Title :
Chemical Name Extraction Based on Automatic Training Data Generation and Rich Feature Set
Author :
Su Yan ; Spangler, W. Scott ; Ying Chen
Author_Institution :
IBM Almaden Res. Center, San Jose, CA, USA
Abstract :
The automation of extracting chemical names from text has significant value to biomedical and life science research. A major barrier in this task is the difficulty of getting a sizable and good quality data to train a reliable entity extraction model. Another difficulty is the selection of informative features of chemical names, since comprehensive domain knowledge on chemistry nomenclature is required. Leveraging random text generation techniques, we explore the idea of automatically creating training sets for the task of chemical name extraction. Assuming the availability of an incomplete list of chemical names, called a dictionary, we are able to generate well-controlled, random, yet realistic chemical-like training documents. We statistically analyze the construction of chemical names based on the incomplete dictionary, and propose a series of new features, without relying on any domain knowledge. Compared to state-of-the-art models learned from manually labeled data and domain knowledge, our solution shows better or comparable results in annotating real-world data with less human effort. Moreover, we report an interesting observation about the language for chemical names. That is, both the structural and semantic components of chemical names follow a Zipfian distribution, which resembles many natural languages.
Keywords :
biochemistry; bioinformatics; biomedical engineering; dictionaries; feature selection; knowledge acquisition; medical computing; natural language processing; nomenclature; semantic networks; text analysis; Zipfian distribution; automatic training data generation; biomedical research; chemical name construction; chemical name extraction; chemical name language; chemical names; chemistry nomenclature; comprehensive domain knowledge; data automation; entity extraction model; good quality data; incomplete dictionary; informative feature selection; life science research; manually labeled data; natural languages; random text generation techniques; real-world data annotation; realistic chemical-like training documents; rich feature set; semantic components; sizable data; structural components; training set; Chemical extraction; Data mining; Data models; Feature extraction; Hidden Markov models; Systematics; Training; Chemical name extraction; IUPAC names; conditional random fields; drug research; feature design; formal grammar; patent analysis;
Journal_Title :
Computational Biology and Bioinformatics, IEEE/ACM Transactions on
DOI :
10.1109/TCBB.2013.101