I have a large sparse graph that I am representing as an adjacency matrix (100k by 100k or bigger), stored as an array of edges. An example with a (non-sparse) 4 by 4 matrix:
0 7 4 0 example_array = [ [7,1,2], [4,2,1] ]
E.g. [4,1,2] says that there is a directed edge from node 1 to node 2 with the value/weight 4. In matrix lingo, this is essentially [ value, row, column ].
Also, this "array of edges" will be sorted by the first element. In the example above, after sorting, the array becomes,
example_array = [ [4,2,1], [7,1,2] ]
For a certain value
i, need to find all elements in this sorted "array of edges" with second value equal to
i. i.e. Find
j such that
example_array[j] = i.
My preliminary implementation of this is to simply iterate all elements in the array, comparing the second value of each element with
i. This is computationally expensive because there might still be a lot (e.g. 500k) of elements to loop through.
Is there a more efficient way to do this? I do not mind using a different representation of the matrix/graph. I am writing this in C.
This is essentially finding all the neighbors of a node
i, and their edge weights. i.e. Finding all directed edges from
i to another node, from the edge list.