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I have this quite complicate data in a data frame called ulyDataLefs60_12:

  Year Day Hour Min  Sec. E1.S1 E1.S2 E1.S3 E1.S4 E1.S5 E1.S6 E1.S7 E1.S8 E2.S1 E2.S2 E2.S3 E2.S4
1 2000 122    0   1 38.01  3.31 0.662 0.662  2.65  1.32 0.000 3.310  1.32 1.980 1.980 0.662 0.000
2 2000 122    0   1 50.10  1.98 3.310 1.980  1.98  1.98 1.320 4.630  1.32 1.320 0.662 0.000 3.310
3 2000 122    0   2  2.19  1.98 1.320 3.970  1.98  1.32 0.662 0.662  3.97 1.320 0.662 1.320 0.662
4 2000 122    0   2 14.28  2.65 1.320 2.650  3.31  2.65 1.320 3.970  2.65 2.650 0.000 0.662 2.650
5 2000 122    0   2 26.38  3.97 6.620 0.662  3.31  3.31 4.630 5.290  1.98 0.000 0.000 1.980 0.662
6 2000 122    0   2 38.47  2.65 0.662 3.310  1.98  1.32 1.980 1.980  2.65 0.662 1.320 1.980 1.320
  E2.S5 E2.S6 E2.S7 E2.S8 E3.S1 E3.S2 E3.S3 E3.S4 E3.S5 E3.S6 E3.S7 E3.S8 E4.S1 E4.S2 E4.S3 E4.S4
1 1.320  1.32  2.65 2.650 0.662 0.000 1.320 2.650 1.320 0.000 1.320 1.320 0.000 0.000 0.662 0.662
2 0.000  0.00  1.98 0.662 0.000 0.662 0.000 0.662 1.980 1.980 0.662 1.320 0.000 0.000 0.000 0.662
3 0.662  1.98  2.65 1.980 0.000 0.662 0.662 1.320 0.662 0.000 1.320 3.310 0.662 0.000 1.980 0.662
4 0.662  1.32  1.32 0.662 0.000 0.662 0.662 0.662 0.662 0.662 0.662 0.000 0.000 0.662 0.000 0.000
5 0.000  1.32  1.32 0.662 0.662 0.000 0.000 0.662 0.000 0.662 1.320 0.662 0.000 0.000 0.000 0.662
6 1.320  1.32  1.32 0.000 1.320 0.000 0.000 0.662 1.320 0.000 0.662 0.662 0.662 1.320 0.000 0.000
  E4.S5 E4.S6 E4.S7 E4.S8 FP5.S1 FP5.S2 FP5.S3 FP5.S4 FP5.S5 FP5.S6 FP5.S7 FP5.S8 FP6.S1 FP6.S2
1 0.000 0.662 0.662 0.000  0.331      0  0.662  0.000  0.662      0  0.000  0.331      0  0.331
2 0.000 0.000 0.662 0.662  0.331      0  0.662  0.000  0.662      0  0.000  0.331      0  0.331
3 0.662 0.000 0.662 1.320  0.000      0  0.662  0.000  0.331      0  0.000  0.000      0  0.000
4 0.662 0.662 0.000 0.662  0.000      0  0.662  0.000  0.331      0  0.000  0.000      0  0.000
5 0.000 0.000 0.662 0.000  0.331      0  0.000  0.331  0.331      0  0.331  0.000      0  0.000
6 0.000 0.000 0.662 0.662  0.331      0  0.000  0.331  0.331      0  0.331  0.000      0  0.000
  FP6.S3 FP6.S4 FP6.S5 FP6.S6 FP6.S7 FP6.S8 FP7.S1 FP7.S2 FP7.S3 FP7.S4 FP7.S5 FP7.S6 FP7.S7 FP7.S8
1  0.331  0.000  0.000  0.000      0  0.000      0  0.331  0.331  0.662      0  0.000  0.331  0.000
2  0.331  0.000  0.000  0.000      0  0.000      0  0.331  0.331  0.662      0  0.000  0.331  0.000
3  0.662  0.000  0.662  0.000      0  0.331      0  0.000  0.000  0.331      0  0.000  0.000  0.000
4  0.662  0.000  0.662  0.000      0  0.331      0  0.000  0.000  0.331      0  0.000  0.000  0.000
5  0.000  0.662  0.000  0.992      0  0.000      0  0.000  0.000  0.000      0  0.331  0.000  0.331
6  0.000  0.662  0.000  0.992      0  0.000      0  0.000  0.000  0.000      0  0.331  0.000  0.331
  PA.LEFS60S1 PA.LEFS60S2 PA.LEFS60S3 PA.LEFS60S4 PA.LEFS60S5 PA.LEFS60S6 PA.LEFS60S7 PA.LEFS60S8
1        64.2        52.0        70.9       105.0         144         170         134        96.2
2        62.6        49.5        68.8       104.0         142         168         134        95.4
3        62.7        47.7        66.2       101.0         140         167         135        96.5
4        62.4        46.3        64.4        99.3         138         166         135        96.7
5        59.9        43.7        63.2        98.8         138         164         133        94.8
6        62.3        45.7        63.7        98.7         137         166         136        96.9
    BX   BY   BZ Bmag....nT.  X            datetime
1 2.64 4.98 2.25        6.07 NA 2000-05-01 00:01:38
2 2.67 5.16 2.03        6.15 NA 2000-05-01 00:01:50
3 2.52 5.35 1.88        6.21 NA 2000-05-01 00:02:02
4 2.43 5.45 1.74        6.22 NA 2000-05-01 00:02:14
5 2.53 5.46 1.46        6.19 NA 2000-05-01 00:02:26
6 2.29 5.26 1.61        5.96 NA 2000-05-01 00:02:38

dput(head(ulyDataLefs60_12))
structure(list(Year = c(2000L, 2000L, 2000L, 2000L, 2000L, 2000L
), Day = c(122L, 122L, 122L, 122L, 122L, 122L), Hour = c(0L, 
0L, 0L, 0L, 0L, 0L), Min = c(1L, 1L, 2L, 2L, 2L, 2L), Sec. = c(38.01, 
50.1, 2.19, 14.28, 26.38, 38.47), E1.S1 = c(3.31, 1.98, 1.98, 
2.65, 3.97, 2.65), E1.S2 = c(0.662, 3.31, 1.32, 1.32, 6.62, 0.662
), E1.S3 = c(0.662, 1.98, 3.97, 2.65, 0.662, 3.31), E1.S4 = c(2.65, 
1.98, 1.98, 3.31, 3.31, 1.98), E1.S5 = c(1.32, 1.98, 1.32, 2.65, 
3.31, 1.32), E1.S6 = c(0, 1.32, 0.662, 1.32, 4.63, 1.98), E1.S7 = c(3.31, 
4.63, 0.662, 3.97, 5.29, 1.98), E1.S8 = c(1.32, 1.32, 3.97, 2.65, 
1.98, 2.65), E2.S1 = c(1.98, 1.32, 1.32, 2.65, 0, 0.662), E2.S2 = c(1.98, 
0.662, 0.662, 0, 0, 1.32), E2.S3 = c(0.662, 0, 1.32, 0.662, 1.98, 
1.98), E2.S4 = c(0, 3.31, 0.662, 2.65, 0.662, 1.32), E2.S5 = c(1.32, 
0, 0.662, 0.662, 0, 1.32), E2.S6 = c(1.32, 0, 1.98, 1.32, 1.32, 
1.32), E2.S7 = c(2.65, 1.98, 2.65, 1.32, 1.32, 1.32), E2.S8 = c(2.65, 
0.662, 1.98, 0.662, 0.662, 0), E3.S1 = c(0.662, 0, 0, 0, 0.662, 
1.32), E3.S2 = c(0, 0.662, 0.662, 0.662, 0, 0), E3.S3 = c(1.32, 
0, 0.662, 0.662, 0, 0), E3.S4 = c(2.65, 0.662, 1.32, 0.662, 0.662, 
0.662), E3.S5 = c(1.32, 1.98, 0.662, 0.662, 0, 1.32), E3.S6 = c(0, 
1.98, 0, 0.662, 0.662, 0), E3.S7 = c(1.32, 0.662, 1.32, 0.662, 
1.32, 0.662), E3.S8 = c(1.32, 1.32, 3.31, 0, 0.662, 0.662), E4.S1 = c(0, 
0, 0.662, 0, 0, 0.662), E4.S2 = c(0, 0, 0, 0.662, 0, 1.32), E4.S3 = c(0.662, 
0, 1.98, 0, 0, 0), E4.S4 = c(0.662, 0.662, 0.662, 0, 0.662, 0
), E4.S5 = c(0, 0, 0.662, 0.662, 0, 0), E4.S6 = c(0.662, 0, 0, 
0.662, 0, 0), E4.S7 = c(0.662, 0.662, 0.662, 0, 0.662, 0.662), 
    E4.S8 = c(0, 0.662, 1.32, 0.662, 0, 0.662), FP5.S1 = c(0.331, 
    0.331, 0, 0, 0.331, 0.331), FP5.S2 = c(0, 0, 0, 0, 0, 0), 
    FP5.S3 = c(0.662, 0.662, 0.662, 0.662, 0, 0), FP5.S4 = c(0, 
    0, 0, 0, 0.331, 0.331), FP5.S5 = c(0.662, 0.662, 0.331, 0.331, 
    0.331, 0.331), FP5.S6 = c(0, 0, 0, 0, 0, 0), FP5.S7 = c(0, 
    0, 0, 0, 0.331, 0.331), FP5.S8 = c(0.331, 0.331, 0, 0, 0, 
    0), FP6.S1 = c(0, 0, 0, 0, 0, 0), FP6.S2 = c(0.331, 0.331, 
    0, 0, 0, 0), FP6.S3 = c(0.331, 0.331, 0.662, 0.662, 0, 0), 
    FP6.S4 = c(0, 0, 0, 0, 0.662, 0.662), FP6.S5 = c(0, 0, 0.662, 
    0.662, 0, 0), FP6.S6 = c(0, 0, 0, 0, 0.992, 0.992), FP6.S7 = c(0, 
    0, 0, 0, 0, 0), FP6.S8 = c(0, 0, 0.331, 0.331, 0, 0), FP7.S1 = c(0, 
    0, 0, 0, 0, 0), FP7.S2 = c(0.331, 0.331, 0, 0, 0, 0), FP7.S3 = c(0.331, 
    0.331, 0, 0, 0, 0), FP7.S4 = c(0.662, 0.662, 0.331, 0.331, 
    0, 0), FP7.S5 = c(0, 0, 0, 0, 0, 0), FP7.S6 = c(0, 0, 0, 
    0, 0.331, 0.331), FP7.S7 = c(0.331, 0.331, 0, 0, 0, 0), FP7.S8 = c(0, 
    0, 0, 0, 0.331, 0.331), PA.LEFS60S1 = c(64.2, 62.6, 62.7, 
    62.4, 59.9, 62.3), PA.LEFS60S2 = c(52, 49.5, 47.7, 46.3, 
    43.7, 45.7), PA.LEFS60S3 = c(70.9, 68.8, 66.2, 64.4, 63.2, 
    63.7), PA.LEFS60S4 = c(105, 104, 101, 99.3, 98.8, 98.7), 
    PA.LEFS60S5 = c(144, 142, 140, 138, 138, 137), PA.LEFS60S6 = c(170, 
    168, 167, 166, 164, 166), PA.LEFS60S7 = c(134, 134, 135, 
    135, 133, 136), PA.LEFS60S8 = c(96.2, 95.4, 96.5, 96.7, 94.8, 
    96.9), BX = c(2.64, 2.67, 2.52, 2.43, 2.53, 2.29), BY = c(4.98, 
    5.16, 5.35, 5.45, 5.46, 5.26), BZ = c(2.25, 2.03, 1.88, 1.74, 
    1.46, 1.61), Bmag....nT. = c(6.07, 6.15, 6.21, 6.22, 6.19, 
    5.96), X = c(NA, NA, NA, NA, NA, NA), datetime = structure(list(
        sec = c(38, 50, 2, 14, 26, 38), min = c(1L, 1L, 2L, 2L, 
        2L, 2L), hour = c(0L, 0L, 0L, 0L, 0L, 0L), mday = c(1L, 
        1L, 1L, 1L, 1L, 1L), mon = c(4L, 4L, 4L, 4L, 4L, 4L), 
        year = c(100L, 100L, 100L, 100L, 100L, 100L), wday = c(1L, 
        1L, 1L, 1L, 1L, 1L), yday = c(121L, 121L, 121L, 121L, 
        121L, 121L), isdst = c(1L, 1L, 1L, 1L, 1L, 1L)), .Names = c("sec", 
    "min", "hour", "mday", "mon", "year", "wday", "yday", "isdst"
    ), class = c("POSIXlt", "POSIXt"))), .Names = c("Year", "Day", 
"Hour", "Min", "Sec.", "E1.S1", "E1.S2", "E1.S3", "E1.S4", "E1.S5", 
"E1.S6", "E1.S7", "E1.S8", "E2.S1", "E2.S2", "E2.S3", "E2.S4", 
"E2.S5", "E2.S6", "E2.S7", "E2.S8", "E3.S1", "E3.S2", "E3.S3", 
"E3.S4", "E3.S5", "E3.S6", "E3.S7", "E3.S8", "E4.S1", "E4.S2", 
"E4.S3", "E4.S4", "E4.S5", "E4.S6", "E4.S7", "E4.S8", "FP5.S1", 
"FP5.S2", "FP5.S3", "FP5.S4", "FP5.S5", "FP5.S6", "FP5.S7", "FP5.S8", 
"FP6.S1", "FP6.S2", "FP6.S3", "FP6.S4", "FP6.S5", "FP6.S6", "FP6.S7", 
"FP6.S8", "FP7.S1", "FP7.S2", "FP7.S3", "FP7.S4", "FP7.S5", "FP7.S6", 
"FP7.S7", "FP7.S8", "PA.LEFS60S1", "PA.LEFS60S2", "PA.LEFS60S3", 
"PA.LEFS60S4", "PA.LEFS60S5", "PA.LEFS60S6", "PA.LEFS60S7", "PA.LEFS60S8", 
"BX", "BY", "BZ", "Bmag....nT.", "X", "datetime"), row.names = c(NA, 
6L), class = "data.frame")

And what I want, is to get the average and median of a certain number of rows. Lets say, I want a new data frame, that instead of all these values, has the average or median of every 5 rows in all columns (or at least in all columns starting at the E1.S1 column.

I started by looking at the example: Calculate means of rows and it did get me so far as being able to get the average of a N number of rows for a single column of my dataframe.

ulyDataLefs60_12_avg = colSums(matrix(ulyDataLefs60_12$E1.S1, nrow=5))

The problem is that the R function I wanted to use, colSums, doesn't work with some fields, namely the datetime field (for obvious reasons), so I can't apply it across all the columns and get a nice averaged dataframe.

ulyDataLefs60_12_avg = colSums(matrix(ulyDataLefs60_12, nrow=5))
Error in colSums(matrix(ulyDataLefs60_12, nrow = 5)) : 
  'x' must be numeric

I'm glad to have the datetime field at the beginning of the every 5 rows I use to get the average and the median (better if I got the datetime at the center of the 5 values interval tough), but so far I didn't come with an answer that does the 2 things at the same time.

Perhaps it's a really easy thing to do, but it's cracking my head.

share|improve this question
    
@agstudy Cause like the title and the problem clearly states, I need a new dataframe with 1/5 of the values of the original with the average by every 5 rows, not for all the rows –  jbssm Mar 13 '13 at 15:52

2 Answers 2

up vote 2 down vote accepted

For this data:

> dput(df)
df <- structure(list(Year = c(2000L, 2000L, 2000L, 2000L, 2000L, 2000L
), Day = c(122L, 122L, 122L, 122L, 122L, 122L), Hour = c(0L, 
0L, 0L, 0L, 0L, 0L), Min = c(1L, 1L, 2L, 2L, 2L, 2L), Sec. = c(38.01, 
50.1, 2.19, 14.28, 26.38, 38.47), E1.S1 = c(3.31, 1.98, 1.98, 
2.65, 3.97, 2.65), E1.S2 = c(0.662, 3.31, 1.32, 1.32, 6.62, 0.662
), E1.S3 = c(0.662, 1.98, 3.97, 2.65, 0.662, 3.31), E1.S4 = c(2.65, 
1.98, 1.98, 3.31, 3.31, 1.98), E1.S5 = c(1.32, 1.98, 1.32, 2.65, 
3.31, 1.32), E1.S6 = c(0, 1.32, 0.662, 1.32, 4.63, 1.98), E1.S7 = c(3.31, 
4.63, 0.662, 3.97, 5.29, 1.98), E1.S8 = c(1.32, 1.32, 3.97, 2.65, 
1.98, 2.65), E2.S1 = c(1.98, 1.32, 1.32, 2.65, 0, 0.662), E2.S2 = c(1.98, 
0.662, 0.662, 0, 0, 1.32), E2.S3 = c(0.662, 0, 1.32, 0.662, 1.98, 
1.98), E2.S4 = c(0, 3.31, 0.662, 2.65, 0.662, 1.32)), .Names = c("Year", 
"Day", "Hour", "Min", "Sec.", "E1.S1", "E1.S2", "E1.S3", "E1.S4", 
"E1.S5", "E1.S6", "E1.S7", "E1.S8", "E2.S1", "E2.S2", "E2.S3", 
"E2.S4"), class = "data.frame", row.names = c("1", "2", "3", 
"4", "5", "6"))

This works:

lapply(split(df, ceiling(seq_len(nrow(df)) / 5)), colMeans)
# $`1`
#      Year       Day      Hour       Min      Sec.     E1.S1     E1.S2     E1.S3     E1.S4     E1.S5     E1.S6     E1.S7 
# 2000.0000  122.0000    0.0000    1.6000   26.1920    2.7780    2.6464    1.9848    2.6460    2.1160    1.5864    3.5724 
#     E1.S8     E2.S1     E2.S2     E2.S3     E2.S4 
#    2.2480    1.4540    0.6608    0.9248    1.4568 
# 
# $`2`
#     Year      Day     Hour      Min     Sec.    E1.S1    E1.S2    E1.S3    E1.S4    E1.S5    E1.S6    E1.S7    E1.S8 
# 2000.000  122.000    0.000    2.000   38.470    2.650    0.662    3.310    1.980    1.320    1.980    1.980    2.650 
#    E2.S1    E2.S2    E2.S3    E2.S4 
#    0.662    1.320    1.980    1.320 
# 

Then you can just bind them:

do.call(rbind, lapply(split(df, ceiling(seq_len(nrow(df)) / 5)), colMeans))
#   Year Day Hour Min   Sec. E1.S1  E1.S2  E1.S3 E1.S4 E1.S5  E1.S6  E1.S7 E1.S8 E2.S1  E2.S2  E2.S3  E2.S4
# 1 2000 122    0 1.6 26.192 2.778 2.6464 1.9848 2.646 2.116 1.5864 3.5724 2.248 1.454 0.6608 0.9248 1.4568
# 2 2000 122    0 2.0 38.470 2.650 0.6620 3.3100 1.980 1.320 1.9800 1.9800 2.650 0.662 1.3200 1.9800 1.3200

Note: It also helps to check if all the columns you want to take mean of are either integers or numeric by doing:

> sapply(df, class)
#      Year       Day      Hour       Min      Sec.     E1.S1     E1.S2     E1.S3     E1.S4     E1.S5     E1.S6     E1.S7 
# "integer" "integer" "integer" "integer" "numeric" "numeric" "numeric" "numeric" "numeric" "numeric" "numeric" "numeric" 
#     E1.S8     E2.S1     E2.S2     E2.S3     E2.S4 
# "numeric" "numeric" "numeric" "numeric" "numeric" 

Edit: Following OP's comment:

idx <- ceiling(seq_len(nrow(dd)) / 5)
# do colMeans on all columns except last one.
res <- lapply(split(dd[-(ncol(dd))], idx), colMeans, na.rm = TRUE)
# assign first value of "datetime" in each 5-er group as names to list
names(res) <- dd$datetime[seq(1, nrow(df), by=5)]
# bind them to give a matrix
res <- do.call(rbind, res)

Alternatively, if you want a data.frame and datetime as a column:

idx <- ceiling(seq_len(nrow(dd)) / 5)
res <- as.data.frame(do.call(rbind, lapply(split(dd[-(ncol(dd))], idx), 
                 colMeans, na.rm = TRUE)))
res$datetime <- dd$datetime[seq(1, nrow(dd), by=5)]
share|improve this answer
    
Hi. I get the error: lapply(split(ulyDataLefs60_12, ceiling(seq_len(nrow(ulyDataLefs60_12)) / 5)), colMeans) Error in as.matrix.data.frame(x) : dims [product 375] do not match the length of object [379] –  jbssm Mar 13 '13 at 15:34
    
I think it has something to do with the nRows of the frame not being a multiple of 5 perhaps? –  jbssm Mar 13 '13 at 15:35
    
Yes, it might be. But I thought I gave the factors right.. Let me check again. In the mean while, what does sapply(ulyDataLefs60_12, class) give you?? (it should be numeric or integer as shown above) –  Arun Mar 13 '13 at 15:37
    
Did you test on this data you've pasted? If so, can you provide a dput output? It'd be nice to test the data with the error... –  Arun Mar 13 '13 at 15:38
1  
And it works. At least the 2nd option you give. In the 1st one I get 2 good fields, but then all the index fields have NA as a value. Also, the 2nd version is much faster for me. Now I'll try to figure out how it works, but really, thank you very much for taking the time to solve the problem. –  jbssm Mar 13 '13 at 16:25

You can see your data as a time series. Then using xts package you can use period.apply function

dat.xts <- xts(dat[,-ncol(dat)],dat$datetime)
## here I take every minutes because I don't have enouhgt data
## I think in your case 5 rows is equal to 5*12 mintues = 1 hour
pts <- endpoints(dat.xts,on='mins')
period.apply(dat.xts,pts,mean)

                   Year Day Hour Min   Sec.  E1.S1  E1.S2 E1.S3 E1.S4 E1.S5 E1.S6  E1.S7  E1.S8 E2.S1  E2.S2  E2.S3  E2.S4 E2.S5 E2.S6
2000-05-01 00:01:50 2000 122    0   1 44.055 2.6450 1.9860 1.321 2.315  1.65 0.660 3.9700 1.3200 1.650 1.3210 0.3310 1.6550 0.660 0.660
2000-05-01 00:02:38 2000 122    0   2 20.330 2.8125 2.4805 2.648 2.645  2.15 2.148 2.9755 2.8125 1.158 0.4955 1.4855 1.3235 0.661 1.485

EDIT show how to transform xts object to a data.frame:

To plot your data with ggplot2 you need to coerce you xts object to a data.frame. For example you can do this:

  dat <- data.frame(date=index(dat.xts),coredata(dat.xts))

Then to plot E1.S1 vs date :

library(ggplot2)
ggplot(data=dat)+ 
 geom_line(aes(x=date,y=E1.S1))
share|improve this answer
    
It's not every 5th row.. but every 5 rows.. –  Arun Mar 13 '13 at 16:01
    
@Arun thanks.I change completely the answer. –  agstudy Mar 13 '13 at 16:22
    
Thank you. This xts seems very intuitive to work with timestamps. How do I use it to plot tough? I mean, in the original data, and from Arun answer, I could do: qplot(datetime, E1.S1, data=ulyDataLefs60_12, geom="line") But what do I use here since there is no field named datetime? –  jbssm Mar 13 '13 at 16:29
    
I found the answer (trial/error method): qplot(index(ddxts), E1.S1, data=ddxts, geom="line") –  jbssm Mar 13 '13 at 16:43
    
@jbssm you can see my edit. –  agstudy Mar 13 '13 at 19:00

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