BIO 360: Vertebrate Physiology Lab 9: Graphing in Excel. Lab 9: Graphing: how, why, when, and what does it mean? Due 3/26

Size: px
Start display at page:

Download "BIO 360: Vertebrate Physiology Lab 9: Graphing in Excel. Lab 9: Graphing: how, why, when, and what does it mean? Due 3/26"

Transcription

1 Lab 9: Graphing: how, why, when, and what does it mean? Due 3/26 INTRODUCTION Graphs are one of the most important aspects of data analysis and presentation of your of data. They are visual representations of numerical information and can help reveal patterns and highlight results better and faster than words or even tables. A good, clear graph will make your data easy to understand and your readers will thank you. Some general guidelines for making graphs in science are: Use clearly visible symbols, which are more noticeable than axis labels. Reduce clutter. For example, use only 4 6 tick marks per axis. Data labels should be offset from the axes labels to ensure that they are not confused; appropriate abbreviations can help to keep labels short. Design your graph without color use grayscale instead. While a color graph may look impressive on a web page, color printing is expensive and many pdf files will be printed using a black and white printer, which may result in lost detail. An exception to this is for oral presentations or posters. DO NOT put titles on your graph. These should be included in the Figure headings, which go BELOW the graph. All axes should be labeled correctly, including units if appropriate. Never include horizontal lines. You want your graphs to look as clean as possible, so make sure you remove all axes lines in the graph. To do that, simply right- click on one of the axes lines and hit delete. Not all graphs are good, however. Graphs may unintentionally mislead or misrepresent data. The following bar graph misrepresents data by visually suggesting an equal interval between sampling dates: 6 and 23 years, respectively. Furthermore, the meaning of the error bars (standard error? 95% confidence interval?) was not explained in the accompanying caption. Figure 1. An example of a poorly designed graph that misrepresents the sampling of data. Note that there are error bars, but we aren t told what they mean. 1

2 Another example of improper interpretation of graphs is when a line graph showing a correlation is used to infer or suggest causation. This is an obvious problem, and one that is encountered far too often in the popular media. Bloomberg Business Week magazine ran an article about this very topic, with the following graph showing how correlation does not equal causation. While these are clearly extreme (and silly) examples, the message is clear. Figure 2. Graphs illustrating that correlation is not the same as causation. Available online at: or- causation gfx.html LAB OBJECTIVES To become familiar with several different types of common graphs, including when they are used. To interpret data presented in graphical formats To learn how to use Excel to make graphs using data from class. 2

3 TYPES OF GRAPHS Bar charts or column charts display data as a series of vertical or horizontal bars whose heights indicate the number or proportion (%) of values in each category along the x- axis. These are very often the best visual representation of a table. They can also be used to compare two categorical variables. Figure 3. An example of a column chart showing the amount of different types of trash found on a beach. Bar charts can also be nested (bar charts) or stacked (column charts) meaning that a single bar is constructed for each category of the 1st variable & divided into segments, which are proportional to the count/percentage of values in each category of the 2 nd variable. In this case, counts should sum to the no. of values in the dataset; percentages should sum to 100%. Figure 4. An example of a nested bar chart, showing the percentage of people in 4 different states that have different levels of education. Notice that this is also an example of a bar chart that id difficult to interpret in greyscale. 3

4 To interpret, ask yourself: How do the heights of the bars compare? Are some elements/values significantly different from others? Can you generalize relative proportions? Practice making a bar chart and a column chart by following the tutorials here: easy.com/examples/column- chart.html easy.com/examples/bar- chart.html Special note about error bars There are three main kinds of error bars and each gives us different types of information. Depending on our information available and the question we want to answer, we will choose one of the following: 1. Standard deviation (SD) estimates the variability around a mean. These are presented as Most blonds have an IQ between 70 and 130. Or Most brunettes have an IQ between 90 and Standard error (SE) estimates the certainty of the mean. SE bars tend to be smaller than SD bars, so people use them more often; they make their data look better Generally speaking, the more subjects you have, the more certain your mean will be. And the less variable your population, the more certain your mean will be 3. 95% confidence intervals (95% CI) tell us that there is a 95% chance that the interval contains the true mean. See Figure 1 for an example of a graph that contains error bars. Practice making column charts with error bars using the tutorial here: easy.com/examples/error- bars.html Histograms are used to show groups of continuous variables. Values are divided into a series of intervals, usually of equal length. Data are displayed as a series of vertical bars whose heights indicate the number or proportion (%) of values in each interval. The overall shape of these bars tells us a lot of information about the distribution of our data. Figure 5. Examples of the various distributions that histograms can show us. To interpret, ask yourself: Is it symmetric? Is it skewed? What does the shape mean for your data? 4

5 Is there more than one peak? What is the range of the intervals? Is the shape wide or tight (ie, what s the variability of your data?) Practice making a few histograms by following the tutorial here: easy.com/examples/histogram.html Scatterplots graph a response variable (ie, outcome) along the y- axis and the explanatory variable (ie, predictor; risk factor) along the x- axis. Each subject or sample is represented by a single point. Scatterplots often include lines depicting an estimate of the linear/non- linear relation/association. This line, called a regression line, best- fit line, or trendline, gives us the degree of association or correlation between the x and y variables; the correlation is presented an R 2 value. An R 2 value closer to zero indicates a higher correlation. Figure 6. A scatterplot showing the relationship between calories consumed and weight gained. Note the linear regression line with the associated R 2 value (correlation coefficient) on it. To interpret, ask yourself: What is the overall pattern? Is there a positive association? A negative association? Is the relationship linear or non- linear (ie, a curve)? How strong is the association? (i.e. How tightly clustered are the points? How variable is association?) Are there outliers? Is there potentially 3rd lurking variable that is related to both variables tha may confound the association? Practice making a few scatterplots by following the tutorial here: easy.com/examples/scatter- chart.html Practice adding trendlines lines to a scatterplot using the tutorial here: easy.com/examples/trendline.html 5

6 Boxplots are less frequently used than bar or column charts, but they can convey much more detailed information, including the minimum, first quartile, median, third quartile, and maximum (Figure 7). Unlike bar charts, which are appropriate for count data or for data that range from zero up, boxplots are better for showing the medians and quartiles of data and they show much clearer that the range and standard error in samples (Figure 8). Interpreting box plots is relatively straightforward after you understand what they mean. Figure 7. Description of and how to interpret the parts of a box plot. Figure 8. The same three samples plotted using bar charts with SE bars on the left and box and whisker plots on the right. Excel and most other spreadsheet programs do not plot box- and- whisker plots automatically, however we can trick it. Practice making a box chart using the tutorial here: to/content/boxandwhisker- charts- for- excel.html 6

7 LAB REPORT As always, make your graphs in excel and copy and paste them into a SINGLE word document. Submit your homework online through the dropittome website. Using the dataset from last week s lab ( class data under Lab 8 on the course website), make one of each of the five types of graphs above. Use the data you think is most appropriate for each graph type. For example, you could make a histogram of the distribution of hours of exercise by creating bins of 0 hours, 1-2, 3-4, etc. You MUST follow all formatting guidelines and give a figure heading under each graph, including your interpretation of what the graph means. 1. A column chart, including standard error bars 2. A histogram 3. A scatterplot with regression line 4. A box plot 7

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

STA 570 Spring Lecture 5 Tuesday, Feb 1

STA 570 Spring Lecture 5 Tuesday, Feb 1 STA 570 Spring 2011 Lecture 5 Tuesday, Feb 1 Descriptive Statistics Summarizing Univariate Data o Standard Deviation, Empirical Rule, IQR o Boxplots Summarizing Bivariate Data o Contingency Tables o Row

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

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

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

IT 403 Practice Problems (1-2) Answers

IT 403 Practice Problems (1-2) Answers IT 403 Practice Problems (1-2) Answers #1. Using Tukey's Hinges method ('Inclusionary'), what is Q3 for this dataset? 2 3 5 7 11 13 17 a. 7 b. 11 c. 12 d. 15 c (12) #2. How do quartiles and percentiles

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

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

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

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

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

Descriptive Statistics, Standard Deviation and Standard Error

Descriptive Statistics, Standard Deviation and Standard Error AP Biology Calculations: Descriptive Statistics, Standard Deviation and Standard Error SBI4UP The Scientific Method & Experimental Design Scientific method is used to explore observations and answer questions.

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

Acquisition Description Exploration Examination Understanding what data is collected. Characterizing properties of data.

Acquisition Description Exploration Examination Understanding what data is collected. Characterizing properties of data. Summary Statistics Acquisition Description Exploration Examination what data is collected Characterizing properties of data. Exploring the data distribution(s). Identifying data quality problems. Selecting

More information

GRAPHING BAYOUSIDE CLASSROOM DATA

GRAPHING BAYOUSIDE CLASSROOM DATA LUMCON S BAYOUSIDE CLASSROOM GRAPHING BAYOUSIDE CLASSROOM DATA Focus/Overview This activity allows students to answer questions about their environment using data collected during water sampling. Learning

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

Regression III: Advanced Methods

Regression III: Advanced Methods Lecture 3: Distributions Regression III: Advanced Methods William G. Jacoby Michigan State University Goals of the lecture Examine data in graphical form Graphs for looking at univariate distributions

More information

What s New in Spotfire DXP 1.1. Spotfire Product Management January 2007

What s New in Spotfire DXP 1.1. Spotfire Product Management January 2007 What s New in Spotfire DXP 1.1 Spotfire Product Management January 2007 Spotfire DXP Version 1.1 This document highlights the new capabilities planned for release in version 1.1 of Spotfire DXP. In this

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

IAT 355 Visual Analytics. Data and Statistical Models. Lyn Bartram

IAT 355 Visual Analytics. Data and Statistical Models. Lyn Bartram IAT 355 Visual Analytics Data and Statistical Models Lyn Bartram Exploring data Example: US Census People # of people in group Year # 1850 2000 (every decade) Age # 0 90+ Sex (Gender) # Male, female Marital

More information

Survey of Math: Excel Spreadsheet Guide (for Excel 2016) Page 1 of 9

Survey of Math: Excel Spreadsheet Guide (for Excel 2016) Page 1 of 9 Survey of Math: Excel Spreadsheet Guide (for Excel 2016) Page 1 of 9 Contents 1 Introduction to Using Excel Spreadsheets 2 1.1 A Serious Note About Data Security.................................... 2 1.2

More information

Introduction to Minitab 1

Introduction to Minitab 1 Introduction to Minitab 1 We begin by first starting Minitab. You may choose to either 1. click on the Minitab icon in the corner of your screen 2. go to the lower left and hit Start, then from All Programs,

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

Averages and Variation

Averages and Variation Averages and Variation 3 Copyright Cengage Learning. All rights reserved. 3.1-1 Section 3.1 Measures of Central Tendency: Mode, Median, and Mean Copyright Cengage Learning. All rights reserved. 3.1-2 Focus

More information

Data Statistics Population. Census Sample Correlation... Statistical & Practical Significance. Qualitative Data Discrete Data Continuous Data

Data Statistics Population. Census Sample Correlation... Statistical & Practical Significance. Qualitative Data Discrete Data Continuous Data Data Statistics Population Census Sample Correlation... Voluntary Response Sample Statistical & Practical Significance Quantitative Data Qualitative Data Discrete Data Continuous Data Fewer vs Less Ratio

More information

Introduction to Geospatial Analysis

Introduction to Geospatial Analysis Introduction to Geospatial Analysis Introduction to Geospatial Analysis 1 Descriptive Statistics Descriptive statistics. 2 What and Why? Descriptive Statistics Quantitative description of data Why? Allow

More information

Math 121 Project 4: Graphs

Math 121 Project 4: Graphs Math 121 Project 4: Graphs Purpose: To review the types of graphs, and use MS Excel to create them from a dataset. Outline: You will be provided with several datasets and will use MS Excel to create graphs.

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

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

Your Name: Section: INTRODUCTION TO STATISTICAL REASONING Computer Lab #4 Scatterplots and Regression

Your Name: Section: INTRODUCTION TO STATISTICAL REASONING Computer Lab #4 Scatterplots and Regression Your Name: Section: 36-201 INTRODUCTION TO STATISTICAL REASONING Computer Lab #4 Scatterplots and Regression Objectives: 1. To learn how to interpret scatterplots. Specifically you will investigate, using

More information

Dealing with Data in Excel 2013/2016

Dealing with Data in Excel 2013/2016 Dealing with Data in Excel 2013/2016 Excel provides the ability to do computations and graphing of data. Here we provide the basics and some advanced capabilities available in Excel that are useful for

More information

Further Maths Notes. Common Mistakes. Read the bold words in the exam! Always check data entry. Write equations in terms of variables

Further Maths Notes. Common Mistakes. Read the bold words in the exam! Always check data entry. Write equations in terms of variables Further Maths Notes Common Mistakes Read the bold words in the exam! Always check data entry Remember to interpret data with the multipliers specified (e.g. in thousands) Write equations in terms of variables

More information

Chapter 2: The Normal Distribution

Chapter 2: The Normal Distribution Chapter 2: The Normal Distribution 2.1 Density Curves and the Normal Distributions 2.2 Standard Normal Calculations 1 2 Histogram for Strength of Yarn Bobbins 15.60 16.10 16.60 17.10 17.60 18.10 18.60

More information

To make sense of data, you can start by answering the following questions:

To make sense of data, you can start by answering the following questions: Taken from the Introductory Biology 1, 181 lab manual, Biological Sciences, Copyright NCSU (with appreciation to Dr. Miriam Ferzli--author of this appendix of the lab manual). Appendix : Understanding

More information

LAB 1 INSTRUCTIONS DESCRIBING AND DISPLAYING DATA

LAB 1 INSTRUCTIONS DESCRIBING AND DISPLAYING DATA LAB 1 INSTRUCTIONS DESCRIBING AND DISPLAYING DATA This lab will assist you in learning how to summarize and display categorical and quantitative data in StatCrunch. In particular, you will learn how to

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

BIOSTATISTICS LABORATORY PART 1: INTRODUCTION TO DATA ANALYIS WITH STATA: EXPLORING AND SUMMARIZING DATA

BIOSTATISTICS LABORATORY PART 1: INTRODUCTION TO DATA ANALYIS WITH STATA: EXPLORING AND SUMMARIZING DATA BIOSTATISTICS LABORATORY PART 1: INTRODUCTION TO DATA ANALYIS WITH STATA: EXPLORING AND SUMMARIZING DATA Learning objectives: Getting data ready for analysis: 1) Learn several methods of exploring the

More information

Data Analyst Nanodegree Syllabus

Data Analyst Nanodegree Syllabus Data Analyst Nanodegree Syllabus Discover Insights from Data with Python, R, SQL, and Tableau Before You Start Prerequisites : In order to succeed in this program, we recommend having experience working

More information

Here is the data collected.

Here is the data collected. Introduction to Scientific Analysis of Data Using Spreadsheets. Computer spreadsheets are very powerful tools that are widely used in Business, Science, and Engineering to perform calculations and record,

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

Chapter 5: The beast of bias

Chapter 5: The beast of bias Chapter 5: The beast of bias Self-test answers SELF-TEST Compute the mean and sum of squared error for the new data set. First we need to compute the mean: + 3 + + 3 + 2 5 9 5 3. Then the sum of squared

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

STA Module 2B Organizing Data and Comparing Distributions (Part II)

STA Module 2B Organizing Data and Comparing Distributions (Part II) STA 2023 Module 2B Organizing Data and Comparing Distributions (Part II) Learning Objectives Upon completing this module, you should be able to 1 Explain the purpose of a measure of center 2 Obtain and

More information

STA Learning Objectives. Learning Objectives (cont.) Module 2B Organizing Data and Comparing Distributions (Part II)

STA Learning Objectives. Learning Objectives (cont.) Module 2B Organizing Data and Comparing Distributions (Part II) STA 2023 Module 2B Organizing Data and Comparing Distributions (Part II) Learning Objectives Upon completing this module, you should be able to 1 Explain the purpose of a measure of center 2 Obtain and

More information

Learner Expectations UNIT 1: GRAPICAL AND NUMERIC REPRESENTATIONS OF DATA. Sept. Fathom Lab: Distributions and Best Methods of Display

Learner Expectations UNIT 1: GRAPICAL AND NUMERIC REPRESENTATIONS OF DATA. Sept. Fathom Lab: Distributions and Best Methods of Display CURRICULUM MAP TEMPLATE Priority Standards = Approximately 70% Supporting Standards = Approximately 20% Additional Standards = Approximately 10% HONORS PROBABILITY AND STATISTICS Essential Questions &

More information

Chapter 5. Understanding and Comparing Distributions. Copyright 2012, 2008, 2005 Pearson Education, Inc.

Chapter 5. Understanding and Comparing Distributions. Copyright 2012, 2008, 2005 Pearson Education, Inc. Chapter 5 Understanding and Comparing Distributions The Big Picture We can answer much more interesting questions about variables when we compare distributions for different groups. Below is a histogram

More information

STA Rev. F Learning Objectives. Learning Objectives (Cont.) Module 3 Descriptive Measures

STA Rev. F Learning Objectives. Learning Objectives (Cont.) Module 3 Descriptive Measures STA 2023 Module 3 Descriptive Measures Learning Objectives Upon completing this module, you should be able to: 1. Explain the purpose of a measure of center. 2. Obtain and interpret the mean, median, and

More information

Date Lesson TOPIC HOMEWORK. Displaying Data WS 6.1. Measures of Central Tendency WS 6.2. Common Distributions WS 6.6. Outliers WS 6.

Date Lesson TOPIC HOMEWORK. Displaying Data WS 6.1. Measures of Central Tendency WS 6.2. Common Distributions WS 6.6. Outliers WS 6. UNIT 6 ONE VARIABLE STATISTICS Date Lesson TOPIC HOMEWORK 6.1 3.3 6.2 3.4 Displaying Data WS 6.1 Measures of Central Tendency WS 6.2 6.3 6.4 3.5 6.5 3.5 Grouped Data Central Tendency Measures of Spread

More information

WELCOME! Lecture 3 Thommy Perlinger

WELCOME! Lecture 3 Thommy Perlinger Quantitative Methods II WELCOME! Lecture 3 Thommy Perlinger Program Lecture 3 Cleaning and transforming data Graphical examination of the data Missing Values Graphical examination of the data It is important

More information

#NULL! Appears most often when you insert a space (where you should have comma) to separate cell references used as arguments for functions.

#NULL! Appears most often when you insert a space (where you should have comma) to separate cell references used as arguments for functions. Appendix B Excel Errors Under certain circumstances, even the best formulas can appear to have freaked out once you get them in your worksheet. You can tell right away that a formula s gone haywire because

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

MATH& 146 Lesson 10. Section 1.6 Graphing Numerical Data

MATH& 146 Lesson 10. Section 1.6 Graphing Numerical Data MATH& 146 Lesson 10 Section 1.6 Graphing Numerical Data 1 Graphs of Numerical Data One major reason for constructing a graph of numerical data is to display its distribution, or the pattern of variability

More information

Here is Kellogg s custom menu for their core statistics class, which can be loaded by typing the do statement shown in the command window at the very

Here is Kellogg s custom menu for their core statistics class, which can be loaded by typing the do statement shown in the command window at the very Here is Kellogg s custom menu for their core statistics class, which can be loaded by typing the do statement shown in the command window at the very bottom of the screen: 4 The univariate statistics command

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

15 Wyner Statistics Fall 2013

15 Wyner Statistics Fall 2013 15 Wyner Statistics Fall 2013 CHAPTER THREE: CENTRAL TENDENCY AND VARIATION Summary, Terms, and Objectives The two most important aspects of a numerical data set are its central tendencies and its variation.

More information

Data Analyst Nanodegree Syllabus

Data Analyst Nanodegree Syllabus Data Analyst Nanodegree Syllabus Discover Insights from Data with Python, R, SQL, and Tableau Before You Start Prerequisites : In order to succeed in this program, we recommend having experience working

More information

1 Introduction. 1.1 What is Statistics?

1 Introduction. 1.1 What is Statistics? 1 Introduction 1.1 What is Statistics? MATH1015 Biostatistics Week 1 Statistics is a scientific study of numerical data based on natural phenomena. It is also the science of collecting, organising, interpreting

More information

Project 11 Graphs (Using MS Excel Version )

Project 11 Graphs (Using MS Excel Version ) Project 11 Graphs (Using MS Excel Version 2007-10) Purpose: To review the types of graphs, and use MS Excel 2010 to create them from a dataset. Outline: You will be provided with several datasets and will

More information

Spreadsheet and Graphing Exercise Biology 210 Introduction to Research

Spreadsheet and Graphing Exercise Biology 210 Introduction to Research 1 Spreadsheet and Graphing Exercise Biology 210 Introduction to Research There are many good spreadsheet programs for analyzing data. In this class we will use MS Excel. Below are a series of examples

More information

Regression on SAT Scores of 374 High Schools and K-means on Clustering Schools

Regression on SAT Scores of 374 High Schools and K-means on Clustering Schools Regression on SAT Scores of 374 High Schools and K-means on Clustering Schools Abstract In this project, we study 374 public high schools in New York City. The project seeks to use regression techniques

More information

/4 Directions: Graph the functions, then answer the following question.

/4 Directions: Graph the functions, then answer the following question. 1.) Graph y = x. Label the graph. Standard: F-BF.3 Identify the effect on the graph of replacing f(x) by f(x) +k, k f(x), f(kx), and f(x+k), for specific values of k; find the value of k given the graphs.

More information

Error Analysis, Statistics and Graphing

Error Analysis, Statistics and Graphing Error Analysis, Statistics and Graphing This semester, most of labs we require us to calculate a numerical answer based on the data we obtain. A hard question to answer in most cases is how good is your

More information

1 Introduction to Using Excel Spreadsheets

1 Introduction to Using Excel Spreadsheets Survey of Math: Excel Spreadsheet Guide (for Excel 2007) Page 1 of 6 1 Introduction to Using Excel Spreadsheets This section of the guide is based on the file (a faux grade sheet created for messing with)

More information

Visualizing univariate data 1

Visualizing univariate data 1 Visualizing univariate data 1 Xijin Ge SDSU Math/Stat Broad perspectives of exploratory data analysis(eda) EDA is not a mere collection of techniques; EDA is a new altitude and philosophy as to how we

More information

STP 226 ELEMENTARY STATISTICS NOTES PART 2 - DESCRIPTIVE STATISTICS CHAPTER 3 DESCRIPTIVE MEASURES

STP 226 ELEMENTARY STATISTICS NOTES PART 2 - DESCRIPTIVE STATISTICS CHAPTER 3 DESCRIPTIVE MEASURES STP 6 ELEMENTARY STATISTICS NOTES PART - DESCRIPTIVE STATISTICS CHAPTER 3 DESCRIPTIVE MEASURES Chapter covered organizing data into tables, and summarizing data with graphical displays. We will now use

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

Chapter 1. Looking at Data-Distribution

Chapter 1. Looking at Data-Distribution Chapter 1. Looking at Data-Distribution Statistics is the scientific discipline that provides methods to draw right conclusions: 1)Collecting the data 2)Describing the data 3)Drawing the conclusions Raw

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

CHAPTER 1. Introduction. Statistics: Statistics is the science of collecting, organizing, analyzing, presenting and interpreting data.

CHAPTER 1. Introduction. Statistics: Statistics is the science of collecting, organizing, analyzing, presenting and interpreting data. 1 CHAPTER 1 Introduction Statistics: Statistics is the science of collecting, organizing, analyzing, presenting and interpreting data. Variable: Any characteristic of a person or thing that can be expressed

More information

Introduction to WHO s DHIS2 Data Quality Tool

Introduction to WHO s DHIS2 Data Quality Tool Introduction to WHO s DHIS2 Data Quality Tool 1. Log onto the DHIS2 instance: https://who.dhis2.net/dq Username: demo Password: UGANDA 2016 2. Click on the menu icon in the upper right of the screen (

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

Graphical Analysis of Data using Microsoft Excel [2016 Version]

Graphical Analysis of Data using Microsoft Excel [2016 Version] Graphical Analysis of Data using Microsoft Excel [2016 Version] Introduction In several upcoming labs, a primary goal will be to determine the mathematical relationship between two variable physical parameters.

More information

MAT 110 WORKSHOP. Updated Fall 2018

MAT 110 WORKSHOP. Updated Fall 2018 MAT 110 WORKSHOP Updated Fall 2018 UNIT 3: STATISTICS Introduction Choosing a Sample Simple Random Sample: a set of individuals from the population chosen in a way that every individual has an equal chance

More information

Chapter 5. Understanding and Comparing Distributions. Copyright 2010, 2007, 2004 Pearson Education, Inc.

Chapter 5. Understanding and Comparing Distributions. Copyright 2010, 2007, 2004 Pearson Education, Inc. Chapter 5 Understanding and Comparing Distributions The Big Picture We can answer much more interesting questions about variables when we compare distributions for different groups. Below is a histogram

More information

Applied Regression Modeling: A Business Approach

Applied Regression Modeling: A Business Approach i Applied Regression Modeling: A Business Approach Computer software help: SAS SAS (originally Statistical Analysis Software ) is a commercial statistical software package based on a powerful programming

More information

Minitab 17 commands Prepared by Jeffrey S. Simonoff

Minitab 17 commands Prepared by Jeffrey S. Simonoff Minitab 17 commands Prepared by Jeffrey S. Simonoff Data entry and manipulation To enter data by hand, click on the Worksheet window, and enter the values in as you would in any spreadsheet. To then save

More information

Part I, Chapters 4 & 5. Data Tables and Data Analysis Statistics and Figures

Part I, Chapters 4 & 5. Data Tables and Data Analysis Statistics and Figures Part I, Chapters 4 & 5 Data Tables and Data Analysis Statistics and Figures Descriptive Statistics 1 Are data points clumped? (order variable / exp. variable) Concentrated around one value? Concentrated

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

Using Excel for Graphical Analysis of Data

Using Excel for Graphical Analysis of Data Using Excel for Graphical Analysis of Data Introduction In several upcoming labs, a primary goal will be to determine the mathematical relationship between two variable physical parameters. Graphs are

More information

Box Plots. OpenStax College

Box Plots. OpenStax College Connexions module: m46920 1 Box Plots OpenStax College This work is produced by The Connexions Project and licensed under the Creative Commons Attribution License 3.0 Box plots (also called box-and-whisker

More information

Unit 5: Estimating with Confidence

Unit 5: Estimating with Confidence Unit 5: Estimating with Confidence Section 8.3 The Practice of Statistics, 4 th edition For AP* STARNES, YATES, MOORE Unit 5 Estimating with Confidence 8.1 8.2 8.3 Confidence Intervals: The Basics Estimating

More information

Quantitative - One Population

Quantitative - One Population Quantitative - One Population The Quantitative One Population VISA procedures allow the user to perform descriptive and inferential procedures for problems involving one population with quantitative (interval)

More information

Lecture Notes 3: Data summarization

Lecture Notes 3: Data summarization Lecture Notes 3: Data summarization Highlights: Average Median Quartiles 5-number summary (and relation to boxplots) Outliers Range & IQR Variance and standard deviation Determining shape using mean &

More information

Lecture 6: Chapter 6 Summary

Lecture 6: Chapter 6 Summary 1 Lecture 6: Chapter 6 Summary Z-score: Is the distance of each data value from the mean in standard deviation Standardizes data values Standardization changes the mean and the standard deviation: o Z

More information

SLStats.notebook. January 12, Statistics:

SLStats.notebook. January 12, Statistics: Statistics: 1 2 3 Ways to display data: 4 generic arithmetic mean sample 14A: Opener, #3,4 (Vocabulary, histograms, frequency tables, stem and leaf) 14B.1: #3,5,8,9,11,12,14,15,16 (Mean, median, mode,

More information

An introduction to plotting data

An introduction to plotting data An introduction to plotting data Eric D. Black California Institute of Technology February 25, 2014 1 Introduction Plotting data is one of the essential skills every scientist must have. We use it on a

More information

Data Presentation. Figure 1. Hand drawn data sheet

Data Presentation. Figure 1. Hand drawn data sheet Data Presentation The purpose of putting results of experiments into graphs, charts and tables is two-fold. First, it is a visual way to look at the data and see what happened and make interpretations.

More information

2) familiarize you with a variety of comparative statistics biologists use to evaluate results of experiments;

2) familiarize you with a variety of comparative statistics biologists use to evaluate results of experiments; A. Goals of Exercise Biology 164 Laboratory Using Comparative Statistics in Biology "Statistics" is a mathematical tool for analyzing and making generalizations about a population from a number of individual

More information

Chapter 2: Modeling Distributions of Data

Chapter 2: Modeling Distributions of Data Chapter 2: Modeling Distributions of Data Section 2.2 The Practice of Statistics, 4 th edition - For AP* STARNES, YATES, MOORE Chapter 2 Modeling Distributions of Data 2.1 Describing Location in a Distribution

More information

Lecture 1: Statistical Reasoning 2. Lecture 1. Simple Regression, An Overview, and Simple Linear Regression

Lecture 1: Statistical Reasoning 2. Lecture 1. Simple Regression, An Overview, and Simple Linear Regression Lecture Simple Regression, An Overview, and Simple Linear Regression Learning Objectives In this set of lectures we will develop a framework for simple linear, logistic, and Cox Proportional Hazards Regression

More information

Chapter 2 Assignment (due Thursday, April 19)

Chapter 2 Assignment (due Thursday, April 19) (due Thursday, April 19) Introduction: The purpose of this assignment is to analyze data sets by creating histograms and scatterplots. You will use the STATDISK program for both. Therefore, you should

More information

CHAPTER 3: Data Description

CHAPTER 3: Data Description CHAPTER 3: Data Description You ve tabulated and made pretty pictures. Now what numbers do you use to summarize your data? Ch3: Data Description Santorico Page 68 You ll find a link on our website to a

More information

VCEasy VISUAL FURTHER MATHS. Overview

VCEasy VISUAL FURTHER MATHS. Overview VCEasy VISUAL FURTHER MATHS Overview This booklet is a visual overview of the knowledge required for the VCE Year 12 Further Maths examination.! This booklet does not replace any existing resources that

More information

Page 1. Graphical and Numerical Statistics

Page 1. Graphical and Numerical Statistics TOPIC: Description Statistics In this tutorial, we show how to use MINITAB to produce descriptive statistics, both graphical and numerical, for an existing MINITAB dataset. The example data come from Exercise

More information

Statistics Worksheet 1 - Solutions

Statistics Worksheet 1 - Solutions Statistics Worksheet 1 - Solutions Math& 146 Descriptive Statistics (Chapter 2) Data Set 1 We look at the following data set, describing hypothetical observations of voltage of as et of 9V batteries. The

More information

Math 227 EXCEL / MEGASTAT Guide

Math 227 EXCEL / MEGASTAT Guide Math 227 EXCEL / MEGASTAT Guide Introduction Introduction: Ch2: Frequency Distributions and Graphs Construct Frequency Distributions and various types of graphs: Histograms, Polygons, Pie Charts, Stem-and-Leaf

More information

MEASURES OF CENTRAL TENDENCY

MEASURES OF CENTRAL TENDENCY 11.1 Find Measures of Central Tendency and Dispersion STATISTICS Numerical values used to summarize and compare sets of data MEASURE OF CENTRAL TENDENCY A number used to represent the center or middle

More information

Use of GeoGebra in teaching about central tendency and spread variability

Use of GeoGebra in teaching about central tendency and spread variability CREAT. MATH. INFORM. 21 (2012), No. 1, 57-64 Online version at http://creative-mathematics.ubm.ro/ Print Edition: ISSN 1584-286X Online Edition: ISSN 1843-441X Use of GeoGebra in teaching about central

More information

addition + =5+C2 adds 5 to the value in cell C2 multiplication * =F6*0.12 multiplies the value in cell F6 by 0.12

addition + =5+C2 adds 5 to the value in cell C2 multiplication * =F6*0.12 multiplies the value in cell F6 by 0.12 BIOL 001 Excel Quick Reference Guide (Office 2010) For your lab report and some of your assignments, you will need to use Excel to analyze your data and/or generate graphs. This guide highlights specific

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