There is no hierarchy as such, just a bunch of different algorithms with different traits.
eg. A* can be considered to be based on Dijkstra's, with an added heuristic.
Or it can be considered to be based on a heuristic-based best-first search, with an additional factor of the path cost so far.
Similarly, A* is implemented much the same way as a typical breadth-first search is (ie. with a queue of nodes). Iteratively-deepening A* (IDA*) is based on A* in that it uses the same cost and heuristic measurements, but is actually implemented as a depth-first search method.
There's also a big crossover with optimisation algorithms here. Some people think of genetic algorithms as a bunch of complex hill-climbing attempts, but others consider it a form of beam search.
It's common for search and optimisation algorithms to draw properties from more than one source, to mix and match approaches to make them more relevant either to the search domain or the computing requirements, so rather than a hierarchy of methods you'll find a selection of themes that crop up across various approaches.