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Scholarly

Category classification of scientific papers.

Given a title and an abstract of a paper, the model will predict a list of categories to which the paper belongs. These categories are the 148 categories used on arXiv.

Usage

A demonstration of the model can be found at ttilt.dk/scholarly. Note that you're also free to write LaTeX equations like $\frac{1}{5}$.

A REST API is also available at the same endpoint, with arguments title and abstract. You will then receive a JSON response containing a list of lists, with each inner list containing the category id, category description and the probability. The list will only include results with probabilities at least 50%, and the list is sorted descending by probability. Here is an example of a query.

Performance

The score that I was using was the sample-average F1 score, which means that for every sample I'm computing the F1 score of the predictions of the sample (note that we are in a multilabel setup), and averaging that over all the samples. If this was a multiclass setup (in particular binary classification) then this would simply correspond to accuracy. The difference is that in a multilabel setup the model can be partially correct, if it correctly predicts some of the categories.

The model ended up achieving a ~93% and ~65% validation sample-average F1 score on the master categories and all the categories, respectively. Training the model requires ~17GB memory and it takes roughly a day to train on an Nvidia P100 GPU. This was trained on the BlueCrystal Phase 4 compute cluster at University of Bristol, UK.

Documentation and data

This model was trained on all titles and abstracts from all of arXiv up to and including year 2019, which were all scraped from their API. The scraping script can be found in arxiv_scraper.py. All the data can be found at

https://filedn.com/lRBwPhPxgV74tO0rDoe8SpH/scholarly_data

The main data file is the SQLite file arxiv_data.db, which contains 6 tables:

  • cats, containing the 148 arXiv categories
  • master_cats, containing the arXiv "master categories", which are 6 aggregates of the categories into things like Mathematics and Physics
  • papers, containing the id, date, title and abstract of papers
  • papers_cats, which links papers to their categories
  • authors, containing author names
  • papers_authors, which links authors to their papers

From this database I extracted the dataset arxiv_data.tsv, which contains the title and abstract for every paper in the database, along with a binary column for every category, denoting whether a paper belongs to that category. LaTeX equations in titles and abstracts have been replaced by "-EQN-" at this stage. Everything related to the database can be found in the db.py script.

A preprocessed dataset is also available, arxiv_data_pp.tsv, in which the titles and abstracts have been merged as "-TITLE_START- {title} -TITLE_END- -ABSTRACT_START- {abstract} -ABSTRACT_END-", and the texts have been tokenised using the SpaCy en_core_web_sm tokeniser. The resulting texts have all tokens separated by spaces, so that simply splitting the texts by whitespace will yield the tokenised versions. The preprocessing is done in the data.py script.

Two JSON files, cats.json and mcat_dict.json are also available, which are basically the cats table from the database and a dictionary to convert from a category to its master category, respectively.

I trained FastText vectors on the entire corpus, and the resulting model can be found as fasttext_model.bin, with the vectors themselves belonging to the text file fasttext. The script I used to train these can be found in train_fasttext.py.

In case you're like me and are having trouble working with the entire dataset, there's also the arxiv_data_mini_pp.tsv dataset, which simply consists of 100,000 randomly samples papers from arxiv_data_pp.tsv. You can make your own versions of these using the make_mini.py script, which constructs the smaller datasets without loading the larger one into memory.

The model itself is a simplified version of the new SHA-RNN model, trained from scratch on the BlueCrystal Phase 4 compute cluster at the University of Bristol, UK. All scripts pertaining to the model are modules.py, training.py and inference.py.

Contact

If you have any questions regarding the data or model, please contact me at saattrupdan at gmail dot com.