modesdistinct
Modesdistinct is a methodological concept used to identify and separate distinct modes in a distribution or density estimate. The term emphasizes distinguishing true structural peaks from minor fluctuations caused by sampling noise or smoothing artifacts.
In a statistical context, a mode is a local maximum of a probability density function. Modesdistinct introduces
Procedure-wise, modesdistinct often follows a sequence: compute a smoothed density estimate (for example, via kernel density
Applications of modesdistinct span pattern recognition, econometrics, genomics, and other fields where distinguishing subpopulations or regimes
See also: multimodality, kernel density estimation, peak detection, mean shift.