A More Effective Approach to Unsupervised Learning with Time Series Data

@machinelearnbot 

Come see Anshuman Guha, Data Scientist from Spark Cognition Speak at ODSC West. In machine learning, the most traditional and popular methods of clustering are hierarchical clustering (similarity-based clustering) and k-means clustering (feature-based clustering). Hierarchical clustering, put simply, is grouping together points in a vector space that are closest in distance from each other. Hierarchical clustering works great on small datasets. A major advantage of this method is the user does not need to know anything about the dataset in advance and specify any hyper-parameters (like number of clusters).

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