Algorithm of the Week: Graph Breadth First Search
Since we already know how to represent graphs, we can go further for some very simple approaches of walking through them. Passing by all the vertices of a graph is a fundamental technique for most of the graph algorithms, such as finding shortest/longest paths, etc.
First thing to note is that graphs are not trees, in most of the cases, so walking through them can’t start from a root, as we do with trees. What we must do first is to decide from where to start – in other words – choosing a starting vertex.

It’s clear that depending on the starting point we can get different passes through the graph. Thus choosing a starting point can be very important for our algorithm!
After that we need to know how to proceed. There are two approaches
mostly known as “breadth first” and “depth first” search. While depth
first search start from a vertex and goes as far as possible, then walks
back and passes through vertices that haven’t been visited yet, breath
first search is an approach of passing through all the neighbors of the
node first, and then go to the next level.
Overview
We can thing of breadth first search as a “wave” walk through the graph. In other words we go level by level, as shown on the picture below.

For this very specific graph on the picture we can see how breadth first search walks through the graph level by level!
Initially we mark all vertices as unvisited. A common approach is to create an empty queue where we put the vertices level by level, starting with the initial vertex.

Using a queue is a typical approach for breadth first search! However this requires more space!
Code
This simple approach is fairly easy to implement. Here’s the PHP implementation in few lines of code.
<?php $g = array( 0 => array(0, 1, 1, 0, 0, 0), 1 => array(1, 0, 0, 1, 0, 0), 2 => array(1, 0, 0, 1, 0, 0), 3 => array(0, 1, 1, 0, 1, 0), 4 => array(0, 0, 0, 1, 0, 1), 5 => array(0, 0, 0, 0, 1, 0), ); function init(&$visited, &$graph) { foreach ($graph as $key => $vertex) { $visited[$key] = 0; } } function breadth_first(&$graph, $start, $visited) { // create an empty queue $q = array(); // initially enqueue only the starting vertex array_push($q, $start); $visited[$start] = 1; echo $start . "\n"; while (count($q)) { $t = array_shift($q); foreach ($graph[$t] as $key => $vertex) { if (!$visited[$key] && $vertex == 1) { $visited[$key] = 1; array_push($q, $key); echo $key . "\t"; } } echo "\n"; } } $visited = array(); init($visited, $g); breadth_first($g, 2, $visited);
Complexity
The complexity of this algorithm clearly is O(n2).
Application
As I said breadth first and depth first searches are used in many practical cases, as finding shortest/minimal paths etc. That is why understanding these basic principles of walking through a graph is crucial for other, more complex, graph algorithms.
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Comments
Peter ___ replied on Tue, 2012/09/11 - 4:48pm
Here is BFS (and DFS) for Java - works memory efficient, is customizable and tested! Now I would like to know a speed comparison ;)
BTW1: What kind of complexity you are refering - time or space? Because time compl. is O(|E| + |V|) and space compl. is O(|V|)
BTW2: Nice algorithm posts :)
Wujek Srujek replied on Wed, 2012/09/12 - 1:39am