Applied Multivariate Statistical Modeling

IIT Kharagpur Course , Prof. J Maiti

283 students enrolled

Overview

Background - Introduction to multivariate statistical modeling : Basic univariate statistics - Univariate descriptive statistics - Sampling distribution - Estimation - Hypothesis testing - Basic multivariate statistics - Multivariate descriptive statistics - Multivariate normal distribution - Multivariate Inferential statistics

Multivariate models : Analysis of variance (ANOVA) - Multivariate analysis of variance (MANOVA) - Tutorial: ANOVA - Case study: MANOVA - Multiple linear regression (MLR): Introduction - MLR: Sampling distribution of regression coefficients - MLR: Model adequacy tests - MLR: Test of assumptions - MLR: Model diagnostics - MLR: Case study - Multivariate linear regression (MvLR): Introduction - MvLR: Estimation - MvLR: Model adequacy tests - Regression modeling using SPSS - Principle component analysis (PCA): Introduction - PCA: Model adequacy and interpretation - Factor analysis (FA): Introduction - FA: Estimation and model adequacy testing - FA: Rotation, factor scores, and case study - Cluster analysis (CA) - Introduction to structural equation modeling (SEM) - Correspondence analysis

Lecture 30: Principal Component Analysis (PCA)

Up Next
You can skip ad in
SKIP AD >
Advertisement
      • 2x
      • 1.5x
      • 1x
      • 0.5x
      • 0.25x
        EMBED LINK
        COPY
        DIRECT LINK
        PRIVATE CONTENT
        OK
        Enter password to view
        Please enter valid password!
        0:00
        0 (0 Ratings)

        Lecture Details

        Applied Multivariate Statistical Modeling by Dr J Maiti,Department of Management, IIT Kharagpur.For more details on NPTEL visit httpnptel.ac.in

        LECTURES



        Review


        0

        0 Rates
        1
        0%
        0
        2
        0%
        0
        3
        0%
        0
        4
        0%
        0
        5
        0%
        0

        Comments Added Successfully!
        Please Enter Comments
        Please Enter CAPTCHA
        Invalid CAPTCHA
        Please Login and Submit Your Comment