Bivariate Analysis is the simultaneous variate analysis of two variables (attributes). The main reason for differentiating univariate and bivariate analysis is that bivariate analysis is not only a simple descriptive analysis but also it describes the relationship between two different variables. It explores the concept of the relationship between two variables, whether there exists an association and the strength of this association, or whether there are differences between two variables and the significance of these differences. If the data seems to fit a line or curve then there is a relationship or correlation between the two variables

Multivariate Analysis is a variate analysis on 2 or more variables

Statistics Terminology

Some may argue that statisticians are not really interested in generalizing from a sample to a specified population but to an idealized super­population spanning space and time

best course on statistics: https://bolt.mph.ufl.edu/6050-6052/

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Bivariate Descriptive Statistics - Types

Bivariate Relation

Population Parameter

Sample Statistic

Description

Covariation

𝜎𝑥𝑦2

𝜎̂𝑥𝑦2or 𝑠𝑥𝑦2

  • used to classify 3 types of relationships:
    • positive trends
    • negative trends
    • no relationship
  • sensitive to the scale of the data

Correlation

𝜌

𝜌̂ or 𝑟

  • correlation describes relationships and is not sensitive to the scale of the data
  • correlation value ranges from -1 to 1
  • correlation is strongest at -1 and 1
  • correlation is weakest at 0

R2

𝜌2

𝜌̂2 or 𝑟2

  • 𝑅2is very similar to 𝑅 Correlation
  • 𝑅2value is a percentage

Adjusted R2

𝜌2𝑎𝑑𝑗

𝜌̂2𝑎𝑑𝑗  or 𝑟2𝑎𝑑𝑗

  • a modified version of 𝑅2

Simple Linear Regression Models

  • 𝛽0
  • 𝛽1
  • 𝑏0or 𝛽0ˆ
  • 𝑏1or 𝛽1ˆ
  • fitting a line to data points

Multiple Linear Regression Models

  • 𝛽0
  • 𝛽1
  • 𝛽𝑘
  • 𝑏0or 𝛽0ˆ
  • 𝑏1or 𝛽1ˆ
  • 𝑏𝑘or 𝛽𝑘ˆ
  • MULTIVARIATE

Multivariate Descriptive Statistics - Types

  • Additive Tree
  • Canonical Correlation Analysis
  • Cluster Analysis
  • Correspondence Analysis / Multiple Correspondence Analysis
  • Factor Analysis
  • Generalized Procrustean Analysis
  • MANOVA
  • Multidimensional Scaling
  • Multiple Regression Analysis
  • Partial Least Square Regression
  • Regression / PARAFAC
  • Dimensionality Reduction (e.g. Principal Component Analysis)
  • Redundancy Analysis

Statistical Model Analysis