# Plotting data for overlapping time periods

I have a data frame of policies like the one below

``````df<-data.frame(start=as.Date(c("2012-1-1","2012-3-1","2012-3-15")),end=as.Date(c("2012-12-31","2012-8-31","2012-12-31")),
df
1 2012-01-01 2012-12-31     500
2 2012-03-01 2012-08-31     200
3 2012-03-15 2012-12-31     300
``````

I would like to plot the total earned premium on a daily basis starting on 2012-01-01 and 2012-03-15 using ggplot.

To understand earned premium, consider the first day of 2012. Only one policy was in effect. This policy had a total premium of 500 and it spanned 365 days, so the premium earned on 1/1/12 would be 500/365. Similarly, the premium earned on day 3/1/12 would be 500/365+200/183 since policies 1 and 2 were in effect.

So, how do I graph earned premium on daily basis for all of 2012?

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are you looking for daily sums of cumulative sum? –  Gary Weissman Apr 18 '14 at 1:55

``````    df\$numdays <- as.numeric(df\$end - df\$start)

days_2012 <- seq.Date(from=as.Date('2012-01-01'), to=as.Date('2012-12-31'),by=1)

check_range <- function(day_i) apply(df, 1, function(x) ifelse(day_i >= x['start'] && day_i <= x['end'], x['daily_premium'], 0))

day_tally <- sapply(days_2012, check_range)

day_sums <- colSums(apply(day_tally,2,as.numeric))

qplot(days_2012,day_sums)
``````
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This works but it's slow for a large dataset. Waiting to see if anyone can give a quicker implementation. –  Ben Apr 21 '14 at 15:23
Which part is slow? And how big is your data set? –  Gary Weissman Apr 21 '14 at 16:56
sapply(days_2012, check_range) and my dataset has about 1000 rows –  Ben Apr 21 '14 at 18:58
a 1000 row sample takes 74s on my machine, 36s if I switch to `mclapply`. how fast do you need it to be? –  Gary Weissman Apr 21 '14 at 21:19
That'll be quick enough –  Ben Apr 21 '14 at 21:57