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Tool Pros Cons Clusteralgorithms (SVM, K-Means, Spectral) • Considers all users • Accurate • Tough to communicate • Definitions change over time User experience studies • Deep knowledge • Captures the immeasurable • Costly • Considers few users Domain expert hypothesis • Human interpretable • Inaccurate