license: apache-2.0
library_name: span-marker
tags:
- span-marker
- token-classification
- ner
- named-entity-recognition
pipeline_tag: token-classification
widget:
- text: >-
The model is initially fit on a training dataset, The model (e.g. a neural
net or a naive Bayes classifier) is trained on the training dataset using
a supervised learning method, for example using optimization methods such
as gradient descent or stochastic gradient descent.
example_title: AI
- text: >-
It restricted the Barbarians' selectorial options but they still boast 13
internationals including England full-back Tim Stimpson and recalled wing
Tony Underwood, plus All Black forwards Ian Jones and Norm Hewitt.
example_title: CoNLL
- text: >-
Two decades after Frank Herbert's death, his son Brian Herbert, along with
Kevin J. Anderson, published two sequels - Hunters of Dune (2006) and
Sandworms of Dune (2007) - based on notes left behind by Frank Herbert for
what he referred to as Dune 7, his own planned seventh novel in the Dune
series.
example_title: Literature
- text: >-
Polka is still a popular genre of folk music in many European countries
and is performed by folk artists in Poland, Latvia, Lithuania, Czech
Republic, Netherlands, Croatia, Slovenia, Germany, Hungary, Austria,
Switzerland, Italy, Ukraine, Belarus, Russia and Slovakia.
example_title: Music 1
- text: >-
As a strong advocate of animal rights, Linda lent her support to many
organizations such as People for the Ethical Treatment of Animals (PETA),
the Campaign to Protect Rural England, and Friends of the Earth.
example_title: Music 2
- text: >-
Some of the most pronounced effects of Hellenization can be seen in
Afghanistan and India, in the region of the relatively late-rising
Greco-Bactrian Kingdom (250-125 BC) (in modern Afghanistan, Pakistan, and
Tajikistan) and the Indo-Greek Kingdom (180 BC - 10 AD) in modern
Afghanistan and India and created a culture of Greco-Buddhist art.
example_title: Politics
- text: >-
That first evening session was organized by Jack Yardley from Johns
Hopkins University, and included Henry Appelman (University of Michigan),
Harvey Goldman (Beth Israel Deaconess Medical Center and Harvard Medical
School), Bill Hawk (The Cleveland Clinic), Tom Kent (University of Iowa),
Si-Chun Ming (Temple University), Tom Norris (University of Washington),
and Robert Riddell (University of Chicago).
example_title: Science 1
- text: >-
Viral TK phosphorylates aciclovir into its monophosphate form, which is
subsequently phosphorylated to active aciclovir triphoshate by cellular
kinases, thus selectively inhibiting viral DNA polymerase.
example_title: Science 2
model-index:
- name: SpanMarker w. bert-base-cased on CrossNER by Tom Aarsen
results:
- task:
type: token-classification
name: Named Entity Recognition
dataset:
type: P3ps/Cross_ner
name: CrossNER
split: test
revision: 7cecbbb3d2eb8c75c8571c53e5a5270cfd0c5a9e
metrics:
- type: f1
value: 0.8785
name: F1
- type: precision
value: 0.8825
name: Precision
- type: recall
value: 0.8746
name: Recall
datasets:
- P3ps/Cross_ner
language:
- en
metrics:
- f1
- recall
- precision
SpanMarker for Named Entity Recognition
This is a SpanMarker model that can be used for Named Entity Recognition. In particular, this SpanMarker model uses bert-base-cased as the underlying encoder. See train.py for the training script. It is trained on P3ps/Cross_ner, which I believe is a variant of DFKI-SLT/cross_ner that merged the validation set into the training set and applied deduplication.
Is your data not (always) capitalized correctly? Then consider using the uncased variant of this model instead for better performance: tomaarsen/span-marker-bert-base-uncased-cross-ner.
Labels & Metrics
Label | Examples | Precision | Recall | F1 |
---|---|---|---|---|
all | - | 88.25 | 87.46 | 87.85 |
academicjournal | "New Journal of Physics", "EPL", "European Physical Journal B" | 84.04 | 96.34 | 89.77 |
album | "Tellin' Stories", "Generation Terrorists", "Country Airs" | 90.71 | 85.81 | 88.19 |
algorithm | "LDA", "PCA", "gradient descent" | 76.27 | 79.65 | 77.92 |
astronomicalobject | "Earth", "Sun", "Halley's comet" | 92.00 | 93.24 | 92.62 |
award | "Nobel Prize for Literature", "Acamedy Award for Best Actress", "Mandelbrot's awards" | 87.14 | 92.51 | 89.74 |
band | "Clash", "Parliament Funkadelic", "Sly and the Family Stone" | 83.44 | 86.62 | 85.00 |
book | "Nietzsche contra Wagner" , "Dionysian-Dithyrambs", "The Rebel" | 73.71 | 82.69 | 77.95 |
chemicalcompound | "hydrogen sulfide", "Starch", "Lactic acid" | 71.21 | 71.21 | 71.21 |
chemicalelement | "potassium", "Fluorine", "Chlorine" | 84.00 | 70.00 | 76.36 |
conference | "SIGGRAPH", "IJCAI", "IEEE Transactions on Speech and Audio Processing" | 80.00 | 68.57 | 73.85 |
country | "United Arab Emirates", "U.S.", "Canada" | 81.72 | 86.81 | 84.19 |
discipline | "physics", "meteorology", "geography" | 48.39 | 55.56 | 51.72 |
election | "2004 Canadian federal election", "2006 Canadian federal election", "1999 Scottish Parliament election" | 96.61 | 97.85 | 97.23 |
enzyme | "RNA polymerase", "Phosphoinositide 3-kinase", "Protein kinase C" | 77.27 | 91.89 | 83.95 |
event | "Cannes Film Festival", "2019 Special Olympics World Summer Games", "2017 Western Iraq campaign" | 75.00 | 66.30 | 70.38 |
field | "computational imaging", "electronics", "information theory" | 89.80 | 83.02 | 86.27 |
literarygenre | "novel", "satire", "short story" | 70.24 | 68.60 | 69.41 |
location | "China", "BOMBAY", "Serbia" | 95.21 | 93.72 | 94.46 |
magazine | "The Atlantic", "The American Spectator", "Astounding Science Fiction" | 81.48 | 78.57 | 80.00 |
metrics | "BLEU", "precision", "DCG" | 72.53 | 81.48 | 76.74 |
misc | "Serbian", "Belgian", "The Birth of a Nation" | 81.69 | 74.08 | 77.70 |
musicalartist | "Chuck Burgi", "John Miceli", "John O'Reilly" | 79.67 | 87.11 | 83.23 |
musicalinstrument | "koto", "bubens", "def" | 66.67 | 22.22 | 33.33 |
musicgenre | "Christian rock", "Punk rock", "romantic melodicism" | 86.49 | 90.57 | 88.48 |
organisation | "IRISH TIMES", "Comintern", "Wimbledon" | 91.37 | 90.85 | 91.11 |
person | "Gong Zhichao", "Liu Lufung", "Margret Crowley" | 94.15 | 92.31 | 93.22 |
poem | "Historia destructionis Troiae", "I Am Joaquin", "The Snow Man" | 83.33 | 68.63 | 75.27 |
politicalparty | "New Democratic Party", "Bloc Québécois", "Liberal Party of Canada" | 87.50 | 90.17 | 88.82 |
politician | "Susan Kadis", "Simon Strelchik", "Lloyd Helferty" | 86.16 | 88.93 | 87.52 |
product | "AlphaGo", "WordNet", "Facial recognition system" | 60.82 | 70.24 | 65.19 |
programlang | "R", "C++", "Java" | 92.00 | 71.88 | 80.70 |
protein | "DNA methyltransferase", "tau protein", "Amyloid beta" | 60.29 | 59.42 | 59.85 |
researcher | "Sirovich", "Kirby", "Matthew Turk" | 87.50 | 78.65 | 82.84 |
scientist | "Matjaž Perc", "Cotton", "Singer" | 82.04 | 88.48 | 85.14 |
song | "Right Where I'm Supposed to Be", "Easy", "Three Times a Lady" | 84.78 | 90.70 | 87.64 |
task | "robot control", "elevator scheduling", "telecommunications" | 76.19 | 74.42 | 75.29 |
theory | "Big Bang", "general theory of relativity", "Ptolemaic planetary theories" | 100.00 | 16.67 | 28.57 |
university | "University of Göttingen", "Duke", "Imperial Academy of Sciences" | 77.14 | 91.01 | 83.51 |
writer | "Thomas Mann", "George Bernard Shaw", "Thomas Hardy" | 76.29 | 82.84 | 79.43 |
Usage
To use this model for inference, first install the span_marker
library:
pip install span_marker
You can then run inference with this model like so:
from span_marker import SpanMarkerModel
# Download from the 🤗 Hub
model = SpanMarkerModel.from_pretrained("tomaarsen/span-marker-bert-base-cross-ner")
# Run inference
entities = model.predict("Amelia Earhart flew her single engine Lockheed Vega 5B across the Atlantic to Paris.")
See the SpanMarker repository for documentation and additional information on this library.
Training procedure
Training hyperparameters
The following hyperparameters were used during training:
- learning_rate: 5e-05
- train_batch_size: 32
- eval_batch_size: 32
- seed: 42
- optimizer: Adam with betas=(0.9,0.999) and epsilon=1e-08
- lr_scheduler_type: linear
- lr_scheduler_warmup_ratio: 0.1
- num_epochs: 3
Training results
Training Loss | Epoch | Step | Validation Loss | Overall Precision | Overall Recall | Overall F1 | Overall Accuracy |
---|---|---|---|---|---|---|---|
0.0521 | 0.25 | 200 | 0.0375 | 0.7149 | 0.6033 | 0.6544 | 0.8926 |
0.0225 | 0.5 | 400 | 0.0217 | 0.8001 | 0.7878 | 0.7939 | 0.9400 |
0.0189 | 0.75 | 600 | 0.0168 | 0.8526 | 0.8288 | 0.8405 | 0.9534 |
0.0157 | 1.01 | 800 | 0.0160 | 0.8481 | 0.8366 | 0.8423 | 0.9543 |
0.0116 | 1.26 | 1000 | 0.0158 | 0.8570 | 0.8568 | 0.8569 | 0.9582 |
0.0119 | 1.51 | 1200 | 0.0145 | 0.8752 | 0.8550 | 0.8650 | 0.9607 |
0.0102 | 1.76 | 1400 | 0.0145 | 0.8766 | 0.8555 | 0.8659 | 0.9601 |
0.01 | 2.01 | 1600 | 0.0139 | 0.8744 | 0.8718 | 0.8731 | 0.9629 |
0.0072 | 2.26 | 1800 | 0.0144 | 0.8748 | 0.8684 | 0.8716 | 0.9625 |
0.0066 | 2.51 | 2000 | 0.0140 | 0.8803 | 0.8738 | 0.8770 | 0.9645 |
0.007 | 2.76 | 2200 | 0.0138 | 0.8831 | 0.8739 | 0.8785 | 0.9644 |
Framework versions
- SpanMarker 1.2.4
- Transformers 4.31.0
- Pytorch 2.0.1+cu118
- Datasets 2.14.3
- Tokenizers 0.13.2