Abstract:
The poor performance and the lack of manual labeled corpus are two main problems in the task of protein-protein interaction extraction. A novel hybrid method is proposed....Show MoreMetadata
Abstract:
The poor performance and the lack of manual labeled corpus are two main problems in the task of protein-protein interaction extraction. A novel hybrid method is proposed. Based on the individual characteristics of machine learning and pattern learning, this method utilizes learned patterns from pattern learning to generate pattern features by performing sequence alignment. The pattern features and word features are incorporated into the input feature set of machine learning algorithms. The semi-supervised method based on k-nearest neighbours classifier is also proposed to train the hybrid method from unlabeled data automatically. Experimental results show the improved performance over the baseline methods with the hybrid model and the efficieny of the semi-supervised method for the lack of labeled data.
Published in: 2013 Third International Conference on Intelligent System Design and Engineering Applications
Date of Conference: 16-18 January 2013
Date Added to IEEE Xplore: 07 February 2013
ISBN Information:
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Cites in Papers - |
Cites in Papers - IEEE (2)
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1.
Zhan Tang, Xupeng Kou, Houwei Feng, Dejian Cui, Weie Jia, Lin Li, "Semi-Supervised Protein-Protein Interactions Extraction Method Based on Knowledge Distillation and Virtual Adversarial Training", 2022 IEEE International Conference on Bioinformatics and Biomedicine (BIBM), pp.3887-3889, 2022.
2.
Yun Niu, Hongmei Wu, Yuwei Wang, "Protein-Protein Interaction Identification Using a Similarity-Constrained Graph Model", IEEE/ACM Transactions on Computational Biology and Bioinformatics, vol.16, no.2, pp.607-616, 2019.
Cites in Papers - Other Publishers (1)
1.
Zhan Tang, Xuchao Guo, Lei Diao, Zhao Bai, Longhe Wang, Lin Li, "Semi-supervised Protein-Protein Interactions Extraction Method Based on Label Propagation and Sentence Embedding", Natural Language Processing and Chinese Computing, vol.13552, pp.113, 2022.