Efficiently count the number of occurrences of unique subarrays in NumPy?

こ雲淡風輕ζ 提交于 2019-11-29 10:02:31

The question states that the input array is of shape (128, 36, 8) and we are interested in finding unique subarrays of length 8 in the last dimension. So, I am assuming that the uniqueness is along the first two dimensions being merged together. Let us assume A as the input 3D array.

Get the number of unique subarrays

# Reshape the 3D array to a 2D array merging the first two dimensions
Ar = A.reshape(-1,A.shape[2])

# Perform lex sort and get the sorted indices and xy pairs
sorted_idx = np.lexsort(Ar.T)
sorted_Ar =  Ar[sorted_idx,:]

# Get the count of rows that have at least one TRUE value 
# indicating presence of unique subarray there
unq_out = np.any(np.diff(sorted_Ar,axis=0),1).sum()+1

Sample run -

In [159]: A # A is (2,2,3)
Out[159]: 
array([[[0, 0, 0],
        [0, 0, 2]],

       [[0, 0, 2],
        [2, 0, 1]]])

In [160]: unq_out
Out[160]: 3

Get the count of occurrences of unique subarrays

# Reshape the 3D array to a 2D array merging the first two dimensions
Ar = A.reshape(-1,A.shape[2])

# Perform lex sort and get the sorted indices and xy pairs
sorted_idx = np.lexsort(Ar.T)
sorted_Ar =  Ar[sorted_idx,:]

# Get IDs for each element based on their uniqueness
id = np.append([0],np.any(np.diff(sorted_Ar,axis=0),1).cumsum())

# Get counts for each ID as the final output
unq_count = np.bincount(id) 

Sample run -

In [64]: A
Out[64]: 
array([[[0, 0, 2],
        [1, 1, 1]],

       [[1, 1, 1],
        [1, 2, 0]]])

In [65]: unq_count
Out[65]: array([1, 2, 1], dtype=int64)

Here I've modified @Divakar's very useful answer to return the counts of the unique subarrays, as well as the subarrays themselves, so that the output is the same as that of collections.Counter.most_common():

# Get the array in 2D form.
arr = arr.reshape(-1, arr.shape[-1])

# Lexicographically sort
sorted_arr = arr[np.lexsort(arr.T), :]

# Get the indices where a new row appears
diff_idx = np.where(np.any(np.diff(sorted_arr, axis=0), 1))[0]

# Get the unique rows
unique_rows = [sorted_arr[i] for i in diff_idx] + [sorted_arr[-1]]

# Get the number of occurences of each unique array (the -1 is needed at
# the beginning, rather than 0, because of fencepost concerns)
counts = np.diff(
    np.append(np.insert(diff_idx, 0, -1), sorted_arr.shape[0] - 1))

# Return the (row, count) pairs sorted by count
return sorted(zip(unique_rows, counts), key=lambda x: x[1], reverse=True)

I am not sure that it's the most efficient way to do it but this should work.

arr = arr.reshape(128*36,8)
unique_ = []
occurence_ = []

for sub in arr:
    if sub.tolist() not in unique_:
        unique_.append(sub.tolist())
        occurence_.append(1)
    else:
        occurence_[unique_.index(sub.tolist())]+=1
for index_,u in unique_:
   print u,"occurrence: %s"%occurence_[index_]
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