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I have two data frames. One with unevenly spaced daily counts (named y) and another with evenly spaced weekly data (named gIm; two variable denote the date: weekStart and weekEnd). I would like to count all of the daily observations which fall between weekStart and weekEnd for each week, and append this new count vector to my weekly data data frame.

y<-y[order(as.Date(y$date, format="%Y/%m/%d")),] # Sort by week
start<-unique(gIm$weekStart)
end<-unique(gIm$weekEnd)
gIm$count<-NA

for(l in 1:length(gIm[,1])){ # index by weeks in gIm--365 weeks
for(i in 1:nrow(y)){ # index by no. obs in y
gIm$count[i]<-sum(y$count[y$date >= start[l] & y$date <=end[l] ], na.rm=TRUE)
}
}

Here is my unevenly spaced daily data (apologies for the length):

structure(list(date = structure(c(12437, 12478, 12486, 12487, 
12493, 12494, 12495, 12500, 12502, 12506, 12900, 12955, 12962, 
12964, 12977, 12982, 12983, 12985, 12991, 12992, 12993, 13032, 
13033, 13034, 13041, 13046, 13048, 13053, 13055, 13063, 13073, 
13074, 13075, 13082, 13083, 13084, 13094, 13096, 13097, 13101, 
13103, 13104, 13105, 13123, 13124, 13125, 13130, 13133, 13209, 
13214, 13235, 13242, 13244, 13263, 13272, 13277, 13285, 13291, 
13293, 13305, 13306, 13311, 13312, 13314, 13320, 13328, 13339, 
13342, 13346, 13354, 13356, 13357, 13405, 13406, 13410, 13419, 
13420, 13489, 13517, 13518, 13522, 13523, 13525, 13530, 13531, 
13535, 13542, 13543, 13544, 13550, 13551, 13552, 13559, 13560, 
13572, 13573, 13577, 13578, 13579, 13580, 13581, 13585, 13587, 
13592, 13593, 13594, 13600, 13601, 13620, 13621, 13622, 13626, 
13641, 13643, 13647, 13650, 13654, 13657, 13686, 13692, 13704, 
13711, 13717, 13718, 13720, 13726, 14569, 14629, 14630, 14637, 
14642, 14644, 14664, 14672, 14677, 14683, 14713, 14727, 14736, 
14272, 14782, 14789, 14805, 14816, 14825, 14866, 14874, 14880, 
14881, 14930, 14943, 14287, 14314, 14329, 14336, 14250, 14357, 
14362, 14369, 14370), class = "Date"), count = c(1L, 1L, 1L, 
1L, 1L, 1L, 1L, 1L, 2L, 1L, 1L, 2L, 1L, 3L, 1L, 2L, 1L, 1L, 1L, 
1L, 1L, 3L, 1L, 1L, 1L, 1L, 1L, 1L, 1L, 3L, 1L, 1L, 2L, 1L, 1L, 
1L, 1L, 1L, 2L, 2L, 1L, 1L, 1L, 2L, 1L, 2L, 3L, 1L, 3L, 1L, 1L, 
1L, 2L, 1L, 1L, 1L, 1L, 2L, 3L, 1L, 2L, 1L, 1L, 1L, 1L, 3L, 1L, 
1L, 1L, 1L, 3L, 1L, 1L, 2L, 2L, 1L, 2L, 1L, 12L, 2L, 1L, 1L, 
1L, 2L, 2L, 1L, 1L, 1L, 1L, 3L, 1L, 2L, 1L, 2L, 2L, 1L, 1L, 3L, 
1L, 1L, 2L, 1L, 1L, 1L, 2L, 1L, 2L, 3L, 2L, 1L, 3L, 1L, 2L, 2L, 
2L, 1L, 3L, 3L, 1L, 1L, 2L, 1L, 1L, 2L, 1L, 1L, 1L, 1L, 1L, 1L, 
1L, 1L, 1L, 1L, 1L, 1L, 1L, 1L, 1L, 1L, 1L, 1L, 1L, 1L, 1L, 1L, 
1L, 1L, 4L, 2L, 1L, 1L, 1L, 1L, 1L, 3L, 1L, 1L, 1L, 1L)), .Names = c("date", 
"count"), row.names = c(NA, -160L), class = "data.frame")

And here is my weekly spaced data(apologies for the length):

structure(list(immigration = c(62L, 53L, 47L, 47L, 46L, 46L, 
47L, 49L, 49L, 43L, 47L, 41L, 46L, 44L, 41L, 45L, 52L, 49L, 47L, 
41L, 41L, 37L, 37L, 36L, 37L, 36L, 37L, 38L, 36L, 34L, 33L, 34L, 
32L, 35L, 34L, 38L, 40L, 43L, 43L, 42L, 42L, 41L, 42L, 48L, 46L, 
47L, 40L, 48L, 44L, 42L, 30L, 32L, 41L, 37L, 37L, 39L, 39L, 43L, 
39L, 39L, 42L, 41L, 41L, 37L, 39L, 37L, 40L, 40L, 41L, 41L, 41L, 
39L, 38L, 35L, 36L, 33L, 31L, 33L, 32L, 32L, 33L, 32L, 31L, 31L, 
33L, 33L, 29L, 32L, 38L, 37L, 36L, 38L, 39L, 41L, 39L, 38L, 39L, 
38L, 31L, 42L, 39L, 37L, 30L, 27L, 33L, 36L, 33L, 35L, 36L, 36L, 
35L, 34L, 39L, 42L, 41L, 44L, 93L, 83L, 91L, 70L, 81L, 100L, 
64L, 78L, 72L, 54L, 48L, 40L, 36L, 33L, 33L, 34L, 34L, 34L, 31L, 
31L, 33L, 32L, 31L, 33L, 38L, 38L, 41L, 40L, 39L, 41L, 41L, 43L, 
43L, 45L, 35L, 43L, 41L, 39L, 29L, 26L, 32L, 38L, 34L, 39L, 39L, 
39L, 39L, 39L, 39L, 42L, 42L, 43L, 42L, 43L, 44L, 41L, 43L, 52L, 
45L, 63L, 64L, 53L, 60L, 57L, 51L, 65L, 44L, 39L, 41L, 38L, 31L, 
30L, 29L, 30L, 31L, 31L, 33L, 35L, 36L, 36L, 37L, 36L, 36L, 38L, 
38L, 39L, 31L, 40L, 39L, 36L, 29L, 21L, 27L, 35L, 33L, 32L, 34L, 
36L, 35L, 32L, 35L, 33L, 34L, 31L, 31L, 33L, 34L, 34L, 33L, 33L, 
32L, 31L, 29L, 25L, 27L, 24L, 24L, 23L, 22L, 23L, 23L, 23L, 22L, 
22L, 21L, 21L, 24L, 23L, 27L, 28L, 29L, 29L, 29L, 30L, 31L, 31L, 
30L, 30L, 30L, 23L, 29L, 27L, 23L, 16L, 17L, 24L, 26L, 26L, 27L, 
28L, 29L, 27L, 29L, 29L, 29L, 28L, 29L, 29L, 29L, 30L, 30L, 29L, 
29L, 28L, 25L, 25L, 25L, 25L, 24L, 24L, 23L, 23L, 23L, 22L, 23L, 
22L, 22L, 21L, 22L, 22L, 23L, 25L, 25L, 26L, 27L, 26L, 27L, 26L, 
27L, 26L, 28L, 21L, 26L, 25L, 24L, 18L, 17L, 24L, 26L, 25L, 25L, 
25L, 24L, 24L, 25L, 26L, 28L, 27L, 32L, 26L, 27L, 29L, 40L, 87L, 
65L, 49L, 57L, 40L, 33L, 30L, 28L, 28L, 29L, 30L, 29L, 26L, 36L, 
26L, 23L, 21L, 21L, 23L, 22L, 24L, 27L, 25L, 26L, 24L, 25L, 26L, 
27L, 24L, 27L, 19L, 24L, 25L, 21L, 15L, 14L), weekStart = structure(c(12421, 
12428, 12435, 12442, 12449, 12456, 12463, 12470, 12477, 12484, 
12491, 12498, 12505, 12512, 12519, 12526, 12533, 12540, 12547, 
12554, 12561, 12568, 12575, 12582, 12589, 12596, 12603, 12610, 
12617, 12624, 12631, 12638, 12645, 12652, 12659, 12666, 12673, 
12680, 12687, 12694, 12701, 12708, 12715, 12722, 12729, 12736, 
12743, 12750, 12757, 12764, 12771, 12778, 12785, 12792, 12799, 
12806, 12813, 12820, 12827, 12834, 12841, 12848, 12855, 12862, 
12869, 12876, 12883, 12890, 12897, 12904, 12911, 12918, 12925, 
12932, 12939, 12946, 12953, 12960, 12967, 12974, 12981, 12988, 
12995, 13002, 13009, 13016, 13023, 13030, 13037, 13044, 13051, 
13058, 13065, 13072, 13079, 13086, 13093, 13100, 13107, 13114, 
13121, 13128, 13135, 13142, 13149, 13156, 13163, 13170, 13177, 
13184, 13191, 13198, 13205, 13212, 13219, 13226, 13233, 13240, 
13247, 13254, 13261, 13268, 13275, 13282, 13289, 13296, 13303, 
13310, 13317, 13324, 13331, 13338, 13345, 13352, 13359, 13366, 
13373, 13380, 13387, 13394, 13401, 13408, 13415, 13422, 13429, 
13436, 13443, 13450, 13457, 13464, 13471, 13478, 13485, 13492, 
13499, 13506, 13513, 13520, 13527, 13534, 13541, 13548, 13555, 
13562, 13569, 13576, 13583, 13590, 13597, 13604, 13611, 13618, 
13625, 13632, 13639, 13646, 13653, 13660, 13667, 13674, 13681, 
13688, 13695, 13702, 13709, 13716, 13723, 13730, 13737, 13744, 
13751, 13758, 13765, 13772, 13779, 13786, 13793, 13800, 13807, 
13814, 13821, 13828, 13835, 13842, 13849, 13856, 13863, 13870, 
13877, 13884, 13891, 13898, 13905, 13912, 13919, 13926, 13933, 
13940, 13947, 13954, 13961, 13968, 13975, 13982, 13989, 13996, 
14003, 14010, 14017, 14024, 14031, 14038, 14045, 14052, 14059, 
14066, 14073, 14080, 14087, 14094, 14101, 14108, 14115, 14122, 
14129, 14136, 14143, 14150, 14157, 14164, 14171, 14178, 14185, 
14192, 14199, 14206, 14213, 14220, 14227, 14234, 14241, 14248, 
14255, 14262, 14269, 14276, 14283, 14290, 14297, 14304, 14311, 
14318, 14325, 14332, 14339, 14346, 14353, 14360, 14367, 14374, 
14381, 14388, 14395, 14402, 14409, 14416, 14423, 14430, 14437, 
14444, 14451, 14458, 14465, 14472, 14479, 14486, 14493, 14500, 
14507, 14514, 14521, 14528, 14535, 14542, 14549, 14556, 14563, 
14570, 14577, 14584, 14591, 14598, 14605, 14612, 14619, 14626, 
14633, 14640, 14647, 14654, 14661, 14668, 14675, 14682, 14689, 
14696, 14703, 14710, 14717, 14724, 14731, 14738, 14745, 14752, 
14759, 14766, 14773, 14780, 14787, 14794, 14801, 14808, 14815, 
14822, 14829, 14836, 14843, 14850, 14857, 14864, 14871, 14878, 
14885, 14892, 14899, 14906, 14913, 14920, 14927, 14934, 14941, 
14948, 14955, 14962, 14969), class = "Date"), weekEnd = structure(c(12427, 
12434, 12441, 12448, 12455, 12462, 12469, 12476, 12483, 12490, 
12497, 12504, 12511, 12518, 12525, 12532, 12539, 12546, 12553, 
12560, 12567, 12574, 12581, 12588, 12595, 12602, 12609, 12616, 
12623, 12630, 12637, 12644, 12651, 12658, 12665, 12672, 12679, 
12686, 12693, 12700, 12707, 12714, 12721, 12728, 12735, 12742, 
12749, 12756, 12763, 12770, 12777, 12784, 12791, 12798, 12805, 
12812, 12819, 12826, 12833, 12840, 12847, 12854, 12861, 12868, 
12875, 12882, 12889, 12896, 12903, 12910, 12917, 12924, 12931, 
12938, 12945, 12952, 12959, 12966, 12973, 12980, 12987, 12994, 
13001, 13008, 13015, 13022, 13029, 13036, 13043, 13050, 13057, 
13064, 13071, 13078, 13085, 13092, 13099, 13106, 13113, 13120, 
13127, 13134, 13141, 13148, 13155, 13162, 13169, 13176, 13183, 
13190, 13197, 13204, 13211, 13218, 13225, 13232, 13239, 13246, 
13253, 13260, 13267, 13274, 13281, 13288, 13295, 13302, 13309, 
13316, 13323, 13330, 13337, 13344, 13351, 13358, 13365, 13372, 
13379, 13386, 13393, 13400, 13407, 13414, 13421, 13428, 13435, 
13442, 13449, 13456, 13463, 13470, 13477, 13484, 13491, 13498, 
13505, 13512, 13519, 13526, 13533, 13540, 13547, 13554, 13561, 
13568, 13575, 13582, 13589, 13596, 13603, 13610, 13617, 13624, 
13631, 13638, 13645, 13652, 13659, 13666, 13673, 13680, 13687, 
13694, 13701, 13708, 13715, 13722, 13729, 13736, 13743, 13750, 
13757, 13764, 13771, 13778, 13785, 13792, 13799, 13806, 13813, 
13820, 13827, 13834, 13841, 13848, 13855, 13862, 13869, 13876, 
13883, 13890, 13897, 13904, 13911, 13918, 13925, 13932, 13939, 
13946, 13953, 13960, 13967, 13974, 13981, 13988, 13995, 14002, 
14009, 14016, 14023, 14030, 14037, 14044, 14051, 14058, 14065, 
14072, 14079, 14086, 14093, 14100, 14107, 14114, 14121, 14128, 
14135, 14142, 14149, 14156, 14163, 14170, 14177, 14184, 14191, 
14198, 14205, 14212, 14219, 14226, 14233, 14240, 14247, 14254, 
14261, 14268, 14275, 14282, 14289, 14296, 14303, 14310, 14317, 
14324, 14331, 14338, 14345, 14352, 14359, 14366, 14373, 14380, 
14387, 14394, 14401, 14408, 14415, 14422, 14429, 14436, 14443, 
14450, 14457, 14464, 14471, 14478, 14485, 14492, 14499, 14506, 
14513, 14520, 14527, 14534, 14541, 14548, 14555, 14562, 14569, 
14576, 14583, 14590, 14597, 14604, 14611, 14618, 14625, 14632, 
14639, 14646, 14653, 14660, 14667, 14674, 14681, 14688, 14695, 
14702, 14709, 14716, 14723, 14730, 14737, 14744, 14751, 14758, 
14765, 14772, 14779, 14786, 14793, 14800, 14807, 14814, 14821, 
14828, 14835, 14842, 14849, 14856, 14863, 14870, 14877, 14884, 
14891, 14898, 14905, 14912, 14919, 14926, 14933, 14940, 14947, 
14954, 14961, 14968, 14975), class = "Date")), .Names = c("immigration", 
"weekStart", "weekEnd"), class = "data.frame", row.names = c(NA, 
-365L))

Thanks for any help!

share|improve this question
    
What does the numeric vector y$weekStart represent? It does not seem to relate to y$date. –  Matthew Lundberg Mar 18 '13 at 1:56
    
Sorry, you can ignore that vector. It was part of a failed attempt. I am amending the code I provided to exclude it. –  Michael Davidson Mar 18 '13 at 2:00
add comment

3 Answers

up vote 3 down vote accepted

Start of week for each date in y:

y$weekStart <- y$date - as.POSIXlt(y$date)$wday

Aggregate these to combine weeks (omits the now-unneeded date column from the result):

yy <- aggregate(count ~ weekStart, data=y, FUN=sum)

Finally, merge with gIm:

m <- merge(gIm, yy, all=TRUE)


> head(m, 10)
    weekStart immigration    weekEnd count
1  2004-01-04          62 2004-01-10    NA
2  2004-01-11          53 2004-01-17    NA
3  2004-01-18          47 2004-01-24     1
4  2004-01-25          47 2004-01-31    NA
5  2004-02-01          46 2004-02-07    NA
6  2004-02-08          46 2004-02-14    NA
7  2004-02-15          47 2004-02-21    NA
8  2004-02-22          49 2004-02-28    NA
9  2004-02-29          49 2004-03-06     1
10 2004-03-07          43 2004-03-13     2
share|improve this answer
    
Incredible. Thank you! –  Michael Davidson Mar 18 '13 at 2:19
    
+1 very nice and clean! –  Ricardo Saporta Mar 18 '13 at 2:20
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Here is an option using data.table.
You can key your data sets by the appropriate date.
Then we can sequence out each week's dates "on the fly" (in j) and merge them.

library(data.table)
gdt <- data.table(gIm, key="weekStart")
ydt <- data.table(y, key="date")


weeklyCounts <- 
ydt[setkey(gdt[, list("date"=seq(weekStart, weekEnd, length.out=7)), by=weekStart], "date")][
   , list(totalCounts = sum(count, na.rm=TRUE))
   , by="weekStart"]

gdt[ setkey(weeklyCounts, weekStart), totalCounts := totalCounts]

gdt
     immigration  weekStart    weekEnd totalCounts
  1:          62 2004-01-04 2004-01-10           0
  2:          53 2004-01-11 2004-01-17           0
  3:          47 2004-01-18 2004-01-24           1
  4:          47 2004-01-25 2004-01-31           0
  5:          46 2004-02-01 2004-02-07           0
 ---                                              
361:          24 2010-11-28 2010-12-04           1
362:          25 2010-12-05 2010-12-11           0
363:          21 2010-12-12 2010-12-18           0
364:          15 2010-12-19 2010-12-25           0
365:          14 2010-12-26 2011-01-01           0
share|improve this answer
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Here is another option using data.table and rolling joins

weekData <- data.table(gIm, key = 'weekEnd')
dayData <- data.table(y, key = 'date')
# create a copy of the key column
weekData[, we := weekEnd]

# roll so that weekEnd can go back no more than 6 days
# this (the count column is then summed over the original weekEnd values stored in we
we <- weekData[dayData,roll= -6,nomatch = NA][, list(count = sum(count)), keyby =list(weekEnd = we)]

# join with original weekData, then set `NA` values in count to 0, 
# and remove the additional `we` column
weekSum <- (we[weekData])[is.na(count), c('count','we') := list(0L,NULL)]

head(weekSum, 10)
       weekEnd count immigration  weekStart
 1: 2004-01-10     0          62 2004-01-04
 2: 2004-01-17     0          53 2004-01-11
 3: 2004-01-24     1          47 2004-01-18
 4: 2004-01-31     0          47 2004-01-25
 5: 2004-02-07     0          46 2004-02-01
 6: 2004-02-14     0          46 2004-02-08
 7: 2004-02-21     0          47 2004-02-15
 8: 2004-02-28     0          49 2004-02-22
 9: 2004-03-06     1          49 2004-02-29
10: 2004-03-13     2          43 2004-03-07

The ability to roll by a certain number of days is a feature of data.table 1.8.8. From the NEWS

  • In addition to TRUE/FALSE, 'roll' may now be a positive number (roll forwards/LOCF) or negative number (roll backwards/NOCB). A finite number limits the distance a value is rolled (limited staleness). roll=TRUE and roll=+Inf are equivalent.

Edit -- a (perhaps) more straightforward version

 weekData <- data.table(gIm, key = 'weekStart')
 weekly <- merge(weekData,
              weekData[dayData, roll= -6][,list(count = sum(count)), by = weekStart],
              all.x = TRUE, by = 'weekStart')

 head(weekly, n = 10)



     weekStart immigration    weekEnd count
 1: 2004-01-04          62 2004-01-10    NA
 2: 2004-01-11          53 2004-01-17    NA
 3: 2004-01-18          47 2004-01-24     1
 4: 2004-01-25          47 2004-01-31    NA
 5: 2004-02-01          46 2004-02-07    NA
 6: 2004-02-08          46 2004-02-14    NA
 7: 2004-02-15          47 2004-02-21    NA
 8: 2004-02-22          49 2004-02-28    NA
 9: 2004-02-29          49 2004-03-06     1
10: 2004-03-07          43 2004-03-13     2
share|improve this answer
    
The base solution is easier to understand (well, for me anyway), but I bet this is a whole lot faster. –  Matthew Lundberg Mar 18 '13 at 3:52
    
@MatthewLundberg, perhaps. I find rolling joins slightly mind bending sometimes, but here they are really useful and (i think) straightforward. –  mnel Mar 18 '13 at 3:56
1  
I'm not sure what is going on, but it seems to be incorrect at row 10: 10: 43 2004-03-07 2004-03-13 1. Should have count 2. –  Matthew Lundberg Mar 18 '13 at 4:01
    
@Matthew -- I see what you mean. Will delete and reconsider –  mnel Mar 18 '13 at 4:15
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