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Clustering

In: Mathematical Foundations of Big Data Analytics

Author

Listed:
  • Vladimir Shikhman

    (Chemnitz University of Technology)

  • David Müller

    (Chemnitz University of Technology)

Abstract

Clustering aims to group a set of objects in such a way that objects within one and the same cluster are more similar to each other than to those in other clusters. Depending on the objects’ features, the clustering of DNA sequences of genes, members within a social network, texts written in natural languages, time series of stock prices, medical images from computer tomography, or consumer products on e-commerce platforms, may become relevant. Clustering by itself is not a specific algorithm, but rather a task to be solved. It can be achieved by various algorithms that differ significantly in their understanding of what constitutes a cluster and how to efficiently identify them. In this chapter, we shall present the celebrated k-means clustering based on a general dissimilarity measure between the objects. In the first step, the algorithm assigns each object to the cluster with the least dissimilar center. In the second step, the centers are recalculated by minimizing the dissimilarity within the clusters. The k-means algorithm is specified for the Euclidean setup, where centers turn out to be clusters’ sample means. Additionally, we discuss the modifications of k-means with respect to other dissimilarity measures. They include Levenshtein distance, Manhattan norm, cosine similarity, Pearson correlation and Jaccard coefficient. Finally, the technique of spectral clustering is used for community detection. It is based on the diffusion of information through a social network and the spectral analysis of the corresponding matrix of transition probabilities.

Suggested Citation

  • Vladimir Shikhman & David Müller, 2021. "Clustering," Springer Books, in: Mathematical Foundations of Big Data Analytics, chapter 5, pages 87-105, Springer.
  • Handle: RePEc:spr:sprchp:978-3-662-62521-7_5
    DOI: 10.1007/978-3-662-62521-7_5
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