Validating Sequence Analysis Typologies Using Parametric Bootstrap

Sociol Methodol. 2021 Aug;51(2):290-318. doi: 10.1177/00811750211014232. Epub 2021 Jun 14.

Abstract

In this article, the author proposes a methodology for the validation of sequence analysis typologies on the basis of parametric bootstraps following the framework proposed by Hennig and Lin (2015). The method works by comparing the cluster quality of an observed typology with the quality obtained by clustering similar but nonclustered data. The author proposes several models to test the different structuring aspects of the sequences important in life-course research, namely, sequencing, timing, and duration. This strategy allows identifying the key structural aspects captured by the observed typology. The usefulness of the proposed methodology is illustrated through an analysis of professional and coresidence trajectories in Switzerland. The proposed methodology is available in the WeightedCluster R library.

Keywords: cluster analysis; life course; parametric bootstrap; sequence analysis; typology; validation.