Title :
An IR-Aided Machine Learning Framework for the BioCreative II.5 Challenge
Author :
Cao, Yonggang ; Li, Zuofeng ; Liu, Feifan ; Agarwal, Shashank ; Zhang, Qing ; Yu, Hong
Author_Institution :
Coll. of Health Sci., Univ. of Wisconsin-Milwaukee, Milwaukee, WI, USA
Abstract :
The team at the University of Wisconsin-Milwaukee developed an information retrieval and machine learning framework. Our framework requires only the standardized training data and depends upon minimal external knowledge resources and minimal parsing. Within the framework, we built our text mining systems and participated for the first time in all three BioCreative II.5 Challenge tasks. The results show that our systems performed among the top five teams for raw F1 scores in all three tasks and came in third place for the homonym ortholog F1 scores for the INT task. The results demonstrated that our IR-based framework is efficient, robust, and potentially scalable.
Keywords :
biology computing; information retrieval; learning (artificial intelligence); medical computing; text analysis; BioCreative II.5 challenge; IR aided machine learning framework; information retrieval; minimal external knowledge resource; minimal parsing; text mining systems; Bioinformatics (genome or protein) databases; information search and retrieval; systems and software; text mining.; Artificial Intelligence; Computational Biology; Data Mining; Databases, Genetic; Information Storage and Retrieval; Protein Interaction Mapping; Wisconsin;
Journal_Title :
Computational Biology and Bioinformatics, IEEE/ACM Transactions on
DOI :
10.1109/TCBB.2010.56