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Here is the implementation of frequencies in clojure:

(defn frequencies
  "Returns a map from distinct items in coll to the number of times
  they appear."
  [coll]
  (persistent!
   (reduce (fn [counts x]
         (assoc! counts x (inc (get counts x 0))))
           (transient {}) coll)))

Is assoc! considered a mutation or not?

What is the complexity of assoc! inside frequencies?

Also it seems that counts is accessed twice in each iteration: does it cause a performance penalty?

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3 Answers 3

You could use a tree to store the map from elements to frequencies with log(n) complexity (it can be a binary search tree, an AVL, a red-black tree, etc.). Choose a functional implementation of this tree, i.e. you can't mutate it, but instead assoc counts x freq returns a new data structure, sharing in memomry the common parts with counts. It's a kind of "copy on write". Then the performance of computing all frequencies would be O(n log(n)).

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Thanks! I have modified a little bit the question. Have a look! –  viebel Oct 18 '12 at 6:48

assoc! is mutation of a transient, it is O(log n) amortised I believe. Hence the whole executions of frequencies is O(n log n).

counts is a locally bound variable, so accessing it twice is no problem.

Here is a functional version of freqencies that doesn't use any multiple state:

(defn frequencies-2 [coll]
  (reduce (fn [m v] (assoc m v (inc (get m v 0)))) {} coll))

This functional version is also O(n log n), though it will have somewhat more overhead (a higher constant factor) due to creating and discarding more temporary objects.

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assoc! and assoc are effectively O(1): see my answer below. –  viebel Oct 23 '12 at 3:58
    
@viebel - sure, log32 n in this case will be small enough that you can consider using it in places where you want an O(1) operation for most practical purposes. However it's still not as fast as many genuine O(1) operations (e.g. a HashMap put) and technically the algorithm still has O(log n) complexity. Hence I think it is a little disingenuous to describe it as O(1). –  mikera Oct 23 '12 at 4:16

assoc! mutates a transient data and it has much better performance than assoc. It is not really a violation of the immutable Clojure's model (see http://clojure.org/transients).

  1. persistent! and transient are O(1)
  2. assoc! is O(log32 n) which is effectively O(1) as hash-map has an upper bound on the size of ~2^32 items this leaves a maximum tree depth of 6

Therefore, the complexity of frequencies is linear on the size of coll.

Remark: As noticed by @mikera, the complexity of frequencies would be linear also with assoc but with a higher constant factor.

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