I'm currently trying to solve the hard Challenge #151 on reddit with a unuasual method, a genetic algorithm.
In short, after seperating a string to consonants
and vowels
and removing spaces
I need to put it together without knowing what character comes first.
hello world
is seperated to hllwrld
and eoo
and needs to be put together again. One solution for example would be hlelworlod
, but that doesn't make much sense. The exhaustive approach that takes all possible solutions works, but isn't feasible for longer problem sets.
What I already have
- A database with the frequenzy of english words
- An algorithm that constructs a relative
cost
database using Zipf's law and can consistently seperate words from sentences without spaces (borrowed from this question/answer - A method that puts consonants and vowels into a stack and randomly takes a character from either one and encodes this in a string that consists of
1
and2
, effectively encoding the construction in agene
. The correctgene
for the example would be1211212111
- A method that mutates such a string, randomly swapping characters around
What I tried
Generating 500 random sequences, using the infer_spaces()
method and evaluating fitness with the cost of all the words, taking the best 25% and mutate 4 new from those, works for small strings, but falls into local minima very often, especially for longer sequences. Hello World is found already in the first generation, thisisnotworkingverygood
(which is correctly seperated and has a cost of 41.223
) converges to th iss n ti wo or king v rye good
(270 cost) already in the second generation.
What I need
Clearly, using the calculated cost as a evaluation method does only work for the separation of sentences that are grammatically correct, not for for this genetic algorithm. Do you have better ideas I could try? Or is another part of solution, for example the representation of the gene
, the problem?