Talk:Automatically trimming a monodix

From Apertium
Jump to navigation Jump to search

Implementing automatic trimming in lttoolbox

The simplest method seems to be to first create the analyser in the normal way, then loop through all its states (see transducer.cc:Transducer::closure for a loop example), trying to do the same steps in parallel with the compiled bidix:

trim(current_a, current_b):

  for symbol, next_a in analyser.transitions[current_a]:

    found = false

    for s, next_b in bidix.transitions[current_b]:
      if s==symbol:
         trim(next_a, next_b)
         found = true
    if seen tags: 
      found = true

    if !found && !current_b.isFinal():
      delete symbol from analyser.transitions[current_a]

    // else: all transitions from this point on will just be carried over unchanged by bidix

trim(analyser.initial, bidix.initial)


Trimming while reading the XML file might have lower memory usage, but seems like more work, since pardefs are read before we get to an "initial" state.


https://github.com/unhammer/lttoolbox/branches has some experiments


A slightly different approach is to create the product automaton for intersection, marking at final only state-pairs where both parts of the state-pair are final in the original automata.

product automaton for intersection

Unbalanced loops

Say analyser is j+<n> while bidix is j+jjj<n> – ideally we could "trim" analyser to j+jjj<n>, but is it possible to do that in a tractable manner?

Worse is better

If it's difficult to get a complete lt-trim solution that handles <g> and <j> perfectly a stop-gap might be to distribute a dictionary of the multiwords with the language pair, and leave only "simple" words in the monolingual package dictionary. The multiwords would be manually trimmed to the pair, the simple words trimmed with lt-trim, and a new lt-merge command would merge the two compiled dictionaries (as seperate sections).

(An lt-merge command might also be helpful when compiling att transducers, which makes anything that looks like punctuation inconditional, and anything else standard.)

Compounds vs trimming in sme

The sme.lexc can't be trimmed using the simple HFST trick, due to compounds.

Say you have cake n sg, cake n pl, beer n pl and beer n sg in monodix, while bidix has beer n and wine n. The HFST method without compounding is to intersect (cake|beer) n (sg|pl) with (beer|wine) n .* to get beer n (sg|pl).

But HFST represents compounding as a transition from the end of the singular noun to the beginning of the (noun) transducer, so a compounding HFST actually looks like

((cake|beer) n sg)*(cake|beer) n (sg|pl)

The intersection of this with

(beer|wine) n .*

is

(beer n sg)*(cake|beer) n (sg|pl) | beer n pl

when it should have been

(beer n sg)*(beer n (sg|pl)


Lttoolbox doesn't represent compounding by extra circular transitions, but instead by a special restart symbol interpreted while analysing. When we have lt-trim we will be able to make it understand compounds by e.g. restarting on +