Intelligence model on sequence-based prediction of PPI using AISSO deep concept with hyperparameter tuning process
Preeti Thareja,
Rajender Singh Chhillar,
Sandeep Dalal
et al.
Abstract:Protein–protein interaction (PPI) prediction is vital for interpreting biological activities. Even though many diverse sorts of data and machine learning approaches have been employed in PPI prediction, performance still has to be enhanced. As a result, we adopted an Aquilla Influenced Shark Smell (AISSO)-based hybrid prediction technique to construct a sequence-dependent PPI prediction model. This model has two stages of operation: feature extraction and prediction. Along with sequence-based and Gene Ontology… Show more
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