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I am using R to plot some data.

Date <- c("07/12/2012 05:00:00", "07/12/2012 06:00:00", "07/12/2012 07:00:00",
      "07/12/2012 08:00:00","07/12/2012 10:00:00","07/12/2012 11:00:00")
Date <- strptime(Date, "%d/%m/%Y %H:%M")
Counts <- c("0","3","10","6","5","4")
Counts <- as.numeric(Counts)
df1 <- data.frame(Date,Counts,stringsAsFactors = FALSE)
g = ggplot(df1, aes(x=Date, y=Counts)) + geom_line(aes(group = 1))

How do I ask R not to plot data as a continuous line when there is a break in time? I normally have a data point every hour, but sometimes there is a break (between 8 am and 10 am). Between these points, I don't want the line to connect. Is this possible in R?


Many thanks for the responses here. My data is now in 10 second intervals, and I wish to do the same piece of analysis using this data.

df <- structure(list(Date = c("11/12/2012", "11/12/2012", "11/12/2012", 
                     "11/12/2012", "11/12/2012", "11/12/2012", "11/12/2012", 
                     "11/12/2012", "11/12/2012", "11/12/2012", "11/12/2012"),
                     Time = c("20:16:00", "20:16:10", "20:16:20", "20:16:30", 
                     "20:16:40", "20:16:50", "20:43:30", "20:43:40", 
                     "20:43:50", "20:44:00", "20:44:10"),
                     Axis1 = c(181L, 14L, 65L, 79L, 137L, 104L, 7L, 0L, 0L, 
                     14L, 0L),
                     Steps = c(13L, 1L, 6L, 3L, 8L, 4L, 1L, 0L, 0L, 0L, 0L)),
                .Names = c("Date", "Time", "Axis1", "Steps"),
                row.names = c(57337L, 57338L, 57339L, 57340L, 57341L, 57342L, 
                57502L, 57503L, 57504L, 57505L, 57506L), class = "data.frame")

I think I understand what the code is trying to do, when it adds the column 'group' to the original dataframe, but my question surrounds how I get R to know the data is now in 10 second intervals? When I apply the first line of code to determine whether the numbers are continuous or whether there is a gap (e.g. idx <- c(1, diff(df$Time)), I get the following error:

Error in r[i1] - r[-length(r):-(length(r) - lag + 1L)] : non-numeric argument to binary operator

After my 'Time' variable, do I need to add 'as.POSIXct' to ensure recognises the time correctly?

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3 Answers 3

up vote 6 down vote accepted

You'll have to set group by setting a common value to those points you'd like to be connected. Here, you can set the first 4 values to say 1 and the last 2 to 2. And keep them as factors. That is,

df1$grp <- factor(rep(1:2, c(4,2)))
g <- ggplot(df1, aes(x=Date, y=Counts)) + geom_line(aes(group = grp)) + 

Edit: Once you have your data.frame loaded, you can use this code to automatically generate the grp column:

idx <- c(1, diff(df$Date))
i2 <- c(1,which(idx != 1), nrow(df)+1)
df1$grp <- rep(1:length(diff(i2)), diff(i2))

Note: It is important to add geom_point() as well because if the discontinuous range happens to be the LAST entry in the data.frame, it won't be plotted (as there are not 2 points to connect the line). In this case, geom_point() will plot it.

As an example, I'll generate a data with more gaps:

# get a test data
df <- data.frame(Date=seq(as.POSIXct("05:00", format="%H:%M"), 
                as.POSIXct("23:00", format="%H:%M"), by="hours"))
df$Counts <- sample(19)
df <- df[-c(4,7,17,18),]

# generate the groups automatically and plot
idx <- c(1, diff(df$Date))
i2 <- c(1,which(idx != 1), nrow(df)+1)
df$grp <- rep(1:length(diff(i2)), diff(i2))
g <- ggplot(df, aes(x=Date, y=Counts)) + geom_line(aes(group = grp)) + 


Edit: For your NEW data (assuming it is df),

df$t <- strptime(paste(df$Date, df$Time), format="%d/%m/%Y %H:%M:%S")

idx <- c(10, diff(df$t))
i2 <- c(1,which(idx != 10), nrow(df)+1)
df$grp <- rep(1:length(diff(i2)), diff(i2))

now plot with aes(x=t, ...).

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(+1) however, in this case, its more like the OP expects missing values in his data, isn't it ? :-) –  juba Feb 11 '13 at 21:35
@KT_1, check my edit to see if it helps. –  Arun Feb 11 '13 at 22:02
@juba, apparently not :). –  Arun Feb 11 '13 at 22:03
@Arun Ok, ok, I'll surrender :) And great edit, by the way. Too bad I can't upvote you twice ! –  juba Feb 11 '13 at 22:06
@KT_1, The last edit at the bottom of the post should do it. It is really that simple. Changing 1 to 10. –  Arun Feb 19 '13 at 15:28

I think there is no way for R or ggplot2 to know if there is a missing data point somewhere, apart from you to specify it with an NA. This way, for example :

df1 <- rbind(df1, list(strptime("07/12/2012 09:00:00", "%d/%m/%Y %H:%M"), NA))
ggplot(df1, aes(x=Date, y=Counts)) + geom_line(aes(group = 1))

enter image description here

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(+1) however, in this case, its more like the OP expects two groups of plots, isn't it? I mean, isn't more appropriate to set group NOT to 1, rather a grouping variable... –  Arun Feb 11 '13 at 21:33
@Arun Well, I don't know, I didn't see it that way, but you may be right... –  juba Feb 11 '13 at 21:37

Juba's answer, to include explicit NA's where you want breaks, is the best approach. Here is an alternate way to introduce those NA's in the right place (without having to figure it out manually).

every.hour <- data.frame(Date=seq(min(Date), max(Date), by="1 hour"))
df2 <- merge(df1, every.hour, all=TRUE)
g %+% df2

enter image description here

You can do something similar with your later df example, after changing the dates and times into a proper format

df$DateTime <- as.POSIXct(strptime(paste(df$Date, df$Time), 
                                   format="%m/%d/%Y %H:%M:%S"))
every.ten.seconds <- data.frame(DateTime=seq(min(df$DateTime), 
                                             max(df$DateTime), by="10 sec"))
df.10 <- merge(df, every.ten.seconds, all=TRUE)
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