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I have:

(def data [[1 3 4 7 9] [7 6 3 2 7] [1 9 8 6 2]])

I want to average these (element-wise to get):

[3 6 5 5 6]

Like you would in MATLAB:

mean([1 3 4 7 9; 7 6 3 2 7; 1 9 8 6 2])

With Incanter I can do:

(map #(/ % (count m)) (apply plus data))

If data is rather large (and I have lots of them) is there a better way to do this?
Does it help to calculate the (count m) beforehand?
Does it help to defn the #(/ % (count m)) beforehand?

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3 Answers 3

up vote 3 down vote accepted

Without knowing how to use any of incanter, here's how you could do this "from scratch".

(let [data [[1 3 4 7 9] [7 6 3 2 7] [1 9 8 6 2]]
      num (count data)]
  (apply map (fn [& items]
               (/ (apply + items) num))
         data))

;=> (3 6 5 5 6)
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Thanks @amalloy it works, but I don't understand how (apply map (fn ... would work, shouldn't it be (apply (map (fn ... ? –  Ali Nov 20 '11 at 23:54
1  
@Ali No, you're applying the map function to a sequence of arguments: an anonymous function we construct, and then each element of the data sequence. map is willing to accept "extra" arguments, by passing them along to the function. For example, (map + [1 2] [10 20]) ~= [(+ 1 10) (+ 2 20)]. –  amalloy Nov 21 '11 at 0:00

As of 2013, my recommendation would be to just use core.matrix.stats to import all of this functionality:

(mean [[1 3 4 7 9] [7 6 3 2 7] [1 9 8 6 2]])
=> [3.0 6.0 5.0 5.0 6.0]

core.matrix.stats builds on the core.matrix API, so it will also work on other more optimised implementations of vectors and matrices - this is likely to be a better option if you are doing a lot of heavy matrix processing.

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Here's a pretty clean and simple way to do it:

(def data [[1 3 4 7 9] [7 6 3 2 7] [1 9 8 6 2]])

(defn average [coll] 
  (/ (reduce + coll) (count coll)))

(defn transpose [coll]
   (apply map vector coll))

(map average (transpose data))
=> (3 6 5 5 6)
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Asked myself if (apply + coll) would be more efficient then (reduce + coll). Already answered at stackoverflow.com/questions/3153396/clojure-reduce-vs-apply –  NielsK Nov 21 '11 at 15:46
    
Reduce is very slightly faster (about 5-10% in informal tests I've just done). But it's down to personal preference really - I tend to think in reduction operations more readily than I do in parameter juggling. –  mikera Nov 22 '11 at 1:22

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