New models for symbolic data analysis

11 Sep 2018Boris BerangerHuan LinScott A. Sisson

Symbolic data analysis (SDA) is an emerging area of statistics concerned with understanding and modelling data that takes distributional form (i.e. symbols), such as random lists, intervals and histograms. It was developed under the premise that the statistical unit of interest is the symbol, and that inference is required at this level... (read more)

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