alaryhmäanalyysi
Aalaryhmäanalyysi, or cluster analysis, is a statistical method used to group similar objects or data points into clusters. The goal is to maximize the similarity within each cluster and minimize the similarity between different clusters. This technique is widely applied across various fields, including machine learning, data mining, market research, and biology.
The process of aalaryhmäanalyysi typically involves selecting a dataset and then applying an algorithm to partition
K-means is a popular partitioning method that aims to divide the data into a pre-defined number of
The effectiveness of aalaryhmäanalyysi is often evaluated using metrics such as silhouette score or Davies-Bouldin index,