Doc2Vec on the PubMed corpus: study of a new approach to generate related articles
PubMed is the biggest and most used bibliographic database worldwide, hosting more than 26M biomedical publications. One of its useful features is the "similar articles" section, allowing the end-user to find scientific articles linked to the consulted document in term of context. The aim...
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Zusammenfassung: | PubMed is the biggest and most used bibliographic database worldwide, hosting
more than 26M biomedical publications. One of its useful features is the
"similar articles" section, allowing the end-user to find scientific articles
linked to the consulted document in term of context. The aim of this study is
to analyze whether it is possible to replace the statistic model PubMed Related
Articles (pmra) with a document embedding method. Doc2Vec algorithm was used to
train models allowing to vectorize documents. Six of its parameters were
optimised by following a grid-search strategy to train more than 1,900 models.
Parameters combination leading to the best accuracy was used to train models on
abstracts from the PubMed database. Four evaluations tasks were defined to
determine what does or does not influence the proximity between documents for
both Doc2Vec and pmra. The two different Doc2Vec architectures have different
abilities to link documents about a common context. The terminological
indexing, words and stems contents of linked documents are highly similar
between pmra and Doc2Vec PV-DBOW architecture. These algorithms are also more
likely to bring closer documents having a similar size. In contrary, the manual
evaluation shows much better results for the pmra algorithm. While the pmra
algorithm links documents by explicitly using terminological indexing in its
formula, Doc2Vec does not need a prior indexing. It can infer relations between
documents sharing a similar indexing, without any knowledge about them,
particularly regarding the PV-DBOW architecture. In contrary, the human
evaluation, without any clear agreement between evaluators, implies future
studies to better understand this difference between PV-DBOW and pmra
algorithm. |
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DOI: | 10.48550/arxiv.1911.11698 |