rainbow: An R Package for Visualizing Functional Time Series
نویسنده
چکیده
Recent advances in computer technology have tremendously increased the use of functional data, whose graphical representation can be infinite-dimensional curves, images or shapes. This article describes four methods for visualizing functional time series using an R add-on package. These methods are demonstrated using age-specific Australian fertility data from 1921 to 2006 and monthly sea surface temperatures from January 1950 to December 2006.
منابع مشابه
The rainbow Package
Recent advances in computer technology have tremendously increased the usage of functional data, whose graphical representation can be infinite-dimensional curves, images or shapes. This article aims to describe four methods for visualizing functional time series using an R add-on package. These methods are demonstrated using the age-specific Australian fertility data from 1921 to 2006 and mont...
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