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ZENODO
Dataset . 2021
Data sources: Datacite
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ZENODO
Dataset . 2021
Data sources: Datacite
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ZENODO
Dataset . 2021
Data sources: ZENODO
ZENODO
Dataset . 2021
Data sources: ZENODO
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British Library Books genre detection model

Authors: van Strien, Daniel;

British Library Books genre detection model

Abstract

Model description This model is intended to predict, from the title of a book, whether it is 'fiction' or 'non-fiction'. This model was trained on data created from the Digitised printed books (18th-19th Century) book collection. The datasets in this collection are comprised and derived from 49,455 digitised books (65,227 volumes), mainly from the 19th Century. This dataset is dominated by English language books and includes books in several other languages in much smaller numbers. This model was originally developed for use as part of the Living with Machines project to be able to 'segment' this large dataset of books into different categories based on a 'crude' classification of genre i.e. whether the title was `fiction` or `non-fiction`. The model's training data (discussed more below) primarily consists of 19th Century book titles from the British Library Digitised printed books (18th-19th century) collection. These books have been catalogued according to British Library cataloguing practices. The model is likely to perform worse on any book titles from earlier or later periods. While the model is multilingual, it has training data in non-English book titles; these appear much less frequently. How to use To use this within fastai, first install version 2 of the fastai library. Following the documentation instructions. Once you have fastai installed, you can use the model as follows: from fastai.text.all import load_learner learn = load_learner("20210928-model.pkl") learn.predict("Oliver Twist") Limitations and bias The model was developed based on data from the British Library's Digitised printed books (18th-19th Century) collection. This dataset is not representative of books from the period covered with biases towards certain types (travel) and a likely absence of books that were difficult to digitise. The formatting of the British Library books corpus titles may differ from other collections, resulting in worse performance on other collections. It is recommended to evaluate the performance of the model before applying it to your own data. Likely, this model won't perform well for contemporary book titles without further fine-tuning. Training data The training data for this model will be available from the British Libary Research Repository shortly. The training data was created using the Zooniverse platform. British Library cataloguers carried out the majority of the annotations used as training data. More information on the process of creating the training data will be available soon. Training procedure Model training was carried out using the fastai library version 2.5.2. The notebook using for training the model will be available at: https://github.com/Living-with-machines/bl-books-genre-prediction Eval result The model was evaluated on a held out test set: precision recall f1-score support Fiction 0.91 0.88 0.90 296 Non-fiction 0.94 0.95 0.95 554 accuracy 0.93 850 macro avg 0.93 0.92 0.92 850 weighted avg 0.93 0.93 0.93 850

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Keywords

machine learning, genre, GLAM, natural language processing, LSTM, NLP, fastai

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