Clustering evolving data using kernel-based methods
Rocco Langone

TL;DR
This thesis introduces advanced kernel spectral clustering methods for evolving data, including algorithms for static, dynamic, and online clustering, with applications in network analysis, fault detection, and image segmentation.
Contribution
It develops novel kernel spectral clustering algorithms with memory effects and online capabilities, improving clustering of evolving and non-stationary data.
Findings
Enhanced clustering of overlapping data with SKSC
Effective community detection in static networks
Successful online adaptation for non-stationary data
Abstract
In this thesis, we propose several modelling strategies to tackle evolving data in different contexts. In the framework of static clustering, we start by introducing a soft kernel spectral clustering (SKSC) algorithm, which can better deal with overlapping clusters with respect to kernel spectral clustering (KSC) and provides more interpretable outcomes. Afterwards, a whole strategy based upon KSC for community detection of static networks is proposed, where the extraction of a high quality training sub-graph, the choice of the kernel function, the model selection and the applicability to large-scale data are key aspects. This paves the way for the development of a novel clustering algorithm for the analysis of evolving networks called kernel spectral clustering with memory effect (MKSC), where the temporal smoothness between clustering results in successive time steps is incorporated…
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Taxonomy
TopicsComplex Network Analysis Techniques · Neural Networks and Applications · Advanced Clustering Algorithms Research
MethodsSpectral Clustering
