Others Structure Prediction Clustering DATA MINING Association Rules

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Presentation transcript:

Others Structure Prediction Clustering DATA MINING Association Rules Classification Regression

Delimitation of Species of Plants or Animals in Biology CLUSTERING AIMS Delimitation of Species of Plants or Animals in Biology

Medical Classification of Diseases CLUSTERING AIMS Medical Classification of Diseases

Image Segmentation and Object Recognition CLUSTERING AIMS Image Segmentation and Object Recognition

CLUSTERING AIMS Market Segmentation

CLUSTERING Ordinal Mixed Categorical Continuous Graphs Spatial Dissimilarity Time Series