Plot values of one certain row in different columns of a table

I have a huge table and I want to make a plot of lets say two different rows in this table.

Below you can see a small overview of my data set.

I want to plot now for country 4 the production of the years 1,2 and 3 so that someone can see the change over time

The same with country 6

On the X axis shoud be the years and on the Y axis should be the values.

Can somebody help me?

``````   country    year1        unit        year2        unit    year3
1          5.1         tonnes       1.4         tonnes   5
2          4.9         tonnes       1.4         tonnes   2
3          4.7         tonnes       1.3         tonnes   3.5
4          4.6         tonnes       1.5         tonnes   8
5          5.0         tonnes       1.4         tonnes   8
6          5.4         tonnes       1.7         tonnes   6
``````
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What have you tried? And please make your example reproducible: stackoverflow.com/questions/5963269/…. –  Paul Hiemstra Nov 13 '12 at 9:05
Hi I tried to give an overview of my data to make a little bit easier. –  burton030 Nov 13 '12 at 9:17

These are the steps to create the plot.

The data:

``````dat <- read.table(text="country    year1      unit      year2      unit    year3
1          5.1         tonnes       1.4         tonnes   5
2          4.9         tonnes       1.4         tonnes   2
3          4.7         tonnes       1.3         tonnes   3.5
4          4.6         tonnes       1.5         tonnes   8
5          5.0         tonnes       1.4         tonnes   8
6          5.4         tonnes       1.7         tonnes   6", header = TRUE)
``````
1. Choose a subset of the data:

``````subdat <- dat[dat\$country == 4, c("year1", "year2", "year3")]
``````
2. Arrange the data in the long format:

``````subdat_l <- data.frame(Value = unlist(subdat), Year = factor(1:3))
``````
3. Plot:

``````plot(Value ~ Year, subdat_l)
``````

If the actual data frame consists of the data of more than three years, you can use this general approach:

``````years <- grep("^year", names(dat), value = TRUE) # find the columns with the data
subdat <- dat[dat\$country == 4, years]
subdat_l <- data.frame(Value = unlist(subdat),
Year = substr(years, 5, nchar(years)))
``````
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Thanks for your answer! But is there also a possibility to avoid writing all the names of the years in the subset? Because I have a timeline of over 50 years. –  burton030 Nov 13 '12 at 10:16
@user1506410 Yes, see the update of my answer. –  Sven Hohenstein Nov 13 '12 at 14:24