= Named Entity Recognition = [[https://is.muni.cz/auth/predmet/fi/ia161|IA161]] [[en/AdvancedNlpCourse|Advanced NLP Course]], Course Guarantee: Aleš Horák Prepared by: Zuzana Nevěřilová == State of the Art == NER aims to ''recognize'' and ''classify'' names of people, locations, organizations, products, artworks, sometimes dates, money, measurements (numbers with units), law or patent numbers etc. Known issues are ambiguity of words (e.g. ''May'' can be a month, a verb, or a name), ambiguity of classes (e.g. ''HMS Queen Elisabeth'' can be a ship), and the inherent incompleteness of lists of NEs. Named entity recognition (NER) is used mainly in information extraction (IE) but it can significantly improve other NLP tasks such as syntactic parsing. === Example from IE === In 2003, Hannibal Lecter (as portrayed by Hopkins) was chosen by the American Film Institute as the number one movie villain. Hannibal Lecter <-> Hopkins === Example concerning syntactic parsing === Wish You Were Here is the ninth studio album by the English progressive rock group Pink Floyd. vs. Wish_You_Were_Here is the ninth studio album by the English progressive rock group Pink Floyd. === References === 1. David Nadeau, Satoshi Sekine: A survey of named entity recognition and classification. In Satoshi Sekine and Elisabete Ranchhod (eds.) Named Entities: Recognition, classification and use. Lingvisticæ Investigationes 30:1. 2007. pp. 3–26 [[http://brown.cl.uni-heidelberg.de/~sourjiko/NER_Literatur/survey.pdf]] 1. Charles Sutton and Andrew !McCallum: An Introduction to Conditional Random Fields. Foundations and Trends in Machine Learning 4 (4). 2012. [[http://homepages.inf.ed.ac.uk/csutton/publications/crftut-fnt.pdf]] == Practical Session == === Czech Named Entity Recognition === In this workshop, we train a new NER application for the Czech language. We work with free resources & software tools: the Czech NE Corpus (CNEC) and the Stanford NER application. Requirements: Java 8, python, gigabytes of memory, [raw-attachment:convert_cnec_stanford.py:wiki:en/AdvancedNlpCourse/NamedEntityRecognition convert_cnec_stanford.py], [raw-attachment:named_ent_dtest_unknown.tsv:wiki:en/AdvancedNlpCourse/NamedEntityRecognition named_ent_dtest_unknown.tsv], [raw-attachment:cnec.prop:wiki:en/AdvancedNlpCourse/NamedEntityRecognition cnec.prop] 1. Create ``, a text file named ia161-UCO-03.txt where UCO is your university ID. 1. get the data: download CNEC from LINDAT/Clarin repository (https://lindat.mff.cuni.cz/repository/xmlui/handle/11858/00-097C-0000-0023-1B04-C) 1. open the NE hierarchy: `acroread cnec1.1/doc/ne-type-hierarchy.pdf` 1. the data is organized into 3 disjoint datasets: the training data is called `train`, the development test data is called `dtest` and the final evaluation data is called `etest`. 1. convert the train data to the Stanford NER format: `python convert_cnec_stanford.py named_ent_train.xml > named_ent_train.tsv`. Note that we removed documents that did not contain NEs. You can experiment with this option later. 1. download the Stanford NE recognizer http://nlp.stanford.edu/software/CRF-NER.shtml (and read about it) 1. train the model using the default settings (cnec.prop), N.B. that the `convert_cnec_stanford.py` only recognizes PERSON, LOCATION and ORGANIZATION, you can extend the markup conversion later: `java -cp stanford-ner.jar edu.stanford.nlp.ie.crf.CRFClassifier -prop cnec.prop` 1. convert the test data to the Stanford NER format: `python convert_cnec_stanford.py named_ent_dtest.xml > named_ent_dtest.tsv` 1. evaluate the model on `dtest`: [[BR]] `java -cp stanford-ner.jar edu.stanford.nlp.ie.crf.CRFClassifier -loadClassifier cnec-3class-model.ser.gz -testFile named_ent_dtest.tsv`. [[BR]] You should see results like: {{{ CRFClassifier tagged 12120 words in 441 documents at 8145.16 words per second. Entity P R F1 TP FP FN LOCATION 0.7962 0.7849 0.7905 332 85 91 ORGANIZATION 0.7059 0.6019 0.6497 192 80 127 PERSON 0.8062 0.8592 0.8319 470 113 77 Totals 0.7814 0.7711 0.7763 994 278 295 }}} In the output, the first column is the input tokens, the second column is the correct (gold) answers. Observe the differences. Copy the training result to ``. Try to estimate in how many cases the model missed an entity, detected incorrectly the boundaries, or classified an entity incorrectly. 10. evaluate the model on `dtest` with only NEs that are not present in the train data: `java -cp stanford-ner.jar edu.stanford.nlp.ie.crf.CRFClassifier -loadClassifier cnec-3class-model.ser.gz -testFile named_ent_dtest_unknown.tsv`. Copy the result to ``. 11. test on your own input: `java -mx600m -cp stanford-ner.jar edu.stanford.nlp.ie.crf.CRFClassifier -loadClassifier cnec-3class-model.ser.gz -textFile sample.txt`. Copy the result to ``. 12. (optional) try to improve the train data suggestions: set `useKnownLCWords` to false, add gazetteers, remove punctuation, try to change the wordshape (something following the pattern: `dan[12](bio)?(UseLC)?, jenny1(useLC)?, chris[1234](useLC)?, cluster1)` or word shape features (see the documentation). Copy the result to ``. 13. (optional) evaluate the model on dtest, final evaluation on etest