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I have some doubts regarding best first search algorithm. The pseudocode that I have is the following: best first search pseudocode

First doubt: is it complete? I have read that it is not because it can enter in a dead end, but I don't know when can happen, because if the algorithm chooses a node that has not more neighbours it does not get stucked in it because this node is remove from the open list and in the next iteration the following node of the open list is treated and the search continues.

Second doubt: is it optimal? I thought that if it is visiting the nodes closer to the goal along the search process, then the solution would be the shortest, but it is not in that way and I do not know the reason for that and therefore, the reason that makes this algorithm not optimal.

The heuristic I was using is the straight line distance between two points.

Thanks for your help!!

2 Answers 2

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Of course, if heuristic function underestimates the costs, best first search is not optimal. In fact, even if your heuristic function is exactly right, best first search is never guaranteed to be optimal. Here is a counter example. Consider the following graph:

Example graph The green numbers are the actual costs and the red numbers are the exact heuristic function. Let's try to find a path from node S to node G. Best first search would give you S->A->G following the heuristic function. However, if you look at the graph closer, you would see that the path S->B->C->G has lower cost of 5 instead of 6. Thus, this is an example of best first search performing suboptimal under perfect heuristic function.

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  • But this counter example does not work. In the first step the A* expands the node S - it finds out about node A and the path cost 5 and node B with path cost 1, then it expands node B and finds out about node C. Then in the next step there is node A with path cost 5 and heuristic 1 = 6 and node C with path cost 3 and heuristic 2 which is 5. So the A* algorithm in this case output S->B->C->G. The heuristic is not added to the path cost for all of the nodes. It is added only to actual expanded nodes. Apr 23, 2021 at 7:57
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In general case best first search algorithm is complete as in worst case scenario it will search the whole space (worst option). Now, it should be also optimal - given the heuristic function is admissible - meaning it does not overestimate the cost of the path from any of the nodes to goal. (It also needs to be consistent - that means that it adheres to triangle inequality, if it is not then the algorithm would not be complete - as it could enter a cycle)

Checking your algorithm I do not see how the heuristic function is calculated. Also I do not see there is calculated the cost of the path to get to the particular node. So, it needs to calculate the actual cost of the path to reach a particular node and then it needs to add a heuristics estimate of the cost of the path from the node towards goal.

The formula is f(n)=g(n)+h(n) where g(n) is the cost of the path to reach the node and h(n) is the heuristics estimating the cost of the cheapest path from n to the goal.

Check the implementation of A* algorithm which is an example of best first search on path planning.

TLDR In best first search, you need to calculate the cost of a node as a sum of the cost of the path to get to that node and the heuristic function that estimate the cost of the path from that node to the goal. If the heuristic function will be admissible and consistent the algorithm will be optimal and complete.

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  • The thing is that in the book "Artificial Intelligence: a modern approach", the book I am studying (its pdf can be found easily in Google), when talking about this algorithm it sais that best first is neither optimal not complete and that's why I am doubtful because until that moment the book does not talk about admissibility and consistency for heuristics. Maybe is it asumming neither optimal not complete because of the probability of using a non consistent heuristic and enter into a cycle so in this case the algorithm does not find a solution? I am quite confuse, any idea?. Thanks you!!! Nov 16, 2018 at 11:41
  • If you do not put any contraints on the heuristic function then indeed the algorithm is not optimal or complete in the general case. Not it seems that it does not make sense to develop such algorithm but in some cases "messing up" with the heuristic function can lead to faster solutions. Generally, you do not do that though. Nov 16, 2018 at 14:21

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