19.Multivariate Analysis Using NLTS2 Data. 1 Prerequisites Recommended modules to complete before viewing this module  1. Introduction to the NLTS2 Training.

Slides:



Advertisements
Similar presentations
Handling attrition and non- response in longitudinal data Harvey Goldstein University of Bristol.
Advertisements

4. NLTS2 Data Sources: Parent and Youth Surveys. 4. Sources: Parent and Youth Surveys Prerequisites Recommended modules to complete before viewing this.
Prerequisites Recommended modules to complete before viewing this module 1. Introduction to the NLTS2 Training Modules 2. NLTS2 Study Overview 3. NLTS2.
12. NLTS2 Documentation: Quick References. 1 Prerequisites Recommended modules to complete before viewing this module  1. Introduction to the NLTS2 Training.
13.Analysis Demonstration: Descriptive/Comparative Analysis Using Longitudinal Data.
11. NLTS2 Documentation: Data Dictionaries. 1 Prerequisites Recommended modules to complete before viewing this module  1. Introduction to the NLTS2.
Sociology 680 Multivariate Analysis Logistic Regression.
10. NLTS2 Documentation Overview. 1 Prerequisites Recommended modules to complete before viewing this module  1. Introduction to the NLTS2 Training Modules.
16b. Accessing Data: Means in SAS ®. 1 Prerequisites Recommended modules to complete before viewing this module  1. Introduction to the NLTS2 Training.
9. Weighting and Weighted Standard Errors. 1 Prerequisites Recommended modules to complete before viewing this module  1. Introduction to the NLTS2 Training.
Teaching Statistics Using Stata Software Susan Hailpern BSN MPH MS Department of Epidemiology and Population Health Albert Einstein College of Medicine.
Unit 3 Siobhan Carey Department for International Development Making cross-national comparisons using micro data.
7.Implications for Analysis: Parent/Youth Survey Data.
Descriptive Statistical Analyses Reliability Analyses Review of Last Class.
17a.Accessing Data: Manipulating Variables in SPSS ®
Correlation & Regression Chapter 15. Correlation statistical technique that is used to measure and describe a relationship between two variables (X and.
Missing Data Issues in RCTs: What to Do When Data Are Missing? Analytic and Technical Support for Advancing Education Evaluations REL Directors Meeting.
Introduction to Data Mining with XLMiner
Ann Arbor ASA ‘Up and Running’ Series: SPSS Prepared by volunteers of the Ann Arbor Chapter of the American Statistical Association, in cooperation with.
Research Methods in MIS
SOWK 6003 Social Work Research Week 10 Quantitative Data Analysis
Notes on Logistic Regression STAT 4330/8330. Introduction Previously, you learned about odds ratios (OR’s). We now transition and begin discussion of.
15a.Accessing Data: Frequencies in SPSS ®. 1 Prerequisites Recommended modules to complete before viewing this module  1. Introduction to the NLTS2 Training.
15b. Accessing Data: Frequencies in SAS ®. 1 Prerequisites Recommended modules to complete before viewing this module  1. Introduction to the NLTS2 Training.
An Introduction to Logistic Regression
Dr. Mario MazzocchiResearch Methods & Data Analysis1 Correlation and regression analysis Week 8 Research Methods & Data Analysis.
Brown, Suter, and Churchill Basic Marketing Research (8 th Edition) © 2014 CENGAGE Learning Basic Marketing Research Customer Insights and Managerial Action.
Summary of Quantitative Analysis Neuman and Robson Ch. 11
Leedy and Ormrod Ch. 11 Gray Ch. 14
Chapter 8: Bivariate Regression and Correlation
Introduction to Multilevel Modeling Using SPSS
Categorical Data Prof. Andy Field.
How to Analyze Data? Aravinda Guntupalli. SPSS windows process Data window Variable view window Output window Chart editor window.
Multilevel Modeling Using HLM and MLwiN Xiao Chen UCLA Academic Technology Services.
Methods Overview.  Description: What happens?  Prediction: When does it happen?  Explanation: Why does it happen? ◦ Theory ◦ Causal Inferences  Intervention/Application:
Moderation: Introduction
6. Implications for Analysis: Data Content. 1 Prerequisites Recommended modules to complete before viewing this module  1. Introduction to the NLTS2.
Modeling Possibilities
Methods Inverse probability weighting –Can you predict probability of response? –Difficulties if more than one missing outcome or covariate Joint model.
8.Implications for Analysis: School Survey, Student Assessment, and Transcript Data.
LINDSEY BREWER CSSCR (CENTER FOR SOCIAL SCIENCE COMPUTATION AND RESEARCH) UNIVERSITY OF WASHINGTON September 17, 2009 Introduction to SPSS (Version 16)
2. NLTS2 Study Overview. 1 Prerequisites Recommended module to complete before viewing this module  1. Introduction to the NLTS2 Training Modules.
CHAPTER 6, INDEXES, SCALES, AND TYPOLOGIES
18b. PROC SURVEY Procedures in SAS ®. 1 Prerequisites Recommended modules to complete before viewing this module  1. Introduction to the NLTS2 Training.
Sociological metodology Quantification Petr Soukup.
Math 3400 Computer Applications of Statistics Lecture 1 Introduction and SAS Overview.
1.Introduction to the NLTS2 Training Modules Jose Blackorby Renee Cameto Camille Marder Christopher Sanford Kathryn Valdes James Van Campen SRI International.
APA Writing Style II Methods and Results. Methods Possible subsections: 1. Participants 2. Apparatus (or Materials) 3. Procedure 4. Measures.
Multiple Imputation (MI) Technique Using a Sequence of Regression Models OJOC Cohort 15 Veronika N. Stiles, BSDH University of Michigan September’2012.
Using Weighted Data Donald Miller Population Research Institute 812 Oswald Tower, December 2008.
Multilevel Modeling Software Wayne Osgood Crime, Law & Justice Program Department of Sociology.
MGT-491 QUANTITATIVE ANALYSIS AND RESEARCH FOR MANAGEMENT OSMAN BIN SAIF Session 16.
1 G Lect 13W Imputation (data augmentation) of missing data Multiple imputation Examples G Multiple Regression Week 13 (Wednesday)
Copyright 2010, The World Bank Group. All Rights Reserved. Testing and Documentation Part II.
PSC 47410: Data Analysis Workshop  What’s the purpose of this exercise?  The workshop’s research questions:  Who supports war in America?  How consistent.
What the data can tell us: Evidence, Inference, Action! 1 Early Childhood Outcomes Center.
14b. Accessing Data Files in SAS ®. 1 Prerequisites Recommended modules to complete before viewing this module  1. Introduction to the NLTS2 Training.
16a. Accessing Data: Means in SPSS ®. 16a. Accessing Data: Means in SSPS ® 1 Prerequisites Recommended modules to complete before viewing this module.
Analysis of Experiments
Multiple Imputation using SAS Don Miller 812 Oswald Tower
17b.Accessing Data: Manipulating Variables in SAS ®
BIVARIATE/MULTIVARIATE DESCRIPTIVE STATISTICS Displaying and analyzing the relationship between continuous variables.
1 EPIB 698C Lecture 1 Instructor: Raul Cruz-Cano
Synthetic Approaches to Data Linkage Mark Elliot, University of Manchester Jerry Reiter Duke University Cathie Marsh Centre.
BINARY LOGISTIC REGRESSION
Notes on Logistic Regression
Analysis of Covariance (ANCOVA)
LINDSEY BREWER CSSCR (CENTER FOR SOCIAL SCIENCE COMPUTATION AND RESEARCH) UNIVERSITY OF WASHINGTON September 17, 2009 Introduction to SPSS (Version 16)
Classification of Variables
Multivariate Statistics
Presentation transcript:

19.Multivariate Analysis Using NLTS2 Data

1 Prerequisites Recommended modules to complete before viewing this module  1. Introduction to the NLTS2 Training Modules  2. NLTS2 Study Overview  3. NLTS2 Study Design and Sampling  NLTS2 Data Sources, either 4. Parent and Youth Surveys or 5. School Surveys, Student Assessments, and Transcripts  9. Weighting and Weighted Standard Errors

19. Multivariate Analysis Using NLTS2 Data 2 Prerequisites Recommended modules to complete before viewing this module (cont’d)  NLTS2 Documentation 10. Overview 11. Data Dictionaries 12. Quick References  Accessing Data 14a. Files in SPSS or 14b. Files in SAS 17a. Manipulating Variables in SPSS or 17b. Manipulating Variables in SAS

19. Multivariate Analysis Using NLTS2 Data 3 Overview  Multivariate analysis  Considerations  Variables  HLM  Critical considerations  Closing  Important information

19. Multivariate Analysis Using NLTS2 Data 4 Multivariate analysis Explanatory questions  Questions regarding relationships among variables, usually requiring controls for covariates Types of multivariate analyses  Regression  Factor analysis  Structural equation model  HLM (hierarchical linear modeling)  Regression tree

19. Multivariate Analysis Using NLTS2 Data 5 Considerations Select factors that relate to the outcome.  Finding the factors that best predict an outcome can be a challenging part of the process.  This can become iterative, trying different sets of items for a “best-fit” model. Special considerations for these types of analysis.  If any of the items in the model are missing, the respondent may be eliminated from the analysis  Variables may need to be recoded for multivariate procedures.

19. Multivariate Analysis Using NLTS2 Data 6 Considerations Missing values  If a value is missing, the case may not be included in analysis.  Using imputed values is one approach to the problem of missing values. One option is to fill missing values with the mean of the variable by certain characteristics. – For example, reassign the missing value to the mean value of that item using the mean value from those within the same disability category, gender, and age group. Imputed variables should be clearly labeled to differentiate between the original item and the imputed item.

19. Multivariate Analysis Using NLTS2 Data 7 Variables Categorical variables  Categorical variables are recoded into a series of variables (also known as “dummy variables”). One variable for each response category. New variables have a value of “1” if that category was indicated and “0” if another category was indicated.  One category is omitted from the block. For example, include all disability categories except learning disability (LD) so that it is LD vs. other categories. The program will not run if all categories are included.

19. Multivariate Analysis Using NLTS2 Data 8 Variables Continuous variables  Typically no recoding is necessary. Ordinal variables  Ordinal variables may be categorical but imply an order. Example: 1 = Never; 2 = Not very often; 3 = Sometimes; 4 = Very often.  Ordinal variables can be recoded, as categorical variables. A series of dummies with one category omitted. In the above example, if dummies for values 2, 3, and 4 were included, the ordinal variable would be those who were “never” vs. the other response categories.

19. Multivariate Analysis Using NLTS2 Data 9 Variables Direction of variables  The order of responses may have a direction that is either low to high or high to low.  A response order such as “(1) never” to “(4) very often” can be either a negative to positive direction or a positive to negative direction based on what question was asked. If the question is “How often do you have trouble getting along with students in your class?” the order would be high to low, with a “(4) very often” being the most negative response and “(1) never” the most positive. If the question is “How often do you get together with friends?” the above order is low to high, with “(4) very often” being the most positive response and “(1) never” the most negative.

19. Multivariate Analysis Using NLTS2 Data 10 Variables Direction of variables (cont’d)  If there is a series of questions with the same ordinal response categories, the direction may not be consistent if some of the questions in the series have a negative connotation and others a positive connotation.  Reverse-ordering some variables might be worthwhile so that all variables go in the same direction. It can be confusing to interpret positive or negative associations when variables are in mixed directions.

19. Multivariate Analysis Using NLTS2 Data 11 HLM HLM (hierarchical linear model)  Multilevel analysis for nested/grouped data  For longitudinal studies, time is level A special file needs to be created.  HLM requires everything in one file. Data, program, and output  HLM variable names are limited to 8 characters.  The file should contain only the variables actively used in the model.

19. Multivariate Analysis Using NLTS2 Data 12 Critical considerations Some variable creation and/or file manipulation may be required.  Variables that work in other procedures often have to be modified for models. Varying n’s (missing values) have to be considered

19. Multivariate Analysis Using NLTS2 Data 13 Closing Topics discussed in this module  Multivariate analysis  Considerations  Variables  HLM  Critical considerations Next module:  20. Linear Regression Model: Example

19. Multivariate Analysis Using NLTS2 Data 14 Important information Websites  NLTS2 website contains reports, data tables, and other project-related information  Information about obtaining the NLTS2 database and documentation can be found on the NCES website  General information about restricted data licenses can be found on the NCES website  address: