Difference between revisions of "R TimeSeries"

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     library(forecast)
 
     library(forecast)
  
to your code. Here we will use a dataset on UK CPI .
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to your code.  
  
 
== Importing Data ==
 
== Importing Data ==
 +
 +
Here we will initially use a dataset on UK CPI [[media:UKCPI.xls|UKCPI.xls]]. Doenload this and save it as a csv file as this will facilitate the upload to R.
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 +
    setwd("YOUR DIRECTORY")              # This sets the working directory
 +
    data <- read.csv("UKCPI.csv")  # Opens UKCPI.csv from working directory
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which will produce a dataframe (<source>data</source>) with two variables, one giving dates (<source>DATE</source>) and the other containing the actual CPI data for 1988Q1 to 2013Q4 (<source>UKCPI</source>).
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== Basic Time-Series Data Transformations ==
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The first thing we need is to ensure that R knows that the data we are dealing with are actually time series data. There is a function in R you can use to check that.
  
 
== Additional Resources ==
 
== Additional Resources ==

Revision as of 21:09, 11 February 2015

In this section we will demonstrate how to do basic univariate time-series modelling with R. We will use a package written by Rob Hyndman, called "forecast". So before you get started you need to go to R and

   install.packages("forecast")

But note that this package requires R of version 3. Then at the beginning of your code you will have to import the library by adding

   library(forecast)

to your code.

Importing Data

Here we will initially use a dataset on UK CPI UKCPI.xls. Doenload this and save it as a csv file as this will facilitate the upload to R.

   setwd("YOUR DIRECTORY")              # This sets the working directory
   data <- read.csv("UKCPI.csv")  # Opens UKCPI.csv from working directory
which will produce a dataframe (
data
) with two variables, one giving dates (
DATE
) and the other containing the actual CPI data for 1988Q1 to 2013Q4 (
UKCPI
).

Basic Time-Series Data Transformations

The first thing we need is to ensure that R knows that the data we are dealing with are actually time series data. There is a function in R you can use to check that.

Additional Resources

  • A very quick intro from Quick-R can be found here [1]
  • We are using the package "forecast" authored by Rob Hyndman who has also written an online textbook on the topic of forecasting [2]
  • To access some very useful data-series in a very convenient way we will also use the QUANDL package.