Optimizing 1D Clustering Through Customization is a blog post by Ido Hirsh and AppsFlyer Engineering. In order to obtain the optimal solution for our case, we customize a one-dimensional clustering algorithm to suit our needs. We discuss the challenges we face while customizing off-the-shelf algorithms.

13m read timeFrom medium.com
Post cover image
Table of contents
Optimizing 1D Clustering Through CustomizationProblem contextClassic clustering adaptationPutting business logic into the modelCentroid Calculation’s Effects on ClusteringExperimentLessons learned

Sort: