Universal Dependencies POS Tagger for id / Indonesian
A POS tagger for id / Indonesian using the Universal Dependencies POS tagset.
This tagger is based on a simple maximum entropy model trained on the corpus from the universal dependencies collection using the GATE Learning Framework plugin.
The model is trained on all available corpora, except the test corpus. Evaluation on the test set gives 0.9184 accuracy. Accuracy on out-of-vocabulary words (words not seen in the trainin set) is 0.8572 (case-sensitive) / 0.8659 (not case-sensitive).
|:Token||Tokens generated with the alternate tokeniser. The universal dependencies POS tag is stored in feature "upos".|
|Additional annotations available if selected|
|:Sentence||The sentence annotation created by the default regular expression sentence splitter|
Use this pipeline
You can process up to 1,200 documents per day free of charge using the REST API, at an average rate of 2 documents/sec. Higher quotas are available for research users by arrangement, contact us for details.
The API endpoint for this pipeline is:
You can process any amount of data with this pipeline on a pay-as-you-go basis, for GBP0.80 per hour. This can be data you upload yourself, data you collected from Twitter, or the results of a previous job.