University of Wollongong
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HIME: Mining and Ensembling Heterogeneous Information for Protein Interaction Predictions

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conference contribution
posted on 2024-11-13, 20:10 authored by Huaming Chen, Yaochu Jin, Lei WangLei Wang, Chi-Hung Chi, Jun ShenJun Shen
esearch on protein-protein interactions (PPIs) data paves the way towards understanding the mechanisms of infectious diseases, however improving the prediction performance of PPIs of inter-species remains a challenge. Since one single type of sequence data such as amino acid composition may be deficient for high-quality prediction of protein interactions, we have investigated a broader range of heterogeneous information of sequences data. This paper proposes a novel framework for PPIs prediction based on Heterogeneous Information Mining and Ensembling (HIME) process to effectively learn from the interaction data. In particular, the proposed approach introduces an ensemble process together with substantial features that generate better performance of PPIs prediction task. The performance of the proposed framework is validated on real protein interaction datasets. The extensive experiments show that HIME achieves higher performance over all existing methods reported in literature so far.

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Citation

Chen, H., Jin, Y., Wang, L., Chi, C. & Shen, J. (2020). HIME: Mining and Ensembling Heterogeneous Information for Protein Interaction Predictions. IEEE International Joint Conference on Neural Networks (pp. 1-8). United States: IEEE.

Parent title

Proceedings of the International Joint Conference on Neural Networks

Language

English

RIS ID

138039

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