriptive Statistics:

More information

4) Discrete data can have an infinite number of values within a specific interval. Answer: FALSE Diff: 2 Keywords: discrete data Reference: Page 24

4) Discrete data can have an infinite number of values within a specific interval. Answer: FALSE Diff: 2 Keywords: discrete data Reference: Page 24 Business Statistics 1st Edition Donnelly Test Bank Full Download: http://testbanklive.com/download/business-statistics-1st-edition-donnelly-test-bank/ Business Statistics (Donnelly) Chapter 2 Displaying

More information

MTH 3210: PROBABILITY AND STATISTICS DESCRIPTIVE STATISTICS WORKSHEET

MTH 3210: PROBABILITY AND STATISTICS DESCRIPTIVE STATISTICS WORKSHEET MTH 3210: PROBABILITY AND STATISTICS DESCRIPTIVE STATISTICS WORKSHEET Before you work on the practice problems (Section 3) please make sure that you read the supplementary notes (Section 1) and work through

More information

MAT 102 Introduction to Statistics Chapter 6. Chapter 6 Continuous Probability Distributions and the Normal Distribution

MAT 102 Introduction to Statistics Chapter 6. Chapter 6 Continuous Probability Distributions and the Normal Distribution MAT 102 Introduction to Statistics Chapter 6 Chapter 6 Continuous Probability Distributions and the Normal Distribution 6.2 Continuous Probability Distributions Characteristics of a Continuous Probability

More information

Chapter Two: Descriptive Methods 1/50

Chapter Two: Descriptive Methods 1/50 Chapter Two: Descriptive Methods 1/50 2.1 Introduction 2/50 2.1 Introduction We previously said that descriptive statistics is made up of various techniques used to summarize the information contained

More information

Parents Names Mom Cell/Work # Dad Cell/Work # Parent List the Math Courses you have taken and the grade you received 1 st 2 nd 3 rd 4th

Parents Names Mom Cell/Work # Dad Cell/Work # Parent   List the Math Courses you have taken and the grade you received 1 st 2 nd 3 rd 4th Full Name Phone # Parents Names Birthday Mom Cell/Work # Dad Cell/Work # Parent email: Extracurricular Activities: List the Math Courses you have taken and the grade you received 1 st 2 nd 3 rd 4th Turn

More information

3 Graphical Displays of Data

3 Graphical Displays of Data 3 Graphical Displays of Data Reading: SW Chapter 2, Sections 1-6 Summarizing and Displaying Qualitative Data The data below are from a study of thyroid cancer, using NMTR data. The investigators looked

More information

CHAPTER 2 DESCRIPTIVE STATISTICS

CHAPTER 2 DESCRIPTIVE STATISTICS CHAPTER 2 DESCRIPTIVE STATISTICS 1. Stem-and-Leaf Graphs, Line Graphs, and Bar Graphs The distribution of data is how the data is spread or distributed over the range of the data values. This is one of

More information

AP Statistics Prerequisite Packet

AP Statistics Prerequisite Packet Types of Data Quantitative (or measurement) Data These are data that take on numerical values that actually represent a measurement such as size, weight, how many, how long, score on a test, etc. For these

More information

Applied Statistics for the Behavioral Sciences

Applied Statistics for the Behavioral Sciences Applied Statistics for the Behavioral Sciences Chapter 2 Frequency Distributions and Graphs Chapter 2 Outline Organization of Data Simple Frequency Distributions Grouped Frequency Distributions Graphs

More information

3 Graphical Displays of Data

3 Graphical Displays of Data 3 Graphical Displays of Data Reading: SW Chapter 2, Sections 1-6 Summarizing and Displaying Qualitative Data The data below are from a study of thyroid cancer, using NMTR data. The investigators looked

More information