Summary: Multivariate Data Analysis | 9780130329295 | Joseph F Hair
- This + 400k other summaries
- A unique study and practice tool
- Never study anything twice again
- Get the grades you hope for
- 100% sure, 100% understanding
Read the summary and the most important questions on Multivariate Data Analysis | 9780130329295 | Joseph F. Hair
-
1 Overview of Multivariate Methods
-
What is the difference between a univariate, bivariate and multivariate analysis?
Univariate analysis is a statistical technique to determine based onone dependent measure whether samples are from populations with equal means. Analysis of single variable distributions.
Bivariate analysis is a statistical technique that analysestwo variables. Correlation and simple regression.
Multivariate analysis is a statistical technique that analyses more than 2 variables in asingle orset of relationships. Multiple regression, factoranalyse. -
1.1 What is multivariate analysis?
-
What is multivariate data analysis? And why is its application helpful for research?
Multivariate data analysis is the analysis ofmultiple variables in asingle relationship orset of relationships. It refers to all statistical techniques that simultaneously analyze multiple measurements on individual or object under investigation, so >2 variables.
Its application is helpful for research because these techniques revealrelationships that otherwise would not have been identified. -
1.2 Three trends
This is a preview. There are 3 more flashcards available for chapter 1.2
Show more cards here -
What is meant by causal inference and how does it supplement the randomized controlled experiment?
Causal inference; movement beyond statistical inference to the stronger statement of cause and effect in non-experimental situations. This is a paradigm shift.
Randomized controlled experiment supplement; new analytical framework for non-experimental data. This increases rigor of their analysis and helps to overcome doubts raised by many concerning the pitfalls of big Data analytics. -
1.4 Basic concepts of multivariate data analysis
This is a preview. There are 2 more flashcards available for chapter 1.4
Show more cards here -
What are the two main different data discussed in Hair et al., and what measurement scales does it contain?
Two main different measurement scales discussed:Nonmetric --> qualitative data. This can be measured either using anominal orordinal scale. Nominaal = categorie, en ordinaal is de een hoger dan de ander --> ranking, maar geen afstand.Metric --> quantitative data. This can be measured either usinginterval orratio scale. Both refer to units of measurements, but interval had anarbitrary zero point (e.g. Celsius), and ratio does have anabsolute zero point (e.g. Weight). For interval it is not possible to say that something is *x amount away of another value. -
What are the two reasons why the measurement scale is important for doing data analysis?
The measurement scale is important for doing data analysis because:
1. The researcher must identify the measurement scale of each variable used, so that non metric data is not used incorrectly.
2. The measurement scale determines which multivariate technique are most applicable. -
Basic concepts in multivariate data analysis are: variate, measurement error, and measurement scale. What is the variate?
The variate is the building block of multivariate analysis. This is a lineair combination of variables with empirically determined weights. This is a single value representing a combination of the entire set of variables that best achieves the objective of specific multivariate analysis.
In factor analysis the variates are formed which best represent the underlying structure or patterns as represented by intercorrelations. In MRA the variate is determined by the maximum correlation between the IV's and DV.
The variate is determined by the weight and observed variable. -
What is statistical power, what three concepts represent this and what does it imply?
Statistical power is theprobability of finding aneffect when it is present in the data. It is about the probability of correctly rejecting the null hypothesis in favor of the alternative hypothesis.
Concepts that represent it:
- Statistical significance set by the researcher for a type 1 error (Alpha)
-Effect size (the size of the effect being examined)
-Sample sizeWhile checking for statistical power, as a researcher you search for an adequate probability of recovering a significant effect that is present in the data. -
Why is the sample size critically important for statistical power?
Because given the sample size, the significance level of an estimated parameter is impacted. Almost any parameter can be found significant in a large sample size, and a small sample size might overlook things. -
What is the difference between a Type 1 and Type 2 error?
Type 1 error: probability of incorrectlyrejecting H0, meaning that you say there is a difference or correlation, while in fact, there isnot . This is determined byalpha . Vals positief resultaat: je zegt dat er een effect is, maar het effect is er niet.
Type 2 error: probability of incorrectlyaccepting H0 (failing to reject H0), meaning that you state there is no difference while in fact thereis . This is termed bybeta . The value of 1-type 2 error is calledpower . Je zegt dat er geen effect is, terwijl er wel een effect is. -
What is the difference between variance, correlations and components?
The variance is about the differences in the answers of the respondence WITHIN a certain variable.
The correlation is about whether the differences in answers of the respondents correspond with each other, e.g. do they go up and down together. So this is AMONG variables.
The compontents then explain the underlying dimensions.
- Higher grades + faster learning
- Never study anything twice
- 100% sure, 100% understanding
Topics related to Summary: Multivariate Data Analysis
-
Overview of Multivariate Methods - Guidelines for analysis and interpretation
-
Examining your data
-
Exploratory Factor analysis - Process Factor Analysis - Construct correlation matrix
-
Exploratory Factor analysis - Process Factor Analysis - Interpretation of the factors
-
Multiple Regression Analysis - Determine the objectives of MRA
-
Multiple Regression Analysis - Moderator effect
-
Logistisch regression - Goodness of fit
-
Confirmatory factor analysis