CC03 PRODUCING SIMPLE AND QUICK GRAPHS WITH PROC GPLOT
|
|
|
- Clifford Austin
- 9 years ago
- Views:
Transcription
1 1 CC03 PRODUCING SIMPLE AND QUICK GRAPHS WITH PROC GPLOT Sheng Zhang, Xingshu Zhu, Shuping Zhang, Weifeng Xu, Jane Liao, and Amy Gillespie Merck and Co. Inc, Upper Gwynedd, PA Abstract PROC GPLOT is a widely used procedure in SAS /GRAPH to produce scatter, line, box, and Kaplan-Meier plots. In this paper we present step by step procedures to generate several common graphics. We highlight the use of the INTERPOL symbol option. Combining various options with PROC GPLOT, we explore the flexibility and broad functionality of this SAS/GRAPH procedure to produce graphics simply and quickly. Introduction SAS graph is often used to visually represent the relationship among data values. There are many useful procedures to accomplish these, including PROC GPLOT, PROC GCHART, or PROC BOXPLOT. Among those, PROC GPLOT is a popular and important procedure for generating quality graphs. It allows users to enhance the graphic appearance by controlling the axes and the positions of many elements in the graph panel. This paper starts by presenting a simple SAS code for creating basic scatter plots. The code is then extended for a more enhanced variety of SAS plots, including line, box, mean plot with bars, and Kaplan-Meier plots, following step by step procedures. Dataset Data being used for illustration purposes in this paper is a time corresponding antibody titer measurements dataset, called ANALYZE.sas7bdat. A snap shot of the partial sample dataset is listed below: an treatment age weight interval censor phase time titer 1 Drug 50mg Placebo Placebo Drug 50 mg Placebo Drug 50 mg Drug 50 mg The ANALYZE dataset contains nine variables and 100 records. The labels for each variable are as follows: an Subject identification number. treatmnt Treatment groups description. age Subject age weight Subject weight interval Time in the trial censor Censored variable phase Treatment phase time Time in hours corresponding with the titer measurement
2 2 titer Antibody titer (1) Scatter plot A scatter plot puts ordered pairs in a coordinate plane, showing the correlation between two variables. The scatter plot can be generated using the SAS procedure PROC GPLOT. There are three variables used in the PLOT statement, y-variable "Titer", x-variable "Time", and group-variable "Treatmnt", where ANALYZE is the name of the dataset. goptions reset=all; proc gplot data=anal; Goptions reset=all; proc gplot data= ANALYZE; Note: Graphic option statements have carry-over effects. It is always recommended that option values are reset to default by using 'Goptions reset=all' before any SAS plot procedures. One of most important applications of scatter plots is to explore the relationship of two variables, for example, to fit the regression line with 95% C.I. limit. This can be accomplished by adding INTERPOL=RLCLM option in the SYMBOL statement, as shown below. symbol1 interpol=rlclm; proc gplot data=analyze;
3 3 (2) Line Plot A line plot looks like a scatter plot in that it plots each individual data point on the graph. The difference is that a line graph connects data points by means of different interpolation methods. By adding the SYMBOL statement with different INTERPOL= option in PROC GPLOT, many useful graphs can be generated. INTERPOL= can also be substituted by letter I=. Our second example with INTERPOL= option is the line plot. symbol1 interpol=join; proc gplot data=analyze; where phase eq 1; Note: Here we subset dataset ANALYZE with phase equal to 1 to decrease data points density, and to better illustrate different interpolation methods. Listed below are some additional options can be used to connect data points. INTERPOL=JOIN connects data points with straight line. INTERPOL=SPLINE connects data points with smooth line. INTERPOL=SM<nn> connects the data points with smooth line in degree of smoothness nn from 0 to 99. The bigger the nn is, the smoother the line. (3)Box Plot A box plot displays numerical data through five summary statistics (minimum, Q1, median, Q3, maximum). It shows the differences between groups by indicating the spread, skewness and outliers of the data. The SAS procedure PROC GPLOT with INTERPOL=BOX option in symbol statement draws the box plot of "titer" in ANALYZE dataset. symbol interpol=boxt; proc gplot data=analyze; plot titer*treatmnt; Notes: OFFSET = (a, b) option may use in AXIS statement for X-axis to enhance the graph. Box plot can also be generated by different SAS procedures, such as PROC UNIVARIATE and PROC BOXPLOT.
4 4 (4) Mean plot with Bar A variety of error bars around the means can be plotted easily with the INTERPOL option in PROC GPLOT. These include standard error bars, one standard deviation bars, or 95% confidence interval bars, as shown below. The option INTERPOL=HILOTJ requires the outputs of three observations (representing lower, mean, upper) for each time point within a treatment group. The following code shows, in a step by step procedure, how a plot of the mean with standard error bars can be drawn. 1. output a dataset containing mean and stand error for each phase by treatment: ods output 'Summary statistics'=stats; proc sort data=analyze out=temp_; by treatmnt phase; proc means data=temp_ mean std stderr clm; var titer; by treatmnt phase; ods output close; 2. create a dataset containing lower, mean, upper values for each phase by treatment: data plotds (keep=treatmnt phase y); set stats; y=titer_mean; output; y=titer_mean-titer_stderr; output; y=titer_mean+titer_stderr; output; proc sort data=plotds; by treatmnt phase; 3. draw the plot using PROC GPLOT with option INTERPOL=HILOTJ: symbol interpol=hilotj; proc gplot data=plotds; plot y*phase=treatmnt; Note: Users can make other types of error bar plots around mean, including the one standard deviation bar or 95% C.I. bar by changing "titer_stderr" to "titer_stddev" or "titer_lclm and titer_uclm" in step 2.
5 5 (5) KM plot A Kaplan-Meier (KM) plot is a common method to describe and graph survival characteristics. To calculate the survival function of the data, the input dataset must contain one observation per patient, and have time variables and censor variables. In our sample dataset, the time variable is Interval, and the censor variable is Censor. The KM plot can then be plotted by using the PROC GPLOT with INTERPOL=STEPLJ option in symbol statement. The code is very similar to the one used in the previous example (4). The TEMP dataset will be further described below in detail. symbol i=steplj; proc gplot data=temp; plot survival*interval=treatmnt; The input dataset TEMP in the above code comes from the output of PROC LIFETEST procedure with dataset ANALYZE. The TEMP dataset has the following data structure. Temp dataset from PROC LIFETEST Treatmnt Interval Survival SDF_LCL SDF_UCL Drug 50 mg Drug 50 mg Drug 50 mg Drug 50 mg Drug 50 mg Placebo Placebo Placebo Placebo Placebo proc lifetest data=analyze; by treatmnt; time interval*censor(0); SURVIVAL out=temp; PROC LIFETEST uses TIME statement to run a survival analysis and the temporary dataset Temp is created by the SURVIVAL statement. The dataset Temp contains all data points needed for the KM plot.
6 6 Conclusion We have shown, in a step by step fashion, how to generate different types of SAS plots by using the PROC GPLOT procedure. Overall, five different examples have been presented by utilizing different INTERPOL options in the SYMBOL statement. The results are summarized in the table below. The plot Symbol INTERPOL = Regression line with 95% CI limits RLCLM Straight line or Smooth line Box plot Line with bars KM plot JOIN or SPLINE, SMnn BOXT HOLOTJ STEPLJ Together with an annotate dataset and the Interpol graph option, users can easily generate customized SAS graphs with PROC GPLOT. References 1. SAS Institute Inc., SAS Help and Documentation, Cary, NC: SAS Institute Inc., Introduction to SAS/GRAPH Software: Acknowledgements Authors would like to thank Maryann Williams for taking the time to review and comment on the manuscript. Trademark Information SAS and SAS/GRAPH software are registered trademarks or trademarks of SAS Institute Inc. in the USA and other countries. indicates USA registration. Other brand and product names are registered trademarks or trademarks of their respective companies. Contact Author Name: Sheng Zhang Author Name: Xingshu Zhu Company : Merck & Co., Inc. Company : Merck & Co., Inc. Address : 351 Sumneytown Pike Address : 351 Sumneytown Pike City: North Wales City: North Wales State: PA ZIP: State: PA ZIP: [email protected] [email protected]
SAS CLINICAL TRAINING
SAS CLINICAL TRAINING Presented By 3S Business Corporation Inc www.3sbc.com Call us at : 281-823-9222 Mail us at : [email protected] Table of Contents S.No TOPICS 1 Introduction to Clinical Trials 2 Introduction
Histogram of Numeric Data Distribution from the UNIVARIATE Procedure
Histogram of Numeric Data Distribution from the UNIVARIATE Procedure Chauthi Nguyen, GlaxoSmithKline, King of Prussia, PA ABSTRACT The UNIVARIATE procedure from the Base SAS Software has been widely used
Scatter Plots with Error Bars
Chapter 165 Scatter Plots with Error Bars Introduction The procedure extends the capability of the basic scatter plot by allowing you to plot the variability in Y and X corresponding to each point. Each
Graphing in SAS Software
Graphing in SAS Software Prepared by International SAS Training and Consulting Destiny Corporation 100 Great Meadow Rd Suite 601 - Wethersfield, CT 06109-2379 Phone: (860) 721-1684 - 1-800-7TRAINING Fax:
Paper 208-28. KEYWORDS PROC TRANSPOSE, PROC CORR, PROC MEANS, PROC GPLOT, Macro Language, Mean, Standard Deviation, Vertical Reference.
Paper 208-28 Analysis of Method Comparison Studies Using SAS Mohamed Shoukri, King Faisal Specialist Hospital & Research Center, Riyadh, KSA and Department of Epidemiology and Biostatistics, University
The Basics of Creating Graphs with SAS/GRAPH Software Jeff Cartier, SAS Institute Inc., Cary, NC
Paper 63-27 The Basics of Creating Graphs with SAS/GRAPH Software Jeff Cartier, SAS Institute Inc., Cary, NC ABSTRACT SAS/GRAPH software is a very powerful tool for creating a wide range of business and
Box-and-Whisker Plots with The SAS System David Shannon, Amadeus Software Limited
Box-and-Whisker Plots with The SAS System David Shannon, Amadeus Software Limited Abstract One regularly used graphical method of presenting data is the box-and-whisker plot. Whilst the vast majority of
Let SAS Write Your SAS/GRAPH Programs for You Max Cherny, GlaxoSmithKline, Collegeville, PA
Paper TT08 Let SAS Write Your SAS/GRAPH Programs for You Max Cherny, GlaxoSmithKline, Collegeville, PA ABSTRACT Creating graphics is one of the most challenging tasks for SAS users. SAS/Graph is a very
EXST SAS Lab Lab #4: Data input and dataset modifications
EXST SAS Lab Lab #4: Data input and dataset modifications Objectives 1. Import an EXCEL dataset. 2. Infile an external dataset (CSV file) 3. Concatenate two datasets into one 4. The PLOT statement will
containing Kendall correlations; and the OUTH = option will create a data set containing Hoeffding statistics.
Getting Correlations Using PROC CORR Correlation analysis provides a method to measure the strength of a linear relationship between two numeric variables. PROC CORR can be used to compute Pearson product-moment
Using SAS to Create Graphs with Pop-up Functions Shiqun (Stan) Li, Minimax Information Services, NJ Wei Zhou, Lilly USA LLC, IN
Paper CC12 Using SAS to Create Graphs with Pop-up Functions Shiqun (Stan) Li, Minimax Information Services, NJ Wei Zhou, Lilly USA LLC, IN ABSTRACT In addition to the static graph features, SAS provides
208-25 LEGEND OPTIONS USING MULTIPLE PLOT STATEMENTS IN PROC GPLOT
Paper 28-25 LEGEND OPTIONS USING MULTIPLE PLOT STATEMENTS IN PROC GPLOT Julie W. Pepe, University of Central Florida, Orlando, FL ABSTRACT A graph with both left and right vertical axes is easy to construct
EXPLORATORY DATA ANALYSIS: GETTING TO KNOW YOUR DATA
EXPLORATORY DATA ANALYSIS: GETTING TO KNOW YOUR DATA Michael A. Walega Covance, Inc. INTRODUCTION In broad terms, Exploratory Data Analysis (EDA) can be defined as the numerical and graphical examination
From The Little SAS Book, Fifth Edition. Full book available for purchase here.
From The Little SAS Book, Fifth Edition. Full book available for purchase here. Acknowledgments ix Introducing SAS Software About This Book xi What s New xiv x Chapter 1 Getting Started Using SAS Software
OVERVIEW OF THE ENTERPRISE GUIDE INTERFACE
Paper HOW-007 Graphing the Easy Way with SAS Enterprise Guide (or How to Look Good With Less Effort) Stephanie R. Thompson, Rochester Institute of Technology, Rochester, NY ABSTRACT Have you ever wanted
PharmaSUG 2015 - Paper DV05
PharmaSUG 2015 - Paper DV05 Techniques of Preparing Datasets for Visualizing Clinical Laboratory Data Amos Shu, MedImmune, Gaithersburg, MD Victor Sun, MedImmune, Gaithersburg, MD ABSTRACT Visualizing
Dealing with Data in Excel 2010
Dealing with Data in Excel 2010 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 dealing
Diagrams and Graphs of Statistical Data
Diagrams and Graphs of Statistical Data One of the most effective and interesting alternative way in which a statistical data may be presented is through diagrams and graphs. There are several ways in
Describing, Exploring, and Comparing Data
24 Chapter 2. Describing, Exploring, and Comparing Data Chapter 2. Describing, Exploring, and Comparing Data There are many tools used in Statistics to visualize, summarize, and describe data. This chapter
Dongfeng Li. Autumn 2010
Autumn 2010 Chapter Contents Some statistics background; ; Comparing means and proportions; variance. Students should master the basic concepts, descriptive statistics measures and graphs, basic hypothesis
Multiple Graphs on One Page (Step-by-step approach) Yogesh Pande, Schering-Plough Corporation, Summit NJ
Paper CC01 Multiple Graphs on One Page (Step-by-step approach) Yogesh Pande, Schering-Plough Corporation, Summit NJ ABSTRACT In statistical analysis and reporting, it is essential to provide a clear presentation
Using Excel for Handling, Graphing, and Analyzing Scientific Data:
Using Excel for Handling, Graphing, and Analyzing Scientific Data: A Resource for Science and Mathematics Students Scott A. Sinex Barbara A. Gage Department of Physical Sciences and Engineering Prince
Chapter 32 Histograms and Bar Charts. Chapter Table of Contents VARIABLES...470 METHOD...471 OUTPUT...472 REFERENCES...474
Chapter 32 Histograms and Bar Charts Chapter Table of Contents VARIABLES...470 METHOD...471 OUTPUT...472 REFERENCES...474 467 Part 3. Introduction 468 Chapter 32 Histograms and Bar Charts Bar charts are
Data Exploration Data Visualization
Data Exploration Data Visualization What is data exploration? A preliminary exploration of the data to better understand its characteristics. Key motivations of data exploration include Helping to select
Visualizing Key Performance Indicators using the GKPI Procedure Brian Varney, COMSYS, a Manpower Company, Portage, MI
Paper 66-2010 Visualizing Key Performance Indicators using the GKPI Procedure Brian Varney, COMSYS, a Manpower Company, Portage, MI ABSTRACT The GKPI procedure is new in SAS 9.2 SAS/Graph. This new procedure
SAS ODS. Greg Jenkins
SAS ODS Greg Jenkins 1 Overview ODS stands for the Output Delivery System ODS allows output from the Data Step & SAS procedures to presented in a more useful way. ODS also allows for some of the output
Using SAS/GRAPH Software to Create Graphs on the Web Himesh Patel, SAS Institute Inc., Cary, NC Revised by David Caira, SAS Institute Inc.
Paper 189 Using SAS/GRAPH Software to Create Graphs on the Web Himesh Patel, SAS Institute Inc., Cary, NC Revised by David Caira, SAS Institute Inc., Cary, NC ABSTRACT This paper highlights some ways of
5 Correlation and Data Exploration
5 Correlation and Data Exploration Correlation In Unit 3, we did some correlation analyses of data from studies related to the acquisition order and acquisition difficulty of English morphemes by both
Gamma Distribution Fitting
Chapter 552 Gamma Distribution Fitting Introduction This module fits the gamma probability distributions to a complete or censored set of individual or grouped data values. It outputs various statistics
Chapter 1: Looking at Data Section 1.1: Displaying Distributions with Graphs
Types of Variables Chapter 1: Looking at Data Section 1.1: Displaying Distributions with Graphs Quantitative (numerical)variables: take numerical values for which arithmetic operations make sense (addition/averaging)
Abstract. Introduction. System Requirement. GUI Design. Paper AD17-2011
Paper AD17-2011 Application for Survival Analysis through Microsoft Access GUI Zhong Yan, i3, Indianapolis, IN Jie Li, i3, Austin, Texas Jiazheng (Steven) He, i3, San Francisco, California Abstract This
Exercise 1.12 (Pg. 22-23)
Individuals: The objects that are described by a set of data. They may be people, animals, things, etc. (Also referred to as Cases or Records) Variables: The characteristics recorded about each individual.
Using SPSS, Chapter 2: Descriptive Statistics
1 Using SPSS, Chapter 2: Descriptive Statistics Chapters 2.1 & 2.2 Descriptive Statistics 2 Mean, Standard Deviation, Variance, Range, Minimum, Maximum 2 Mean, Median, Mode, Standard Deviation, Variance,
MTH 140 Statistics Videos
MTH 140 Statistics Videos Chapter 1 Picturing Distributions with Graphs Individuals and Variables Categorical Variables: Pie Charts and Bar Graphs Categorical Variables: Pie Charts and Bar Graphs Quantitative
CHARTS AND GRAPHS INTRODUCTION USING SPSS TO DRAW GRAPHS SPSS GRAPH OPTIONS CAG08
CHARTS AND GRAPHS INTRODUCTION SPSS and Excel each contain a number of options for producing what are sometimes known as business graphics - i.e. statistical charts and diagrams. This handout explores
Innovative Techniques and Tools to Detect Data Quality Problems
Paper DM05 Innovative Techniques and Tools to Detect Data Quality Problems Hong Qi and Allan Glaser Merck & Co., Inc., Upper Gwynnedd, PA ABSTRACT High quality data are essential for accurate and meaningful
Summary of Formulas and Concepts. Descriptive Statistics (Ch. 1-4)
Summary of Formulas and Concepts Descriptive Statistics (Ch. 1-4) Definitions Population: The complete set of numerical information on a particular quantity in which an investigator is interested. We assume
How Does My TI-84 Do That
How Does My TI-84 Do That A guide to using the TI-84 for statistics Austin Peay State University Clarksville, Tennessee How Does My TI-84 Do That A guide to using the TI-84 for statistics Table of Contents
Descriptive Statistics
Descriptive Statistics Descriptive statistics consist of methods for organizing and summarizing data. It includes the construction of graphs, charts and tables, as well various descriptive measures such
Descriptive Statistics
Y520 Robert S Michael Goal: Learn to calculate indicators and construct graphs that summarize and describe a large quantity of values. Using the textbook readings and other resources listed on the web
Data exploration with Microsoft Excel: analysing more than one variable
Data exploration with Microsoft Excel: analysing more than one variable Contents 1 Introduction... 1 2 Comparing different groups or different variables... 2 3 Exploring the association between categorical
Chapter 5 Analysis of variance SPSS Analysis of variance
Chapter 5 Analysis of variance SPSS Analysis of variance Data file used: gss.sav How to get there: Analyze Compare Means One-way ANOVA To test the null hypothesis that several population means are equal,
Tips and Tricks: Using SAS/GRAPH Effectively A. Darrell Massengill, SAS Institute, Cary, NC
Paper 90-30 Tips and Tricks: Using SAS/GRAPH Effectively A. Darrell Massengill, SAS Institute, Cary, NC ABSTRACT SAS/GRAPH is a powerful data visualization tool. This paper examines the powerful components
Scientific Graphing in Excel 2010
Scientific Graphing in Excel 2010 When you start Excel, you will see the screen below. Various parts of the display are labelled in red, with arrows, to define the terms used in the remainder of this overview.
STATS8: Introduction to Biostatistics. Data Exploration. Babak Shahbaba Department of Statistics, UCI
STATS8: Introduction to Biostatistics Data Exploration Babak Shahbaba Department of Statistics, UCI Introduction After clearly defining the scientific problem, selecting a set of representative members
4 Other useful features on the course web page. 5 Accessing SAS
1 Using SAS outside of ITCs Statistical Methods and Computing, 22S:30/105 Instructor: Cowles Lab 1 Jan 31, 2014 You can access SAS from off campus by using the ITC Virtual Desktop Go to https://virtualdesktopuiowaedu
Valor Christian High School Mrs. Bogar Biology Graphing Fun with a Paper Towel Lab
1 Valor Christian High School Mrs. Bogar Biology Graphing Fun with a Paper Towel Lab I m sure you ve wondered about the absorbency of paper towel brands as you ve quickly tried to mop up spilled soda from
Guidebook to R Graphics Using Microsoft Windows
Brochure More information from http://www.researchandmarkets.com/reports/2162901/ Guidebook to R Graphics Using Microsoft Windows Description: Introduces the graphical capabilities of R to readers new
Summarizing and Displaying Categorical Data
Summarizing and Displaying Categorical Data Categorical data can be summarized in a frequency distribution which counts the number of cases, or frequency, that fall into each category, or a relative frequency
Scatterplots: Basics, enhancements, problems and solutions Peter L. Flom, Peter Flom Consulting, New York, NY
ABSTRACT Scatterplots: Basics, enhancements, problems and solutions Peter L. Flom, Peter Flom Consulting, New York, NY The scatter plot is a basic tool for presenting information on two continuous variables.
SUGI 29 Posters. Web Server
Paper 151-29 Clinical Trial Online Running SAS. on the Web without SAS/IntrNet. Quan Ren ABSTRACT During clinical trial, it is very important for the project management to have the most recent updated
ABSTRACT INTRODUCTION
Paper SP03-2009 Illustrative Logistic Regression Examples using PROC LOGISTIC: New Features in SAS/STAT 9.2 Robert G. Downer, Grand Valley State University, Allendale, MI Patrick J. Richardson, Van Andel
Doing Multiple Regression with SPSS. In this case, we are interested in the Analyze options so we choose that menu. If gives us a number of choices:
Doing Multiple Regression with SPSS Multiple Regression for Data Already in Data Editor Next we want to specify a multiple regression analysis for these data. The menu bar for SPSS offers several options:
Using PROC SGPLOT for Quick High Quality Graphs
Using PROC SGPLOT for Quick High Quality Graphs Lora D. Delwiche, University of California, Davis, CA Susan J. Slaughter, Avocet Solutions, Davis, CA ABSTRACT New with SAS 9.2, ODS Graphics introduces
The KaleidaGraph Guide to Curve Fitting
The KaleidaGraph Guide to Curve Fitting Contents Chapter 1 Curve Fitting Overview 1.1 Purpose of Curve Fitting... 5 1.2 Types of Curve Fits... 5 Least Squares Curve Fits... 5 Nonlinear Curve Fits... 6
Getting Correct Results from PROC REG
Getting Correct Results from PROC REG Nathaniel Derby, Statis Pro Data Analytics, Seattle, WA ABSTRACT PROC REG, SAS s implementation of linear regression, is often used to fit a line without checking
SAS Mapping: Technologies, Techniques, Tips and Tricks Darrell Massengill
SAS Mapping: Technologies, Techniques, Tips and Tricks Darrell Massengill Every organization has location based data. The difficulty is in choosing the right technology and tool to effectively transform
SPSS Tests for Versions 9 to 13
SPSS Tests for Versions 9 to 13 Chapter 2 Descriptive Statistic (including median) Choose Analyze Descriptive statistics Frequencies... Click on variable(s) then press to move to into Variable(s): list
Paper Airplanes & Scientific Methods
Paper Airplanes 1 Name Paper Airplanes & Scientific Methods Scientific Inquiry refers to the many different ways in which scientists investigate the world. Scientific investigations are done to answer
SUMAN DUVVURU STAT 567 PROJECT REPORT
SUMAN DUVVURU STAT 567 PROJECT REPORT SURVIVAL ANALYSIS OF HEROIN ADDICTS Background and introduction: Current illicit drug use among teens is continuing to increase in many countries around the world.
Microsoft Excel. Qi Wei
Microsoft Excel Qi Wei Excel (Microsoft Office Excel) is a spreadsheet application written and distributed by Microsoft for Microsoft Windows and Mac OS X. It features calculation, graphing tools, pivot
Risk Management : Using SAS to Model Portfolio Drawdown, Recovery, and Value at Risk Haftan Eckholdt, DayTrends, Brooklyn, New York
Paper 199-29 Risk Management : Using SAS to Model Portfolio Drawdown, Recovery, and Value at Risk Haftan Eckholdt, DayTrends, Brooklyn, New York ABSTRACT Portfolio risk management is an art and a science
AP STATISTICS REVIEW (YMS Chapters 1-8)
AP STATISTICS REVIEW (YMS Chapters 1-8) Exploring Data (Chapter 1) Categorical Data nominal scale, names e.g. male/female or eye color or breeds of dogs Quantitative Data rational scale (can +,,, with
https://udrive.oit.umass.edu/statdata/sas2.zip C:\Word\documentation\SAS\Class2\SASLevel2.doc 3/7/2013 Biostatistics Consulting Center
SAS Data Management March, 2006 Introduction... 2 Reading Text Data Files... 2 INFILE Command Options... 2 INPUT Command Specifications... 2 Working with String Variables... 3 Upper and Lower Case String
MEASURES OF LOCATION AND SPREAD
Paper TU04 An Overview of Non-parametric Tests in SAS : When, Why, and How Paul A. Pappas and Venita DePuy Durham, North Carolina, USA ABSTRACT Most commonly used statistical procedures are based on the
Training/Internship Brochure Advanced Clinical SAS Programming Full Time 6 months Program
Training/Internship Brochure Advanced Clinical SAS Programming Full Time 6 months Program Domain Clinical Data Sciences Private Limited 8-2-611/1/2, Road No 11, Banjara Hills, Hyderabad Andhra Pradesh
Geostatistics Exploratory Analysis
Instituto Superior de Estatística e Gestão de Informação Universidade Nova de Lisboa Master of Science in Geospatial Technologies Geostatistics Exploratory Analysis Carlos Alberto Felgueiras [email protected]
CHAPTER TWELVE TABLES, CHARTS, AND GRAPHS
TABLES, CHARTS, AND GRAPHS / 75 CHAPTER TWELVE TABLES, CHARTS, AND GRAPHS Tables, charts, and graphs are frequently used in statistics to visually communicate data. Such illustrations are also a frequent
Data exploration with Microsoft Excel: univariate analysis
Data exploration with Microsoft Excel: univariate analysis Contents 1 Introduction... 1 2 Exploring a variable s frequency distribution... 2 3 Calculating measures of central tendency... 16 4 Calculating
Introduction to Exploratory Data Analysis
Introduction to Exploratory Data Analysis A SpaceStat Software Tutorial Copyright 2013, BioMedware, Inc. (www.biomedware.com). All rights reserved. SpaceStat and BioMedware are trademarks of BioMedware,
Data Visualization with SAS/Graph
Data Visualization with SAS/Graph Keith Cranford Office of the Attorney General, Child Support Division Abstract With the increase use of Business Intelligence, data visualization is becoming more important
There are six different windows that can be opened when using SPSS. The following will give a description of each of them.
SPSS Basics Tutorial 1: SPSS Windows There are six different windows that can be opened when using SPSS. The following will give a description of each of them. The Data Editor The Data Editor is a spreadsheet
How To Test For Significance On A Data Set
Non-Parametric Univariate Tests: 1 Sample Sign Test 1 1 SAMPLE SIGN TEST A non-parametric equivalent of the 1 SAMPLE T-TEST. ASSUMPTIONS: Data is non-normally distributed, even after log transforming.
Common Tools for Displaying and Communicating Data for Process Improvement
Common Tools for Displaying and Communicating Data for Process Improvement Packet includes: Tool Use Page # Box and Whisker Plot Check Sheet Control Chart Histogram Pareto Diagram Run Chart Scatter Plot
Simple linear regression
Simple linear regression Introduction Simple linear regression is a statistical method for obtaining a formula to predict values of one variable from another where there is a causal relationship between
Basic Understandings
Activity: TEKS: Exploring Transformations Basic understandings. (5) Tools for geometric thinking. Techniques for working with spatial figures and their properties are essential to understanding underlying
Laboratory 3 Type I, II Error, Sample Size, Statistical Power
Laboratory 3 Type I, II Error, Sample Size, Statistical Power Calculating the Probability of a Type I Error Get two samples (n1=10, and n2=10) from a normal distribution population, N (5,1), with population
Counting the Ways to Count in SAS. Imelda C. Go, South Carolina Department of Education, Columbia, SC
Paper CC 14 Counting the Ways to Count in SAS Imelda C. Go, South Carolina Department of Education, Columbia, SC ABSTRACT This paper first takes the reader through a progression of ways to count in SAS.
T O P I C 1 2 Techniques and tools for data analysis Preview Introduction In chapter 3 of Statistics In A Day different combinations of numbers and types of variables are presented. We go through these
Descriptive statistics Statistical inference statistical inference, statistical induction and inferential statistics
Descriptive statistics is the discipline of quantitatively describing the main features of a collection of data. Descriptive statistics are distinguished from inferential statistics (or inductive statistics),
3: Summary Statistics
3: Summary Statistics Notation Let s start by introducing some notation. Consider the following small data set: 4 5 30 50 8 7 4 5 The symbol n represents the sample size (n = 0). The capital letter X denotes
Exploratory data analysis (Chapter 2) Fall 2011
Exploratory data analysis (Chapter 2) Fall 2011 Data Examples Example 1: Survey Data 1 Data collected from a Stat 371 class in Fall 2005 2 They answered questions about their: gender, major, year in school,
Correlation Coefficient The correlation coefficient is a summary statistic that describes the linear relationship between two numerical variables 2
Lesson 4 Part 1 Relationships between two numerical variables 1 Correlation Coefficient The correlation coefficient is a summary statistic that describes the linear relationship between two numerical variables
Using JMP Version 4 for Time Series Analysis Bill Gjertsen, SAS, Cary, NC
Using JMP Version 4 for Time Series Analysis Bill Gjertsen, SAS, Cary, NC Abstract Three examples of time series will be illustrated. One is the classical airline passenger demand data with definite seasonal
USE OF ARIMA TIME SERIES AND REGRESSORS TO FORECAST THE SALE OF ELECTRICITY
Paper PO10 USE OF ARIMA TIME SERIES AND REGRESSORS TO FORECAST THE SALE OF ELECTRICITY Beatrice Ugiliweneza, University of Louisville, Louisville, KY ABSTRACT Objectives: To forecast the sales made by
How To Write A Data Analysis
Mathematics Probability and Statistics Curriculum Guide Revised 2010 This page is intentionally left blank. Introduction The Mathematics Curriculum Guide serves as a guide for teachers when planning instruction
Basic Statistical and Modeling Procedures Using SAS
Basic Statistical and Modeling Procedures Using SAS One-Sample Tests The statistical procedures illustrated in this handout use two datasets. The first, Pulse, has information collected in a classroom
Once saved, if the file was zipped you will need to unzip it. For the files that I will be posting you need to change the preferences.
1 Commands in JMP and Statcrunch Below are a set of commands in JMP and Statcrunch which facilitate a basic statistical analysis. The first part concerns commands in JMP, the second part is for analysis
SAS/GRAPH 9.2 ODS Graphics Editor. User s Guide
SAS/GRAPH 9.2 ODS Graphics Editor User s Guide The correct bibliographic citation for this manual is as follows: SAS Institute Inc. 2009. SAS/GRAPH 9.2: ODS Graphics Editor User's Guide. Cary, NC: SAS
And Now, Presenting...
Presentation and Handling of Clinical Laboratory Data From Test Tube to Table Randall K. Carlson, Wilmington, DE and Nate Freimark, Lakewood, NJ Omnicare Clinical Research. Inc. INTRODUCTION In human clinical
WEB APPENDIX. Calculating Beta Coefficients. b Beta Rise Run Y 7.1 1 8.92 X 10.0 0.0 16.0 10.0 1.6
WEB APPENDIX 8A Calculating Beta Coefficients The CAPM is an ex ante model, which means that all of the variables represent before-thefact, expected values. In particular, the beta coefficient used in
