Developing Novel Robust Loss Functions-Based Classification Layers for DLLSTM Neural Networks

In this paper, we suggest improving the performance of developed activation function-based Deep Learning Long Short-Term Memory (DLLSTM) structures by employing robust loss functions like Mean Absolute Error ( MAE ) and Sum Squared Error ( SSE ) to create new classification layers. The classificatio...

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Veröffentlicht in:IEEE access 2023-01, Vol.11, p.1-1
Hauptverfasser: Houran, Mohamad Abou, Badry, Eman A., Abdel-Raman, Adel B., Essai Ali, Mohamed H., Hassan, Alaaeldien, Atallah, Hany A.
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Sprache:eng
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Zusammenfassung:In this paper, we suggest improving the performance of developed activation function-based Deep Learning Long Short-Term Memory (DLLSTM) structures by employing robust loss functions like Mean Absolute Error ( MAE ) and Sum Squared Error ( SSE ) to create new classification layers. The classification layer is the last layer in any DLLSTM neural network structure where the loss function resides. The LSTM is an improved recurrent neural network that fixes the problem of the vanishing gradient that goes away and other issues. Fast convergence and optimum performance depend on the loss function. Three loss functions (default( Crossentropyex ), ( MAE ) and ( SSE )) that compute the error between the actual and desired output for two distinct applications were used to examine the effectiveness of the suggested DLLSTM classifier. The results show that one of the suggested classifiers' specific loss functions ( SSE )) works better than other loss functions and does a great job. The suggested functions Softsign , Modified-Elliott, Root-sig, Bi-tanh1, Bi-tanh2, Sech and wave are more accurate than the tanh function.
ISSN:2169-3536
2169-3536
DOI:10.1109/ACCESS.2023.3275964