spaCy/examples
Matthew Honnibal 2da16adcc2 Add dropout optin for parser and NER
Dropout can now be specified in the `Parser.update()` method via
the `drop` keyword argument, e.g.

    nlp.entity.update(doc, gold, drop=0.4)

This will randomly drop 40% of features, and multiply the value of the
others by 1. / 0.4. This may be useful for generalising from small data
sets.

This commit also patches the examples/training/train_new_entity_type.py
example, to use dropout and fix the output (previously it did not output
the learned entity).
2017-04-27 13:18:39 +02:00
..
inventory_count Rename inventory count example 2016-11-01 02:30:22 +01:00
keras_parikh_entailment Update README 2017-04-05 16:59:52 +05:30
training Add dropout optin for parser and NER 2017-04-27 13:18:39 +02:00
README.md Add README.md to examples 2016-11-01 01:14:04 +01:00
_handler.py * Add _handler to resolve Issue #123 2015-10-15 02:44:23 +11:00
chainer_sentiment.py Set vectors in chainer example 2016-11-19 18:42:58 -06:00
deep_learning_keras.py Fix use of dropout in sentiment analysis LSTM example 2016-12-20 16:26:38 -06:00
get_parse_subregions.py move displacy to its own subdomain 2016-02-19 14:03:52 +01:00
information_extraction.py
matcher_example.py
multi_word_matches.py
nn_text_class.py Add setup directions for data dir 2016-11-13 10:08:16 -08:00
parallel_parse.py added batch_size as keyword argument 2016-03-10 14:16:34 -08:00
pos_tag.py Fix formatting and typo (closes #967) 2017-04-16 23:56:12 +02:00
twitter_filter.py

README.md

spaCy examples

The examples are Python scripts with well-behaved command line interfaces. For a full list of spaCy tutorials and code snippets, see the documentation.

How to run an example

For example, to run the nn_text_class.py script, do:

$ python examples/nn_text_class.py
usage: nn_text_class.py [-h] [-d 3] [-H 300] [-i 5] [-w 40000] [-b 24]
                        [-r 0.3] [-p 1e-05] [-e 0.005]
                        data_dir
nn_text_class.py: error: too few arguments

You can print detailed help with the -h argument.

While we try to keep the examples up to date, they are not currently exercised by the test suite, as some of them require significant data downloads or take time to train. If you find that an example is no longer running, please tell us! We know there's nothing worse than trying to figure out what you're doing wrong, and it turns out your code was never the problem.