Exploring Diversity and Abundance of Stingless Bee using Clustering Approach. Exploring Diversity and Abundance of Stingless Beeusing Clustering Approach, 13 (4). pp. 72-89. (2024)
Abstract
Stingless bees are paramount in food chain as they are important pollinators of field crops. Recent studies revealed that these bees are seriously threatened by climate change and rapid urbanization across the world. It is thus important to study the relationship between the stingless bee’s diversity and the characteristics of the locations they inhibit. At the same time, clustering algorithms is a powerful machine learning approach in exploring unsupervised data. Consequently, this study aims to explore the stingless bee diversity in Malaysia through hierarchical, k-means and DBSCAN clustering. The dataset of this study consists of individual stingless bees collected from 12 locations. It comprises 14 environmental features, 3 physical characteristics, 35 species count, 12 genera counts and 3 diversity-and-abundance weights. A four-stage methodology is employed in the study. The results show that DBSCAN effectively groups data into clusters that are well-defined, but the results are less informative. In contrast, hierarchical and k- means clustering are found producing results that provide clearer insights, with hierarchical clustering delivering notably richer results.
Item Type: | Article |
---|---|
Keywords: | DBSCAN, Hierarchical clustering, High dimensional dataset, k-means, Meliponine |
Taxonomy: | By Niche > Kelulut (Stingless Bee) > Behavior By Niche > Kelulut (Stingless Bee) > Ecology By Niche > Kelulut (Stingless Bee) > Physiology By Niche > Kelulut (Stingless Bee) > Research |
Local Content Hub: | Niche > Kelulut (Stingless Bee) |
Depositing User: | Ayuzawahie Amran |
Date Deposited: | 28 Apr 2025 03:28 |
Last Modified: | 28 Apr 2025 03:28 |
Related URLs: |
Actions (login required)
![]() |
View Item |