- ASR
- CCG supertagging
- Chunking
- Constituency parsing
- Coreference resolution
- Dependency parsing
- Dialog
- Domain adaptation
- Entity Linking
- Grammatical Error Correction
- Information Extraction
- Language modeling
- Lexical Normalization
- Machine translation
- Multi-task learning
- Multimodal
- Named entity recognition
- Natural language inference
- Part-of-speech tagging
- Question answering
- Relation Prediction
- Relationship extraction
- Semantic textual similarity
- Sentiment analysis
- Semantic parsing
- Semantic role labeling
- Stance detection
- Summarization
- Taxonomy learning
- Temporal Processing
- Text classification
- Word Sense Disambiguation
- Word segmentation
- Part-of-speech tagging
- Named entity recognition
- Dependency parsing
- Machine translation
This document aims to track the progress in Natural Language Processing (NLP) and give an overview of the state-of-the-art (SOTA) across the most common NLP tasks and their corresponding datasets.
It aims to cover both traditional and core NLP tasks such as dependency parsing and part-of-speech tagging as well as more recent ones such as reading comprehension and natural language inference. The main objective is to provide the reader with a quick overview of benchmark datasets and the state-of-the-art for their task of interest, which serves as a stepping stone for further research. To this end, if there is a place where results for a task are already published and regularly maintained, such as a public leaderboard, the reader will be pointed there.
If you want to find this document again in the future, just go to nlpprogress.com
or nlpsota.com
in your browser.
These are tasks and datasets that are still missing.
- Bilingual dictionary induction
- Discourse parsing
- Keyphrase extraction
- Knowledge base population (KBP)
- More dialogue tasks
- Semi-supervised learning
If you would like to add a new result, you can do so with a pull request (PR). In order to minimize noise and to make maintenance somewhat manageable, results reported in published papers will be preferred (indicate the venue of publication in your PR); an exception may be made for influential preprints. The result should include the name of the method, the citation, the score, and a link to the paper and should be added so that the table is sorted (with the best result on top).
If your pull request contains a new result, please make sure that "new result" appears somewhere in the title of the PR. This way, we can track which tasks are the most active and receive the most attention.
In order to make reproduction easier, we recommend to add a link to an implementation
to each method if available. You can add a Code
column (see below) to the table if it does not exist.
In the Code
column, indicate an official implementation with Official.
If an unofficial implementation is available, use Link (see below).
If no implementation is available, you can leave the cell empty.
Model | Score | Paper / Source | Code |
---|---|---|---|
Official | |||
Link |
To add a new dataset or task, follow the below steps. Any new datasets should have been used for evaluation in at least one published paper besides the one that introduced the dataset.
- Fork the repository.
- If your task is completely new, create a new file and link to it in the table of contents above. If not, add your task or dataset to the respective section of the corresponding file (in alphabetical order).
- Briefly describe the dataset/task and include relevant references.
- Describe the evaluation setting and evaluation metric.
- Show how an annotated example of the dataset/task looks like.
- Add a download link if available.
- Copy the below table and fill in at least two results (including the state-of-the-art) for your dataset/task (change Score to the metric of your dataset).
- Submit your change as a pull request.
Model | Score | Paper / Source | Code |
---|---|---|---|
Important note: We are currently transitioning from storing results in tables (as above) to using YAML files for their greater flexibility. This will allow us to highlight additional attributes and have interesting visualizations of results down the line.
If the results for your task are already stored in a YAML file, you can simply extend the YAML file using the same fields as the existing entries. To check that the resulting table looks as expected, you can build the site locally using Jekyll by following the steps detailed here:
- Check whether you have Ruby 2.1.0 or higher installed with
ruby --version
, otherwise install it. On OS X for instance, this can be done withbrew install ruby
. Make sure you also haveruby-dev
andzlib1g-dev
installed. - Install Bundler
gem install bundler
. If you run into issues with installing bundler on OS X, have a look here for troubleshooting tips. Also try refreshing the terminal. - Clone the repo locally:
git clone https://github.com/sebastianruder/NLP-progress
- Navigate to the repo with
cd NLP-progress
- Install Jekyll:
bundle install
- Run the Jekyll site locally:
bundle exec jekyll serve
- You can now preview the local Jekyll site in your browser at
http://localhost:4000
.
- Add a column for code (see above) to each table and a link to the source code to each method.
- Add pointers on how to retrieve data.
- Provide more details regarding the evaluation setup of each task.
- Add an example to every task/dataset.
- Add statistics to every dataset.
- Provide a description and details for every task / dataset.
- Add a table of contents to every file (particularly the large ones).
- We could potentially use readthedocs to provide a clearer structure.
- All current datasets in this list are for the English language (except for UD). In a separate section, we could add datasets for other languages.