DataframeCorrelation / Aggregation Layer

Calculate pairwise correlation coefficients between numeric columns, similar to pandas corr() or numpy corrcoef().

Mathematical forms: Pearson: Spearman: Same formula applied to ranks instead of raw values

Interpretation:

  • +1: Perfect positive correlation
  • 0: No linear correlation
  • -1: Perfect negative correlation

Common applications:

  • Feature selection in machine learning
  • Financial asset analysis
  • Scientific variable relationships
  • Quality control correlations
  • Multi-sensor data analysis
Table
0
0
Table

Method

enum
Pearson

Statistical methods for measuring correlation between variables. Different methods capture different aspects of relationships.

Pearson ~

Linear correlation coefficient. Best for:

  • Linear relationships
  • Normally distributed data
  • Continuous variables Sensitive to outliers
Spearman ~

Rank correlation coefficient. Suitable for:

  • Monotonic relationships
  • Non-normal distributions
  • Ordinal data Robust to outliers