Skip to content

kretes/pyltr

 
 

Repository files navigation

pyltr

pypi version Build status

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.

Example

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)

Features

Below are some of the features currently implemented in pyltr.

Models

  • LambdaMART (pyltr.models.LambdaMART)
    • Validation & early stopping
    • Query subsampling

Metrics

  • (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 Wrangling

  • Data loaders (e.g. pyltr.data.letor.read)
  • Query groupers and validators (pyltr.util.group.check_qids, pyltr.util.group.get_groups)

Running Tests

Use the run_tests.sh script to run all unit tests.

Building Docs

cd into the docs/ directory and run make html. Docs are generated in the docs/_build directory.

Contributing

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).

About

Python learning to rank (LTR) toolkit

Resources

License

Stars

Watchers

Forks

Packages

No packages published

Languages

  • Python 99.8%
  • Shell 0.2%