imputeTS (version 3.0)

na_interpolation: Missing Value Imputation by Interpolation

Description

Uses either linear, spline or stineman interpolation to replace missing values.

Usage

na_interpolation(x, option = "linear", maxgap = Inf, ...)

Arguments

x

Numeric Vector (vector) or Time Series (ts) object in which missing values shall be replaced

option

Algorithm to be used. Accepts the following input:

  • "linear" - for linear interpolation using approx

  • "spline" - for spline interpolation using spline

  • "stine" - for Stineman interpolation using stinterp

maxgap

Maximum number of successive NAs to still perform imputation on. Default setting is to replace all NAs without restrictions. With this option set, consecutive NAs runs, that are longer than 'maxgap' will be left NA. This option mostly makes sense if you want to treat long runs of NA afterwards separately.

...

Additional parameters to be passed through to approx or spline interpolation functions

Value

Vector (vector) or Time Series (ts) object (dependent on given input at parameter x)

Details

Missing values get replaced by values of a approx, spline or stinterp interpolation.

References

Johannesson, Tomas, et al. (2015). "Package stinepack".

See Also

na_kalman, na_locf, na_ma, na_mean, na_random, na_replace, na_seadec, na_seasplit

Examples

Run this code
# NOT RUN {
# Prerequisite: Create Time series with missing values
x <- ts(c(2, 3, 4, 5, 6, NA, 7, 8))

# Example 1: Perform linear interpolation
na_interpolation(x)

# Example 2: Perform spline interpolation
na_interpolation(x, option = "spline")

# Example 3: Perform stine interpolation
na_interpolation(x, option = "stine")

# Example 4: Same as example 1, just written with pipe operator
x %>% na_interpolation()

# Example 5: Same as example 2, just written with pipe operator
x %>% na_interpolation(option = "spline")
# }

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