Maxwell is a Python library for learning the stochastic edit distance (SED) between source and target alphabets for string transduction.
Given a corpus of source and target string pairs, it uses expectation-maximization to learn the log-probability weights of edit actions (copy, substitution, deletion, insertion) that minimize the number of edits between source and target strings. These weights can then be used for edits over unknown strings through Viterbi decoding.
First install dependencies:
pip install -r requirements.txt
Then install:
pip install .
It can then be imported like a regular Python module:
import maxwell
SED training can be done as either a command line tool or imported as a Python dependency.
For command-line use, run:
maxwell-train \
--train /path/to/train/data \
--output /path/to/output/file \
--epochs "${NUM_EPOCHS}"
As a library object, you can use the StochasticEditDistance
class to pass any
iterable of source-target pairs for training. Learned edit weights can then be
saved with the write_params
method:
from maxwell import sed
aligner = sed.StochasticEditDistance.fit_from_data(
training_samples, NUM_EPOCHS
)
aligner.params.write_params("/path/to/output/file")
After training, parameters can be loaded from file to calculate optimal edits
between strings with the action_sequence
method, which returns a tuple of the
learned optimal sequence and the weight given to the sequence:
from maxwell import sed
params = sed.ParamsDict.read_params("/path/to/learned/parameters")
aligner = sed.StochasticEditDistance(params)
optimal_sequence, optimal_cost = aligner.action_sequence(source, target)
If only weight and no actions are required, action_sequence_cost
can be called
instead:
optimal_cost = aligner.action_sequence_cost(source, target)
Conversely, individual actions can be evaluated with the action_cost
method:
action_cost = aligner.action_cost(action)
The default data format is based on the SIGMORPHON 2017 shared tasks:
source target ...
That is, the first column is the source (a lemma) and the second is the target.
In the case where the formatting is different, the --source-col
and
--target-col
flags can be invoked. For instance, for the SIGMORPHON 2016
shared task data format:
source ... target
one would instead use the flag --target-col 3
to use the third column as
target strings (note the use of 1-based indexing).
Edit weights are maintained as a ParamsDict
object, a dataclass comprising
three dictionaries and one floats. The dictionaries, and their indexing, are as
follows:
delta_sub
Keys: Tuple of source alphabet X target alphabet. Values: Substitution weight for all non-equivalent source-target pairs. If source symbol == target symbol, a seperate copy probability is used.delta_del
Keys: All symbols in source string alphabet. Represents deletion from string. Values: Deletion weight for removal of source symbol from string.delta_ins
Keys: All symbols in target string alphabet. Represents insertion into string. Values: Insertion weight for introduction of target symbol into string.delta_eos
A float value representing probability of terminating the string.
In Python, these values may be accessed through a StochasticEditDistance
object's params
attribute.
Dempster, A., Laird, N., and Rubin, D. 1977. Maximum likelihood from incomplete data via the EM algorithm. Journal of the Royal Statistical Society, Series B 30(1): 1-38.
Ristad, E. S. and Yianilos, P. N. 1998. Learning string-edit distance. IEEE Transactions on Pattern Analysis and Machine Intelligence 20(5): 522-532.