Journal article

Towards understanding clustering problems and algorithms: An instance space analysis

LH Dos Santos Fernandes, AC Lorena, K Smith-Miles

Algorithms | MDPI | Published : 2021

Abstract

Various criteria and algorithms can be used for clustering, leading to very distinct outcomes and potential biases towards datasets with certain structures. More generally, the selection of the most effective algorithm to be applied for a given dataset, based on its characteristics, is a problem that has been largely studied in the field of meta-learning. Recent advances in the form of a new methodology known as Instance Space Analysis provide an opportunity to extend such meta-analyses to gain greater visual insights of the relationship between datasets’ characteristics and the performance of different algorithms. The aim of this study is to perform an Instance Space Analysis for the first ..

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University of Melbourne Researchers