Synonym extraction and abbreviation expansion with ensembles of

Por um escritor misterioso
Last updated 26 dezembro 2024
Synonym extraction and abbreviation expansion with ensembles of
Background Terminologies that account for variation in language use by linking synonyms and abbreviations to their corresponding concept are important enablers of high-quality information extraction from medical texts. Due to the use of specialized sub-languages in the medical domain, manual construction of semantic resources that accurately reflect language use is both costly and challenging, often resulting in low coverage. Although models of distributional semantics applied to large corpora provide a potential means of supporting development of such resources, their ability to isolate synonymy from other semantic relations is limited. Their application in the clinical domain has also only recently begun to be explored. Combining distributional models and applying them to different types of corpora may lead to enhanced performance on the tasks of automatically extracting synonyms and abbreviation-expansion pairs. Results A combination of two distributional models – Random Indexing and Random Permutation – employed in conjunction with a single corpus outperforms using either of the models in isolation. Furthermore, combining semantic spaces induced from different types of corpora – a corpus of clinical text and a corpus of medical journal articles – further improves results, outperforming a combination of semantic spaces induced from a single source, as well as a single semantic space induced from the conjoint corpus. A combination strategy that simply sums the cosine similarity scores of candidate terms is generally the most profitable out of the ones explored. Finally, applying simple post-processing filtering rules yields substantial performance gains on the tasks of extracting abbreviation-expansion pairs, but not synonyms. The best results, measured as recall in a list of ten candidate terms, for the three tasks are: 0.39 for abbreviations to long forms, 0.33 for long forms to abbreviations, and 0.47 for synonyms. Conclusions This study demonstrates that ensembles of semantic spaces can yield improved performance on the tasks of automatically extracting synonyms and abbreviation-expansion pairs. This notion, which merits further exploration, allows different distributional models – with different model parameters – and different types of corpora to be combined, potentially allowing enhanced performance to be obtained on a wide range of natural language processing tasks.
Synonym extraction and abbreviation expansion with ensembles of
Exploring patterns in dictionary definitions for synonym
Synonym extraction and abbreviation expansion with ensembles of
Biomolecules, Free Full-Text
Synonym extraction and abbreviation expansion with ensembles of
Enhanced abbreviation–expansion pair detection for glossary term
Synonym extraction and abbreviation expansion with ensembles of
Disjoint corpus ensemble results on clinical + medical development
Synonym extraction and abbreviation expansion with ensembles of
A deep database of medical abbreviations and acronyms for natural
Synonym extraction and abbreviation expansion with ensembles of
PDF) Synonym extraction and abbreviation expansion with ensembles
Synonym extraction and abbreviation expansion with ensembles of
Using NLP in openEHR archetypes retrieval to promote
Synonym extraction and abbreviation expansion with ensembles of
Expansion of medical vocabularies using distributional semantics
Synonym extraction and abbreviation expansion with ensembles of
Language model-based automatic prefix abbreviation expansion
Synonym extraction and abbreviation expansion with ensembles of
Ensembles of semantic spaces for synonym extraction and
Synonym extraction and abbreviation expansion with ensembles of
PDF] Balancing the composition of word embeddings across
Synonym extraction and abbreviation expansion with ensembles of
PDF] Balancing the composition of word embeddings across

© 2014-2024 jeart-turkiye.com. All rights reserved.