HAWKS: Evolving Challenging Benchmark Sets for Cluster Analysis

02/13/2021
by   Cameron Shand, et al.
4

Comprehensive benchmarking of clustering algorithms is rendered difficult by two key factors: (i) the elusiveness of a unique mathematical definition of this unsupervised learning approach and (ii) dependencies between the generating models or clustering criteria adopted by some clustering algorithms and indices for internal cluster validation. Consequently, there is no consensus regarding the best practice for rigorous benchmarking, and whether this is possible at all outside the context of a given application. Here, we argue that synthetic datasets must continue to play an important role in the evaluation of clustering algorithms, but that this necessitates constructing benchmarks that appropriately cover the diverse set of properties that impact clustering algorithm performance. Through our framework, HAWKS, we demonstrate the important role evolutionary algorithms play to support flexible generation of such benchmarks, allowing simple modification and extension. We illustrate two possible uses of our framework: (i) the evolution of benchmark data consistent with a set of hand-derived properties and (ii) the generation of datasets that tease out performance differences between a given pair of algorithms. Our work has implications for the design of clustering benchmarks that sufficiently challenge a broad range of algorithms, and for furthering insight into the strengths and weaknesses of specific approaches.

READ FULL TEXT
research
07/08/2021

The Three Ensemble Clustering (3EC) Algorithm for Pattern Discovery in Unsupervised Learning

This paper presents a multiple learner algorithm called the 'Three Ensem...
research
06/05/2019

Unsupervised Temporal Clustering to Monitor the Performance of Alternative Fueling Infrastructure

Zero Emission Vehicles (ZEV) play an important role in the decarbonizati...
research
09/20/2022

A Framework for Benchmarking Clustering Algorithms

The evaluation of clustering algorithms can be performed by running them...
research
09/20/2021

A Novel Cluster Detection of COVID-19 Patients and Medical Disease Conditions Using Improved Evolutionary Clustering Algorithm Star

With the increasing number of samples, the manual clustering of COVID-19...
research
12/06/2022

Benchmarking AutoML algorithms on a collection of binary problems

Automated machine learning (AutoML) algorithms have grown in popularity ...
research
04/04/2023

Clustering Validation with The Area Under Precision-Recall Curves

Confusion matrices and derived metrics provide a comprehensive framework...
research
06/24/2021

A review of systematic selection of clustering algorithms and their evaluation

Data analysis plays an indispensable role for value creation in industry...

Please sign up or login with your details

Forgot password? Click here to reset