A semantic parser based on the hidden vector state (HVS) model has been proposed for extracting protein-protein interactions. The HVS model is an extension of the basic discrete hidden Markov model, in which context is encoded as a stack-oriented state vector and state transitions are factored into a stack shift operation followed by the push of a new preterminal category label. In this paper, we investigate three different models, log-linear regression (LLR), neural networks (NNs) and support vector machines (SVMs), to rerank parses generated by the HVS model for protein-protein interactions extraction. Features used for reranking are manually defined which include the parse information, the structure information, and the complexity informa...
Objective The hidden vector state (HVS) model is an extension of the basic discrete Markov model ...
Background The majority of experimentally verified molecular interaction and biological pathway data...
We present results from a variety of learned information extraction systems for identify-ing human p...
Large quantity of knowledge, which is important for biological researchers to unveil the mechanism o...
A major challenge in text mining for biomedicine is automatically extracting protein-protein interac...
Since most knowledge about protein-protein interactions still hides in biological publications, ther...
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...
A major challenge in text mining for biomedicine is automatically extracting protein-protein interac...
A major challenge in text mining for biology and biomedicine is automatically extracting protein-pro...
This paper proposes a novel framework of incorporating protein-protein interactions (PPI) ontology k...
The knowledge about gene clusters and protein interactions is important for biological researchers t...
BACKGROUND: We participated in three of the protein-protein interaction subtasks of the Second BioCr...
We present results from a variety of learned information extraction systems for identifying human pr...
Abstract Background The majority of experimentally ve...
Objective The hidden vector state (HVS) model is an extension of the basic discrete Markov model ...
Background The majority of experimentally verified molecular interaction and biological pathway data...
We present results from a variety of learned information extraction systems for identify-ing human p...
Large quantity of knowledge, which is important for biological researchers to unveil the mechanism o...
A major challenge in text mining for biomedicine is automatically extracting protein-protein interac...
Since most knowledge about protein-protein interactions still hides in biological publications, ther...
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...
A major challenge in text mining for biomedicine is automatically extracting protein-protein interac...
A major challenge in text mining for biology and biomedicine is automatically extracting protein-pro...
This paper proposes a novel framework of incorporating protein-protein interactions (PPI) ontology k...
The knowledge about gene clusters and protein interactions is important for biological researchers t...
BACKGROUND: We participated in three of the protein-protein interaction subtasks of the Second BioCr...
We present results from a variety of learned information extraction systems for identifying human pr...
Abstract Background The majority of experimentally ve...
Objective The hidden vector state (HVS) model is an extension of the basic discrete Markov model ...
Background The majority of experimentally verified molecular interaction and biological pathway data...
We present results from a variety of learned information extraction systems for identify-ing human p...