Overview
Hierarchical clustering is an unsupervised machine-learning method that organises data points into a nested hierarchy of clusters based on a chosen measure of similarity or distance. It comes in two forms: agglomerative clustering, which begins with each observation as its own cluster and successively merges the closest pairs, and divisive clustering, which begins with all observations together and recursively splits them. The result is typically represented as a dendrogram, a tree diagram whose branching structure records the order and distance at which clusters are joined or divided, allowing the analyst to choose a level at which to cut the tree and obtain a particular partition. Key design choices include the distance metric and the linkage criterion, such as single, complete, average, or Ward linkage, which define how the dissimilarity between groups is computed and strongly influence the shape of the resulting clusters. Because it requires no prior specification of the number of clusters and reveals multi-scale structure, hierarchical clustering is widely used in exploratory data analysis, data mining, bioinformatics, and pattern recognition across fields. Related applications include clustering objects for spatial data mining, constructing phylogenetic and similarity trees from morphometric or molecular traits, and comparing grouping strategies alongside other multivariate techniques such as principal component analysis, illustrating its role in discovering natural groupings within complex, high-dimensional datasets.
Research published in this journal
8 peer-reviewed articles, ranked by relevance. Each links to its DOI.
A Multilevel Hazards Model for Child Mortality In Nigeria
MicroRNA Profiling of Differentiated, Poorly Differentiated and Anaplastic Thyroid Carcinoma, a Comparative Approach
Docking Studies of HIV-1 Reverse Transcriptase and HIV-1 Protease with Phytocompounds of Carissa Carandas L.
Impact of Agricultural Land Use Practices on Water Quality in Lubigi Wetland
Genetic Diversity, Phylogenetic Tree and Principal Component Analysis Based on Morpho-Metric Traits of Assam Chilli
Automated Grassweed Detection in Wheat Cropping System: Current Techniques and Future Scope
Colored Anti-Hail Nets Modify the Ripening Parameters of Nebbiolo and a Smart NIRS can Predict the Polyphenol Features
How this research is being cited
The 8 articles above have been cited 52 times in the scholarly literature. Citation data via OpenAlex and Crossref, updated Jun 2026.
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2026 · Journal of Water Resource and Protection
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2026 · Plant Physiology and Biochemistry
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2026 · Journal of the Indian Society of Remote Sensing
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2026 · Technologies
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2025 · Horticulturae
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2025 ·
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2025 · European Journal of Applied Science, Engineering and Technology
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2025 · European Journal of Applied Science, Engineering and Technology
A sample of recent works citing this journal's research on Hierarchical Clustering, linking to each citing work.