# Graph implementations and initialization of adjacency matrices

Graphs are often represented using an adjacency matrix. Various sources indicate it is possible to avoid the cost of initialization to be |V^2| (V is the number of vertices) but could I have not figured out how.

In Java, simply by declaring the matrix, e.g. `boolean adj [][]`, the runtime will automatically initialize the array with `false` and this will be at O(V^2) cost (the dimensions of the array).
Do I misunderstand? Is it possible to avoid the quadratic cost of initialization of the adjacency matrix, or is this just something theoretical that depends on the implementation language?

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That would be possible by using a sparse matrix representation of an adjacency matrix where only the position of the "ones" is allocated rather than each and every element of the matrix (which might include a large number of zeros). You might find this thread useful as well

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A sparse representation of an adjacency matrix is just an adjacency list. –  Li-aung Yip May 13 '12 at 9:27

The default initialization of the matrix's values is in fact a feature. Were it not with the default initialization, wouldn't you still need to initialize every field yourself so you know what to expect its value to be?

Adjacency matrices have this drawback: they are bad in the sense of memory efficiency (they require O(n2) memory cells) and as you said their initialization is slower. The initialization, however, is never considered the biggest problem. Believe me, the memory allocation is a lot slower and the needed memory is much more limiting than the initialization time.

In many cases people prefer using adjacency lists, instead of the matrix. Such list require `O(m)` memory, where `m` is the number of edges in the graph. This is a lot more efficient, especially for sparse graphs. The only operations this graph representation is worse than the adjacency matrix is the query `is there edge between vertices i and j`. the matrix answers in `O(1)` time and the list will for sure be a lot slower.

However many of the typical graph algorithms (like Dijkstra, Bellman-Ford, Prim, Tarjan, BFS and DFS) will only need to iterate all the neighbours of a given vertex. All these algorithms benefit immensely if you use adjacency list instead of matrix.

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So you are saying that there is not some kind of "trick" to initialize the array in less than quadratic time? Even in theory? –  Cratylus May 13 '12 at 11:21
@user384706 Nope there isn't and theoretically there can not be. However, there are some functions that used highly optimized operations like the c++'s `memset` function. –  Boris Strandjev May 13 '12 at 11:30
Well they're only bad in the sense of memory efficiency for certain cases. I know what you're trying to say, but it's important to know that matrices can be memory efficient. See this thread for more info –  ᴋᴇʏsᴇʀ May 13 '12 at 11:58
Parallel algorithms are usually a whole lot easier to parallelize if an algorithm exists at all, for a simple 2d array than with the adjacency list. Note that most listed algorithms on your list are pretty hard to parallelize work efficient. Ah all the pros and cons. –  Voo May 13 '12 at 19:21