edqts: Empirical Dynamic Quantile for Visualization of High-Dimensional Time Series
Description
Compute empirical dynamic quantile (EDQ) for a given probability "p" based on the weighted algorithm
proposed in the article by Pe<U+00F1>a, Tsay and Zamar (2019).
Usage
edqts(x, p = 0.5, h = 30)
Arguments
x
T by k data matrix: T data points in rows with each row being data at a given time point,
and k time series in columns.
p
Probability, the quantile series of which is to be computed. Default value is 0.5.
h
Number of time series observations used in the algorithm. The larger h is the longer to compute.
Default value is 30.
Value
The column of the matrix x which stores the "p" EDQ of interest.
References
Pe<U+00F1>a, D. Tsay, R. and Zamar, R. (2019). Empirical Dynamic Quantiles for
Visualization of High-Dimensional Time Series, Technometrics, 61:4, 429-444.