Clustering Made Simple with Spotfire

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Data clustering is the process of grouping items together based on similarities between the items of a group. Clustering can be used for data compression, data mining, pattern recognition, and machine learning. Examples of applications include clustering consumers into market segments, classifying manufactured units by their failure signatures, identifying crime hot spots, and identifying regions with similar geographical characteristics. Once clusters are defined, the next step may be to build a predictive model. TIBCO Spotfire makes it easy to perform clustering with these two popular out of box user-friendly solutions: 1. K-means Clustering 2. Hierarchical Clustering The k-means method is a popular and simple approach to perform clustering and Spotfire line charts help visualize data before performing calculations.

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