pyltr is a Python learning-to-rank toolkit with ranking models, evaluation metrics, data wrangling helpers, and more.
This software is licensed under the BSD 3-clause license (see LICENSE.txt
).
The author may be contacted at ma127jerry <@t> gmail
with general feedback, questions, or bug reports.
Import pyltr:
import pyltr
Import a LETOR dataset (e.g. MQ2007 ):
with open('train.txt') as trainfile, \
open('vali.txt') as valifile, \
open('test.txt') as evalfile:
TX, Ty, Tqids, _ = pyltr.data.letor.read_dataset(trainfile)
VX, Vy, Vqids, _ = pyltr.data.letor.read_dataset(valifile)
EX, Ey, Eqids, _ = pyltr.data.letor.read_dataset(evalfile)
Train a LambdaMART model, using validation set for early stopping and trimming:
metric = pyltr.metrics.NDCG(k=10)
# Only needed if you want to perform validation (early stopping & trimming)
monitor = pyltr.models.monitors.ValidationMonitor(
VX, Vy, Vqids, metric=metric, stop_after=250)
model = pyltr.models.LambdaMART(
metric=metric,
n_estimators=1000,
learning_rate=0.02,
max_features=0.5,
query_subsample=0.5,
max_leaf_nodes=10,
min_samples_leaf=64,
verbose=1,
)
model.fit(TX, Ty, Tqids, monitor=monitor)
Evaluate model on test data:
Epred = model.predict(EX)
print 'Random ranking:', metric.calc_mean_random(Eqids, Ey)
print 'Our model:', metric.calc_mean(Eqids, Ey, Epred)
Below are some of the features currently implemented in pyltr.
- LambdaMART (
pyltr.models.LambdaMART
)- Validation & early stopping
- Query subsampling
- (N)DCG (
pyltr.metrics.DCG
,pyltr.metrics.NDCG
)- pow2 and identity gain functions
- ERR (
pyltr.metrics.ERR
)- pow2 and identity gain functions
- (M)AP (
pyltr.metrics.AP
) - Kendall's Tau (
pyltr.metrics.KendallTau
) - AUC-ROC -- Area under the ROC curve (
pyltr.metrics.AUCROC
)
- Data loaders (e.g.
pyltr.data.letor.read
) - Query groupers and validators (
pyltr.util.group.check_qids
,pyltr.util.group.get_groups
)
Use the run_tests.sh
script to run all unit tests.
cd
into the docs/
directory and run make html
. Docs are generated in the docs/_build
directory.
Quality contributions or bugfixes are gratefully accepted. When submitting a pull request, please update AUTHOR.txt
so you can be recognized for your work :).
By submitting a Github pull request, you consent to have your submitted code released under the terms of the project's license (see LICENSE.txt
).