Scales of Measurement n Nominal classificationlabels mutually exclusive exhaustive different in kind, not degree.

Slides:



Advertisements
Similar presentations
Population vs. Sample Population: A large group of people to which we are interested in generalizing. parameter Sample: A smaller group drawn from a population.
Advertisements

To Select a Descriptive Statistic
What are Concepts and Variables? Book #2. DEVELOPING CONCEPTS EVENT OF INTEREST NOMINAL CONCEPT INDICATOR OPERATIONAL DEFINITION ELEMENTS EXAMPLE - 1.
1 NURS/HSCI 597 Frequency Distribution Heibatollah Baghi, and Mastee Badii.
Introduction to Data Analysis
Statistics. Review of Statistics Levels of Measurement Descriptive and Inferential Statistics.
Scales of Measurement n Nominal classificationlabels mutually exclusive exhaustive different in kind, not degree.
Review of Basics. REVIEW OF BASICS PART I Measurement Descriptive Statistics Frequency Distributions.
Review of Basics. REVIEW OF BASICS PART I Measurement Descriptive Statistics Frequency Distributions.
BHS Methods in Behavioral Sciences I April 18, 2003 Chapter 4 (Ray) – Descriptive Statistics.
QUANTITATIVE DATA ANALYSIS
Intro to Statistics for the Behavioral Sciences PSYC 1900
Lecture 2 PY 427 Statistics 1 Fall 2006 Kin Ching Kong, Ph.D
Basic Statistical Review
Nominal Level Measurement n numbers used as ways to identify or name categories n numbers do not indicate degrees of a variable but simple groupings of.
Chapter 13 Analyzing Quantitative data. LEVELS OF MEASUREMENT Nominal Measurement Ordinal Measurement Interval Measurement Ratio Measurement.
Chapter 14 Analyzing Quantitative Data. LEVELS OF MEASUREMENT Nominal Measurement Nominal Measurement Ordinal Measurement Ordinal Measurement Interval.
Descriptive Statistics
Analysis of Research Data
Introduction to Educational Statistics
Quantitative Data Analysis Definitions Examples of a data set Creating a data set Displaying and presenting data – frequency distributions Grouping and.
Data observation and Descriptive Statistics
Summary of Quantitative Analysis Neuman and Robson Ch. 11
© 2005 The McGraw-Hill Companies, Inc., All Rights Reserved. Chapter 12 Describing Data.
Summarizing Scores With Measures of Central Tendency
@ 2012 Wadsworth, Cengage Learning Chapter 5 Description of Behavior Through Numerical 2012 Wadsworth, Cengage Learning.
Statistical Methods For Health Research. History Blaise Pascl: tossing ……probability William Gossett: standard error of mean “ how large the sample should.
With Statistics Workshop with Statistics Workshop FunFunFunFun.
Chapter 3 Statistical Concepts.
EPE/EDP 557 Key Concepts / Terms –Empirical vs. Normative Questions Empirical Questions Normative Questions –Statistics Descriptive Statistics Inferential.
Statistics in psychology Describing and analyzing the data.
July, 2000Guang Jin Statistics in Applied Science and Technology Chapter 3 Organizing and Displaying Data.
Psychometrics.
MSE 600 Descriptive Statistics Chapter 10 in 6 th Edition (may be another chapter in 7 th edition)
Statistics. Question Tell whether the following statement is true or false: Nominal measurement is the ranking of objects based on their relative standing.
Copyright © 2012 Wolters Kluwer Health | Lippincott Williams & Wilkins Chapter 16 Descriptive Statistics.
Class Meeting #11 Data Analysis. Types of Statistics Descriptive Statistics used to describe things, frequently groups of people.  Central Tendency 
BASIC NOTATION. Summation (  ) X i = The number of meals I have on day “i” X= 1,2,3,2,1  X i = ???  X i 2 = ??? (  X i ) 2 = ???
Chapters 1 & 2 Displaying Order; Central Tendency & Variability Thurs. Aug 21, 2014.
Smith/Davis (c) 2005 Prentice Hall Chapter Four Basic Statistical Concepts, Frequency Tables, Graphs, Frequency Distributions, and Measures of Central.
Basic Statistics. Scales of measurement Nominal The one that has names Ordinal Rank ordered Interval Equal differences in the scores Ratio Has a true.
Statistical Tools in Evaluation Part I. Statistical Tools in Evaluation What are statistics? –Organization and analysis of numerical data –Methods used.
Tuesday August 27, 2013 Distributions: Measures of Central Tendency & Variability.
Introduction to Descriptive Statistics Objectives: 1.Explain the general role of statistics in assessment & evaluation 2.Explain three methods for describing.
Descriptive Statistics
Chapter 13 Descriptive Data Analysis. Statistics  Science is empirical in that knowledge is acquired by observation  Data collection requires that we.
Psy 230 Jeopardy Measurement Research Strategies Frequency Distributions Descriptive Stats Grab Bag $100 $200$200 $300 $500 $400 $300 $400 $300 $400 $500.
© 2011 Cengage Learning. All Rights Reserved. May not be copied, scanned, or duplicated, in whole or in part, except for use as permitted in a license.
Chapter Eight: Using Statistics to Answer Questions.
I. Introduction to Data and Statistics A. Basic terms and concepts Data set - variable - observation - data value.
Statistics Without Fear! AP Ψ. An Introduction Statistics-means of organizing/analyzing data Descriptive-organize to communicate Inferential-Determine.
BASIC STATISTICAL CONCEPTS Chapter Three. CHAPTER OBJECTIVES Scales of Measurement Measures of central tendency (mean, median, mode) Frequency distribution.
Descriptive Statistics. My immediate family includes my wife Barbara, my sons Adam and Devon, and myself. I am 62, Barbara is 61, and the boys are both.
IE(DS)1 Descriptive Statistics Data - Quantitative observation of Behavior What do numbers mean? If we call one thing 1 and another thing 2 what do we.
Introduction to statistics I Sophia King Rm. P24 HWB
Outline of Today’s Discussion 1.Displaying the Order in a Group of Numbers: 2.The Mean, Variance, Standard Deviation, & Z-Scores 3.SPSS: Data Entry, Definition,
1 Day 1 Quantitative Methods for Investment Management by Binam Ghimire.
Presenting Data Descriptive Statistics. Chapter- Presentation of Data Mona Kapoor.
Measures of Central Tendency (MCT) 1. Describe how MCT describe data 2. Explain mean, median & mode 3. Explain sample means 4. Explain “deviations around.
HMS 320 Understanding Statistics Part 2. Quantitative Data Numbers of something…. (nominal - categorical Importance of something (ordinal - rankings)
Statistics Josée L. Jarry, Ph.D., C.Psych. Introduction to Psychology Department of Psychology University of Toronto June 9, 2003.
REVIEW OF BASIC STATISTICAL CONCEPTS Kerstin Palombaro PT, PhD, CAPS HSED 851 PRIVITERA CHAPTERS 1-4.
Module 6: Descriptive Statistics
Summarizing Scores With Measures of Central Tendency
Organizing and Displaying Data
Basic Statistical Terms
Univariate Statistics
Lesson 12: Presentation and Analysis of Data
Chapter Nine: Using Statistics to Answer Questions
Univariate Description
Presentation transcript:

Scales of Measurement n Nominal classificationlabels mutually exclusive exhaustive different in kind, not degree

Scales of Measurement n Ordinal rank ordering numbers reflect “greater than” only intraindividual hierarchies NOT interindividual comparisons

Scales of Measurement n Interval equal units on scale scale is arbitrary no 0 point meaningful differences between scores

Scales of Measurement n Ratio true 0 can be determined

Contributions of each scale n Nominal u creates the group n Ordinal u creates rank (place) in group n Interval u relative place in group n Ratio u comparative relationship

Project Question 2 n Which scale is used for your measure? u Is it appropriate? u Are there alternate ways (scales) that could be used for your measure? If so how?

Graphing data n X Axis horizontalabscissa independent variable

n Y Axis verticalordinate dependent variable

Types of Graphs n Bar graph qualitative or quantitative data nominal or ordinal scales categories on x axis, frequencies on y discrete variables not continuous not joined

Bar Graph

Types of Graphs n Histogram quantitative data continuous (interval or ratio) scales

Histogram

Types of Graphs n Frequency polygon quantitative data continuous scales based on histogram data use midpoint of range for interval lines joined

Frequency Polygon

Project Question 3 n What sort of graphs would you use to display the data from your measure? n Why would you use that one?

Interpreting Scores

Measures of Central Tendency n Mean n Median n Mode

Measures of Variability n Range n Standard Deviation

Assumptions of Normal Distribution (Gaussian) n The underlying variable is continuous n The range of values is unbounded n The distribution is symmetrical n The distribution is unimodal n May be defined entirely by the mean and standard deviation

Normal Distribution

Effect of standard deviation

Terms of distributions n Kurtosis n Modal n Skewedness

Skewed distributions

Linear transformations n Expresses raw score in different units n takes into account more information n allows comparisons between tests

Linear transformations n Standard Deviations + or - 1 to 3 n z score 0 = mean, - 1 sd = -1 z, 1 sd = 1 z n T scores u removes negatives u removes fractions u 0 z = 50 T

Example T = (z x 10) + 50 If z = 1.3 T = (1.3 x 10) +50 = 63

Example T = (z x 10) + 50 If z = -1.9 T = (-1.9 x 10) +50 = 31

Linear Transformations

Examples of linear transformations