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Lernen Problem Statement | GMMs
Clusteranalyse
course content

Kursinhalt

Clusteranalyse

Clusteranalyse

1. Clustering Fundamentals
2. Core Concepts
3. K-Means
4. Hierarchical Clustering
5. DBSCAN
6. GMMs

book
Problem Statement

Soft Clustering

Soft clustering assigns probabilities of belonging to each cluster rather than forcing each data point into just one group. This approach is especially useful when clusters overlap or when data points lie near the boundary of multiple clusters. It's widely used in applications like customer segmentation, where individuals might exhibit behaviors belonging to multiple groups at once.

Problems with K-Means and DBSCAN

Clustering algorithms like K-means and DBSCAN are powerful but have limitations:

Both algorithms face challenges with high-dimensional data and overlapping clusters. These limitations highlight the need for flexible approaches like Gaussian mixture models, which handle complex data distributions more effectively. For example, think about this type of data:

question mark

What is the main characteristic of soft clustering that distinguishes it from hard clustering methods like K-means?

Select the correct answer

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