| Type: | Package | 
| Title: | Fast Computation of Running Statistics for Time Series | 
| Version: | 1.1.0 | 
| Description: | Provides methods for fast computation of running sample statistics for time series. These include: (1) mean, (2) standard deviation, and (3) variance over a fixed-length window of time-series, (4) correlation, (5) covariance, and (6) Euclidean distance (L2 norm) between short-time pattern and time-series. Implemented methods utilize Convolution Theorem to compute convolutions via Fast Fourier Transform (FFT). | 
| License: | GPL-3 | 
| Encoding: | UTF-8 | 
| LazyData: | true | 
| RoxygenNote: | 6.1.1 | 
| URL: | https://github.com/martakarass/runstats | 
| BugReports: | https://github.com/martakarass/runstats/issues | 
| Imports: | fftwtools | 
| Suggests: | covr, testthat, ggplot2, knitr, rmarkdown, sessioninfo, rbenchmark, cowplot, spelling | 
| VignetteBuilder: | knitr | 
| Language: | en-US | 
| NeedsCompilation: | no | 
| Packaged: | 2019-11-14 19:59:37 UTC; martakaras | 
| Author: | Marta Karas | 
| Maintainer: | Marta Karas <marta.karass@gmail.com> | 
| Repository: | CRAN | 
| Date/Publication: | 2019-11-14 20:30:02 UTC | 
Fast Running Correlation Computation
Description
Computes running correlation between time-series x and short-time pattern  y.
Usage
RunningCor(x, y, circular = FALSE)
Arguments
| x | A numeric vector. | 
| y | A numeric vector, of equal or shorter length than   | 
| circular | logical; whether  running correlation is computed assuming
circular nature of   | 
Details
Computes running correlation between time-series x and short-time pattern  y.
The length of output vector equals the length of x.
Parameter circular determines whether x time-series is assumed to have a  circular nature.
Assume l_x is the length of time-series x, l_y is the length of short-time pattern y.
If circular equals TRUE then
- first element of the output vector corresponds to sample correlation between - x[1:l_y]and- y,
- last element of the output vector corresponds to sample correlation between - c(x[l_x], x[1:(l_y - 1)])and- y.
If circular equals FALSE then
- first element of the output vector corresponds to sample correlation between - x[1:l_y]and- y,
- the - l_x - W + 1-th element of the output vector corresponds to sample correlation between- x[(l_x - l_y + 1):l_x],
- last - W-1elements of the output vector are filled with- NA.
See runstats.demo(func.name = "RunningCor") for a detailed presentation.
Value
A numeric vector.
Examples
x <- sin(seq(0, 1, length.out = 1000) * 2 * pi * 6)
y <- x[1:100]
out1 <- RunningCor(x, y, circular = TRUE)
out2 <- RunningCor(x, y, circular = FALSE)
plot(out1, type = "l"); points(out2, col = "red")
Fast Running Covariance Computation
Description
Computes running covariance between time-series x and short-time pattern y.
Usage
RunningCov(x, y, circular = FALSE)
Arguments
| x | A numeric vector. | 
| y | A numeric vector, of equal or shorter length than   | 
| circular | Logical; whether  running variance is computed assuming
circular nature of   | 
Details
Computes running covariance between time-series x and short-time pattern y.
The length of output vector equals the length of x.
Parameter circular determines whether x time-series is assumed to have a  circular nature.
Assume l_x is the length of time-series x, l_y is the length of short-time pattern y.
If circular equals TRUE then
- first element of the output vector corresponds to sample covariance between - x[1:l_y]and- y,
- last element of the output vector corresponds to sample covariance between - c(x[l_x], x[1:(l_y - 1)])and- y.
If circular equals FALSE then
- first element of the output vector corresponds to sample covariance between - x[1:l_y]and- y,
- the - l_x - W + 1-th last element of the output vector corresponds to sample covariance between- x[(l_x - l_y + 1):l_x],
- last - W-1elements of the output vector are filled with- NA.
See runstats.demo(func.name = "RunningCov") for a detailed presentation.
Value
A numeric vector.
Examples
x <- sin(seq(0, 1, length.out = 1000) * 2 * pi * 6)
y <- x[1:100]
out1 <- RunningCov(x, y, circular = TRUE)
out2 <- RunningCov(x, y, circular = FALSE)
plot(out1, type = "l"); points(out2, col = "red")
Fast Running L2 Norm Computation
Description
Computes running L2 norm between between time-series  x and short-time pattern  y.
Usage
RunningL2Norm(x, y, circular = FALSE)
Arguments
| x | A numeric vector. | 
| y | A numeric vector, of equal or shorter length than   | 
| circular | logical; whether  running  L2 norm  is computed assuming
circular nature of   | 
Details
Computes running L2 norm between between time-series  x and short-time pattern  y.
The length of output vector equals the length of x.
Parameter circular determines whether x time-series is assumed to have a  circular nature.
Assume l_x is the length of time-series x, l_y is the length of short-time pattern y.
If circular equals TRUE then
- first element of the output vector corresponds to sample L2 norm between - x[1:l_y]and- y,
- last element of the output vector corresponds to sample L2 norm between - c(x[l_x], x[1:(l_y - 1)])and- y.
If circular equals FALSE then
- first element of the output vector corresponds to sample L2 norm between - x[1:l_y]and- y,
- the - l_x - W + 1-th element of the output vector corresponds to sample L2 norm between- x[(l_x - l_y + 1):l_x],
- last - W-1elements of the output vector are filled with- NA.
See runstats.demo(func.name = "RunningL2Norm") for a detailed presentation.
Value
A numeric vector.
Examples
## Ex.1.
x <- sin(seq(0, 1, length.out = 1000) * 2 * pi * 6)
y1 <- x[1:100] + rnorm(100)
y2 <- rnorm(100)
out1 <- RunningL2Norm(x, y1)
out2 <- RunningL2Norm(x, y2)
plot(out1, type = "l"); points(out2, col = "blue")
## Ex.2.
x <- sin(seq(0, 1, length.out = 1000) * 2 * pi * 6)
y <- x[1:100] + rnorm(100)
out1 <- RunningL2Norm(x, y, circular = TRUE)
out2 <- RunningL2Norm(x, y, circular = FALSE)
plot(out1, type = "l"); points(out2, col = "red")
Fast Running Mean Computation
Description
Computes running sample mean of a time-series x in a fixed length window.
Usage
RunningMean(x, W, circular = FALSE)
Arguments
| x | A numeric vector. | 
| W | A numeric scalar; length of  | 
| circular | Logical; whether running sample mean is computed assuming
circular nature of   | 
Details
The length of output vector equals the length of x vector.
Parameter circular determines whether x time-series is assumed to have a  circular nature.
Assume l_x is the length of time-series x, W is a fixed length of x time-series window.
If circular equals TRUE then
- first element of the output time-series corresponds to sample mean of - x[1:W],
- last element of the output time-series corresponds to sample mean of - c(x[l_x], x[1:(W - 1)]).
If circular equals FALSE then
- first element of the output time-series corresponds to sample mean of - x[1:W],
-  l_x - W + 1-th element of the output time-series corresponds to sample mean ofx[(l_x - W + 1):l_x],
- last - W-1elements of the output time-series are filled with- NA.
See runstats.demo(func.name = "RunningMean") for a detailed presentation.
Value
A numeric vector.
Examples
x <- rnorm(10)
RunningMean(x, 3, circular = FALSE)
RunningMean(x, 3, circular = TRUE)
Fast Running Standard Deviation Computation
Description
Computes running sample standard deviation of a time-series x in a fixed length window.
Usage
RunningSd(x, W, circular = FALSE)
Arguments
| x | A numeric vector. | 
| W | A numeric scalar; length of  | 
| circular | Logical; whether  running sample standard deviation is computed assuming
circular nature of   | 
Details
The length of output vector equals the length of x vector.
Parameter circular determines whether x time-series is assumed to have a  circular nature.
Assume l_x is the length of time-series x, W is a fixed length of x time-series window.
If circular equals TRUE then
- first element of the output time-series corresponds to sample standard deviation of - x[1:W],
- last element of the output time-series corresponds to sample standard deviation of - c(x[l_x], x[1:(W - 1)]).
If circular equals FALSE then
- first element of the output time-series corresponds to sample standard deviation of - x[1:W],
- the - l_x - W + 1-th element of the output time-series corresponds to sample standard deviation of- x[(l_x - W + 1):l_x],
- last - W-1elements of the output time-series are filled with- NA.
See runstats.demo(func.name = "RunningSd") for a detailed presentation.
Value
A numeric vector.
Examples
x <- rnorm(10)
RunningSd(x, 3, circular = FALSE)
RunningSd(x, 3, circular = FALSE)
Fast Running Variance Computation
Description
Computes running sample variance of a time-series x in a fixed length window.
Usage
RunningVar(x, W, circular = FALSE)
Arguments
| x | A numeric vector. | 
| W | A numeric scalar; length of  | 
| circular | Logical; whether running sample variance is computed assuming
circular nature of   | 
Details
The length of output vector equals the length of x vector.
Parameter circular determines whether x time-series is assumed to have a  circular nature.
Assume l_x is the length of time-series x, W is a fixed length of x time-series window.
If circular equals TRUE then
- first element of the output time-series corresponds to sample variance of - x[1:W],
- last element of the output time-series corresponds to sample variance of - c(x[l_x], x[1:(W - 1)]).
If circular equals FALSE then
- first element of the output time-series corresponds to sample variance of - x[1:W],
- the - l_x - W + 1-th element of the output time-series corresponds to sample variance of- x[(l_x - W + 1):l_x],
- last - W-1elements of the output time-series are filled with- NA.
See runstats.demo(func.name = "RunningVar") for a detailed presentation.
Value
A numeric vector.
Examples
x <- rnorm(10)
RunningVar(x, W = 3, circular = FALSE)
RunningVar(x, W = 3, circular = TRUE)
Demo visualization of package functions
Description
Generates demo visualization of output of methods for computing running statistics.
Usage
runstats.demo(func.name = "RunningCov")
Arguments
| func.name | Character value; one of the following: 
 | 
Value
NULL
Examples
## Not run: 
runstats.demo(func.name = "RunningMean")
runstats.demo(func.name = "RunningSd")
runstats.demo(func.name = "RunningVar")
runstats.demo(func.name = "RunningCov")
runstats.demo(func.name = "RunningCor")
runstats.demo(func.name = "RunningL2Norm")
## End(Not run)