A major challenge in text mining for biomedicine is automatically extracting protein-protein interactions from the vast amount of biomedical literature. We have constructed an information extraction system based on the Hidden Vector State (HVS) model for protein-protein interactions. The HVS model can be trained using only lightly annotated data whilst simultaneously retaining sufficient ability to capture the hierarchical structure. When applied in extracting protein-protein interactions, we found that it performed better than other established statistical methods and achieved 61.5% in F-score with balanced recall and precision values. Moreover, the statistical nature of the pure data-driven HVS model makes it intrinsically robust and it c...
We present results from a variety of learned information extraction systems for identifying human pr...
A semantic parser based on the hidden vector state (HVS) model has been proposed for extracting prot...
Automatically extracting information from biomedical text holds the promise of easily consolidating ...
A major challenge in text mining for biomedicine is automatically extracting protein-protein interac...
A major challenge in text mining for biomedicine is automatically extracting protein-protein interac...
Large quantity of knowledge, which is important for biological researchers to unveil the mechanism o...
In the field of bioinformatics in solving biological problems, the huge amount of knowledge is often...
Abstract. In the field of bioinformatics in solving biological problems, the huge amount of knowledg...
This paper proposes a novel framework of incorporating protein-protein interactions (PPI) ontology k...
A major challenge in text mining for biology and biomedicine is automatically extracting protein-pro...
Since most knowledge about protein-protein interactions still hides in biological publications, ther...
During the last decade, biomedicine has witnessed a tremendous development. Large amounts of experim...
The knowledge about gene clusters and protein interactions is important for biological researchers t...
Objective: Biomedical events extraction concerns about events describing changes on the state of bio...
Automatically extracting information from biomedical text holds the promise of easily consolidating ...
We present results from a variety of learned information extraction systems for identifying human pr...
A semantic parser based on the hidden vector state (HVS) model has been proposed for extracting prot...
Automatically extracting information from biomedical text holds the promise of easily consolidating ...
A major challenge in text mining for biomedicine is automatically extracting protein-protein interac...
A major challenge in text mining for biomedicine is automatically extracting protein-protein interac...
Large quantity of knowledge, which is important for biological researchers to unveil the mechanism o...
In the field of bioinformatics in solving biological problems, the huge amount of knowledge is often...
Abstract. In the field of bioinformatics in solving biological problems, the huge amount of knowledg...
This paper proposes a novel framework of incorporating protein-protein interactions (PPI) ontology k...
A major challenge in text mining for biology and biomedicine is automatically extracting protein-pro...
Since most knowledge about protein-protein interactions still hides in biological publications, ther...
During the last decade, biomedicine has witnessed a tremendous development. Large amounts of experim...
The knowledge about gene clusters and protein interactions is important for biological researchers t...
Objective: Biomedical events extraction concerns about events describing changes on the state of bio...
Automatically extracting information from biomedical text holds the promise of easily consolidating ...
We present results from a variety of learned information extraction systems for identifying human pr...
A semantic parser based on the hidden vector state (HVS) model has been proposed for extracting prot...
Automatically extracting information from biomedical text holds the promise of easily consolidating ...