TY - JOUR
T1 - Comparison of character-level and part of speech features for name recognition in biomedical texts
AU - Collier, Nigel
AU - Takeuchi, Koichi
N1 - Funding Information:
This work was supported in part by the Japanese Ministry of Education and Science (Grant No. 14701020) and by a Leadership Fund grant from the National Institute of Informatics. The authors gratefully acknowledge Jun-ichi Tsujii (University of Tokyo) for providing the data set Bio1, Tony Mullen (NII) for his help in setting up experimental scripts, and the anonymous reviewers for their many helpful comments.
PY - 2004/12
Y1 - 2004/12
N2 - The immense volume of data which is now available from experiments in molecular biology has led to an explosion in reported results most of which are available only in unstructured text format. For this reason there has been great interest in the task of text mining to aid in fact extraction, document screening, citation analysis, and linkage with large gene and gene-product databases. In particular there has been an intensive investigation into the named entity (NE) task as a core technology in all of these tasks which has been driven by the availability of high volume training sets such as the GENIA v3.02 corpus. Despite such large training sets accuracy for biology NE has proven to be consistently far below the high levels of performance in the news domain where F scores above 90 are commonly reported which can be considered near to human performance. We argue that it is crucial that more rigorous analysis of the factors that contribute to the model's performance be applied to discover where the underlying limitations are and what our future research direction should be. Our investigation in this paper reports on variations of two widely used feature types, part of speech (POS) tags and character-level orthographic features, and makes a comparison of how these variations influence performance. We base our experiments on a proven state-of-the-art model, support vector machines using a high quality subset of 100 annotated MEDLINE abstracts. Experiments reveal that the best performing features are orthographic features with F score of 72.6. Although the Brill tagger trained in-domain on the GENIA v3.02p POS corpus gives the best overall performance of any POS tagger, at an F score of 68.6, this is still significantly below the orthographic features. In combination these two features types appear to interfere with each other and degrade performance slightly to an F score of 72.3.
AB - The immense volume of data which is now available from experiments in molecular biology has led to an explosion in reported results most of which are available only in unstructured text format. For this reason there has been great interest in the task of text mining to aid in fact extraction, document screening, citation analysis, and linkage with large gene and gene-product databases. In particular there has been an intensive investigation into the named entity (NE) task as a core technology in all of these tasks which has been driven by the availability of high volume training sets such as the GENIA v3.02 corpus. Despite such large training sets accuracy for biology NE has proven to be consistently far below the high levels of performance in the news domain where F scores above 90 are commonly reported which can be considered near to human performance. We argue that it is crucial that more rigorous analysis of the factors that contribute to the model's performance be applied to discover where the underlying limitations are and what our future research direction should be. Our investigation in this paper reports on variations of two widely used feature types, part of speech (POS) tags and character-level orthographic features, and makes a comparison of how these variations influence performance. We base our experiments on a proven state-of-the-art model, support vector machines using a high quality subset of 100 annotated MEDLINE abstracts. Experiments reveal that the best performing features are orthographic features with F score of 72.6. Although the Brill tagger trained in-domain on the GENIA v3.02p POS corpus gives the best overall performance of any POS tagger, at an F score of 68.6, this is still significantly below the orthographic features. In combination these two features types appear to interfere with each other and degrade performance slightly to an F score of 72.3.
KW - Orthography
KW - Part of speech
KW - Support vector machines
KW - Text mining
UR - http://www.scopus.com/inward/record.url?scp=8444242136&partnerID=8YFLogxK
UR - http://www.scopus.com/inward/citedby.url?scp=8444242136&partnerID=8YFLogxK
U2 - 10.1016/j.jbi.2004.08.008
DO - 10.1016/j.jbi.2004.08.008
M3 - Article
C2 - 15542016
AN - SCOPUS:8444242136
SN - 1532-0464
VL - 37
SP - 423
EP - 435
JO - Journal of Biomedical Informatics
JF - Journal of Biomedical Informatics
IS - 6
ER -