A More Effective Approach to Unsupervised Learning with Time Series Data
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).
Nov-12-2017, 08:20:08 GMT
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