dc.contributor.author |
Pylieva, Hanna
|
|
dc.date.accessioned |
2019-02-19T15:49:34Z |
|
dc.date.available |
2019-02-19T15:49:34Z |
|
dc.date.issued |
2019 |
|
dc.identifier.citation |
Pylieva, Hanna. Detection of Difficult for Understanding Medical Words using Deep Learning : Master Thesis : manuscript / Hanna Pylieva ; Supervisor Artem Chernodub, Ph. D.; Ukrainian Catholic University, Department of Computer Sciences. – Lviv : [s.n.], 2019. – 42 p. : ill. |
uk |
dc.identifier.uri |
http://er.ucu.edu.ua/handle/1/1336 |
|
dc.language.iso |
en |
uk |
dc.subject |
Medical Words |
uk |
dc.subject |
Medical Understandability Text Embeddings |
uk |
dc.subject |
Deep Learning |
uk |
dc.title |
Detection of Difficult for Understanding Medical Words using Deep Learning |
uk |
dc.type |
Preprint |
uk |
dc.status |
Публікується вперше |
uk |
dc.description.abstracten |
In the medical domain, non-specialized users often require a better understanding
of medical information provided by doctors. In this work, we address this need.
We introduce novel embeddings received from RNN - FrnnMUTE (French RNN
Medical Understandability Text Embeddings) - and show how they help to improve
identification of readability and understandability of medical words when applied
as features in the classification task, reaching at maximum 87.0 F1 score. We also
found out that adding pre-trained FastText word embeddings to the feature set substantially
improves the performance of the classification model. For generalizability
study of different models, we introduce a methodology comprising three crossvalidation
scenarios which allow testing classifiers in real-world conditions: when
understanding of medical words by new users is unknown or when no information
about understandability of new words is provided for the model. |
uk |