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I'm trying to convert from data.frame to data.table, and need some advice on some logical indexing I am trying to do on a single column. Here is a table I have:

places <- data.table(name=c('Brisbane', 'Sydney', 'Auckland',
                            'New Zealand', 'Australia'),
                     search=c('Brisbane AU Australia',
                              'Sydney AU Australia',
                              'Auckland NZ New Zealand',
                              'NZ New Zealand',
                              'AU Australia'))

#           name                  search
# 1:    Brisbane   Brisbane AU Australia
# 2:      Sydney     Sydney AU Australia
# 3:    Auckland Auckland NZ New Zealand
# 4: New Zealand          NZ New Zealand  
# 5:   Australia            AU Australia

setkey(places, search)

I want to extract rows whose search column matches all words in a list, like so:

words <- c('AU', 'Brisbane')
hits <- places
for (w in words) {
    hits <- hits[search %like% w]
}
# I end up with the 'Brisbane AU Australia' row.

I have one question:

Is there a more data.table-way to do this? It seems to me that storing hits each time seems like a data.frame way to do this.

This is subject to the caveat that I eventually want to use agrep rather than grep/%like%:

words <- c('AU', 'Bisbane') # note the mis-spelling
hits <- places
for (w in words) {
    hits <- hits[agrep(w, search)]
}

I feel like this doesn't quite take advantage of data.table's capabilities and would appreciate thoughts on how to modify the code so it does.


EDIT I want the for loop because places is quite large, and I only want to find rows that match all the words. Hence I only need to search in the results for the last word for the next word (that is, successively refine the results).

With the talk of "binary scan" vs "vector scan" in the data.table introduction (i.e. "bad way" is DT[DT$x == "R" & DT$y == "h"], "good way" is setkey(DT, x, y); DT[J("R", "h")] I just wondered if there was some way I could apply this approach here.

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Not sure if this is the intended use of your for-loop. Why are you overwriting hits? Wouldn't this just result in the last subset? And I don't think there's much to harness from the power of data.table from this problem, at least to my knowledge. –  Arun Apr 13 '13 at 17:59
    
I do want the loop, updated the question with explanation. –  mathematical.coffee Apr 14 '13 at 0:07
    
mathematical.coffee, I see what you mean to do now. But, they are two keys there (for two different columns). Your problem is that the subsetting operation depends on agrep. That means, you can't directly subset by a value of key column, which renders data.table not that useful, iiuc (unless you can subset using partial matches of key column entries, which isn't possible at least as of now). If this is unclear, I'll write an answer in the morning explaining this comment better. –  Arun Apr 14 '13 at 0:20
    
Ahh, this makes sense to me. Write it up when you get the time and I'll accept it. cheers –  mathematical.coffee Apr 14 '13 at 0:25

2 Answers 2

up vote 3 down vote accepted

Mathematical.coffee, as I mentioned under comments, you can not "partial match" by setting a column (or more columns) as key column(s). That is, in the data.table places, you've set the column "search" as the key column. Here, you can fast subset by using data.table's binary search (as opposed to vector scan subsetting) by doing:

places["Brisbane AU Australia"] # binary search when "search" column is key'd
# is faster compared to:

places[search == "Brisbane AU Australia"] # vector scan

But in your case, yo require:

places["AU"] 

to give all rows with has a partial match of "AU" within the key column. And this is not possible (while it's certainly a very interesting feature to have).


If the substring you're searching for by itself does not contain mismatches, then you can try splitting the search strings into separate columns. That is, the column search if split into three columns containing Brisbane, AU and Australia, then you can set the key of the data.table to the columns that contain AU and Brisbane. Then, you can query the way you mention as:

# fast subset, AU and Brisbane are entries of the two key columns
places[J("AU", "Brisbane")]
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3  
+1 Fuzzy matching is on the feature request list. –  Matt Dowle Apr 14 '13 at 16:43
    
cheers (unfortunately my search column will have a variable, theoretically unlimited number of words). I will keep with my current code. –  mathematical.coffee Apr 14 '13 at 23:59

You can vectorize the agrep function to avoid looping.

Note that the result of agrep2 is a list hence the unlist call

words <- c("Bisbane", "NZ")
agrep2 <- Vectorize(agrep, vectorize.args = "pattern")
places[unlist(agrep2(words, search))]

##           name                  search
## 1:    Brisbane   Brisbane AU Australia
## 2:    Auckland Auckland NZ New Zealand
## 3: New Zealand          NZ New Zealand
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