Reaching Optimized Parameter Set, Protein Secondary Structure Prediction Using Neural Network
Jyotshna Dongardivev, Siby Abraham

TL;DR
This paper introduces an optimized neural network parameter set for protein secondary structure prediction, achieving improved accuracy through extensive experiments with various configurations and datasets.
Contribution
The study identifies a specific combination of encoding scheme, window size, hidden neurons, and learning algorithm that optimizes prediction accuracy.
Findings
Achieved 78% accuracy with the optimized parameter set.
Demonstrated monotonic convergence in training performance.
Provided a stabilized dataset cluster for reliable evaluation.
Abstract
We propose an optimized parameter set for protein secondary structure prediction using three layer feed forward back propagation neural network. The methodology uses four parameters viz. encoding scheme, window size, number of neurons in the hidden layer and type of learning algorithm. The input layer of the network consists of neurons changing from 3 to 19, corresponding to different window sizes. The hidden layer chooses a natural number from 1 to 20 as the number of neurons. The output layer consists of three neurons, each corresponding to known secondary structural classes viz. alpha helix, beta strands and coils respectively. It also uses eight different learning algorithms and nine encoding schemes. Exhaustive experiments were performed using non-homologues dataset. The experimental results were compared using performance measures like Q3, sensitivity, specificity, Mathew…
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