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A terminological question - is Greedy best-first search different from Best-first search?

The wiki page has a separate paragraph about Greedy BFS but it's a little unclear.

My understanding is that Greedy BFS is just BFS where the "best node from OPEN" in wikipedia's algorithm is a heuristic function one calculates for a node. So implementing this:

OPEN = [initial state]
CLOSED = []
while OPEN is not empty
do
 1. Remove the best node from OPEN, call it n, add it to CLOSED.
 2. If n is the goal state, backtrace path to n (through recorded parents) and return path.
 3. Create n's successors.
 4. For each successor do:
   a. If it is not in CLOSED: evaluate it, add it to OPEN, and record its parent.
   b. Otherwise: change recorded parent if this new path is better than previous one.
done

with "best node from OPEN" being a heuristic function estimating how close the node is to the goal, is actually Greedy BFS. Am I right?

EDIT: Comment on Anonymouse's answer:

So essentially a greedy BFS doesn't need an "OPEN list" and should base its decisions only on the current node? Is this algorithm GBFS:

1. Set START as CURRENT node
2. Add CURRENT to Path [and optinally, to CLOSED?]
3. If CURRENT is GOAL, exit
4. Evaluate CURRENT's successors
5. Set BEST successor as CURRENT and go to 2.
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3 Answers

up vote 10 down vote accepted

"Best first" could allow revising the decision, whereas in a greedy algorithm, the decisions should be final, and not revised.

For example A*-search is a best-first-search, however it is not greedy.

Understand that, however, these terms are not always used with the same definitions. "Greedy" usually means that the decision is never revised, eventually accepting suboptimal solutions at the benefit of improvements in running time. However, I bet you will find situations where "greedy" is used for the combination of "best first + depth first" as in "try to expand the best next step until we hit a dead end, then return to the previous step and continue with the next best there" (which I would call a "prioritized depth first").

Also it depends on which level of abstraction you are talking about. A* is not greedy in ''building a path''. It's fine with keeping a large set of open paths around. It is however greedy in ''expanding the search space'' towards the true shortest path.

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How would you change the algorithm above to reflect that? –  Alex Dec 4 '11 at 9:39
1  
It's not applicable to all problems. For example in path finding, a true greedy algorithm will often fail by running into dead ends. A "prioritized depth first" will find a good path, but might miss the best one when the initial choices were bad. A* is a best-first search that will terminate only when it's sure there is no better path. –  Anony-Mousse Dec 4 '11 at 9:47
    
Could you comment on the edit in my question? –  Alex Dec 4 '11 at 10:00
    
yes, that is a "true greedy" algorithm now - with the drawback of eventually not finding a path when in a dead end. You might need the closed list to avoid infinite loops. Also read my updated reply, about how A* can be seen as "greedy" and "non greedy" at the same time, depending on what you are talking about (single path vs. space of all possible paths). –  Anony-Mousse Dec 4 '11 at 10:56
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It is my understanding, Best-first Search is only a collective name of a particular search technique in which you use a heuristic evaluation function h(n). So A* and Greedy Best-first Search also fall into this category.

Please correct me if I am wrong!

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BFS is an instance of Tree Search and Graph Search algorithms in which a node is selected for expansion based oh Evaluation Function f(n). Traditionally, the node with the lowest evaluation is selected for expansion, because the evaluation measuresdistance to the goal. BFS Uses Priority Queue. Where as If i Talk about Greedy BFS, It tries to expand the node that is closest to the goal, on the ground that, this lead to the solution quickly. Thus it evaluates nodes by using Just Heuristic Function f(n) = h(n)

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