Multiple Correspondence Analysis Calculator

Analyze patterns in categorical data with multiple variables using MCA.

Summary

Observations: 5
Variables: 3
Categories: 6
Total Inertia: 1.0000

Eigenvalues & Inertia

DimensionEigenvalue% of InertiaCumulative %
12.0000200.00%200.00%
21.6667166.67%366.67%
31.0749107.49%474.16%

Category Coordinates

CategoryMassDim 1Dim 2Dim 3
Var1:A0.2001.4141.290-0.317
Var1:B0.1331.414-1.9360.475
Var2:X0.2001.414-0.003-1.397
Var2:Y0.1331.4140.0042.096
Var3:P0.1331.4141.9370.467
Var3:Q0.2001.414-1.292-0.312

Discrimination Measures

VariableDim 1Dim 2Dim 3
Var10.6670.8330.050
Var20.6670.0000.976
Var30.6670.8340.049

Category Map (Dim 1 vs Dim 2)

ABXYPQ

Interpretation

High discrimination values indicate variables that differentiate well between observations on that dimension. Categories close together in the map are associated with similar response patterns.