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I have completed an origin-destination cost matrix (23 origins, ~600,000 destinations) for traveling through a street network in ArcGIS and disaggregated the resulting matrix into DBF tables by store ID using a Python script. I have loaded each DBF table into an R session as follows:

# Import OD cost matrix results for each store
origins <- read.dbf('ODM_origins.dbf')
store_17318 <- read.dbf('table_17318.dbf')
store_17358 <- read.dbf('table_17358.dbf')
store_17601 <- read.dbf('table_17601.dbf')
store_17771 <- read.dbf('table_17771.dbf')
store_18068 <- read.dbf('table_18068.dbf')
store_18261 <- read.dbf('table_18261.dbf')
store_18289 <- read.dbf('table_18289.dbf')
store_18329 <- read.dbf('table_18329.dbf')
store_18393 <- read.dbf('table_18393.dbf')
store_18503 <- read.dbf('table_18503.dbf')
store_18522 <- read.dbf('table_18522.dbf')
store_19325 <- read.dbf('table_19325.dbf')
store_19454 <- read.dbf('table_19454.dbf')
store_20068 <- read.dbf('table_20068.dbf')
store_20238 <- read.dbf('table_20238.dbf')
store_20292 <- read.dbf('table_20292.dbf')
store_20435 <- read.dbf('table_20435.dbf')
store_20465 <- read.dbf('table_20465.dbf')
store_20999 <- read.dbf('table_20999.dbf')
store_22686 <- read.dbf('table_22686.dbf')
store_22715 <- read.dbf('table_22715.dbf')
store_24445 <- read.dbf('table_24445.dbf')
store_24446 <- read.dbf('table_24446.dbf')
ID <- as.vector(origins$Name) # Create list of store IDs
object_list <- list(ls(pat="store_")) # Create list of DBF object names

Here's the layout of every data frame:

> head(store_17318)
  OID_          NAME ORIGINID DESTINATIO DESTINAT_1 TOTAL_TRAV SHAPE_LENG
1    0 17318 - 17318       25       5367          1  0.2056914   202.2393
2    0 17318 - 17318       25       5368          2  0.2056914   202.2393
3    0 17318 - 17318       25       5381          5  0.2432538   224.3947
4    0 17318 - 17318       25       5382          6  0.2432538   224.3947
5    0 17318 - 17318       25       5362          7  0.3670772   294.8987
6    0 17318 - 17318       25       5363          8  0.3670772   294.8987

For every data frame, I would like to find the summary statistics (mean, SD) for travel time by store ID and write it to a new data frame. This seems like a standard split, apply, combine workflow but it involves splitting multiple objects. Any help with this problem would be appreciated.

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So there's one file per store? And you want, for example, mean(store_17318$TOTAL_TRAV) for each of those 23 objects? Each one is independent and its just a simple summary (mean/variance) of one column? –  Spacedman Dec 26 '13 at 21:35
1  
There are lots of ways to do this sort of thing; the fastest is generally the data.table package. For a summary and some benchmarks see here –  ricardo Dec 26 '13 at 21:40

1 Answer 1

up vote 2 down vote accepted

You can use sapply:

res <- sapply(ls(pattern = "store_"), function(x) {
  tmp <- get(x)$TOTAL_TRAV
  c(mean = mean(tmp), SD = sd(tmp))
})

This will return a matrix. Columns represent store IDs. The two rows contain mean and standard deviation.

You can transform this matrix to a (transposed) data frame with

as.data.frame(t(res))

Here, the two columns contain mean and standard deviation. The row names represent store IDs.

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Thanks, I'm a beginner with R and I didn't think of enclosing the ls(pat) in an sapply. Thanks again for the help! –  user2109092 Dec 26 '13 at 23:28

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