- Discuss the importance of factor analysis in data reduction.
- What is the difference between varimax and equimax in factor analysis.
- Explain rotated component matrix in factor analysis
- What do you mean by Eigenvalue?
- Define communalities.
- Explain principle component analysis.
- Discuss the use of maximum likelihood function in the factor analysis.
- Explain multivariate normal distribution.
- Discuss tests of covariance matrices.
- Explain the importance of discriminant analysis.
- Elaborate the application of canonical correlation.
- Explain multiple regression with an example.
- Discuss the cluster analysis application in segmentation.
- Distinguish between hierarchical clustering and tw ostep clustering.
- Explain K- mean clustering.
- Write a note on MANOVA.
- What is Ginearal linear model and how it is different from Genaralized linear model.
- How wilki's lambda used in multivariate analysis?
- What do you mean by bootstrapping?
- explain the latent structure discovery.
- List any five tools of data mining.
- Distinguish OLS and PLS regression.
- write a note on SIMCA
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