Publication | Open Access
Evolving Long Short-Term Memory Network-Based Text Classification
18
Citations
36
References
2022
Year
Natural Language ProcessingSequence ModellingEngineeringMachine LearningData ScienceMachine Learning ModelAutomatic ClassificationEvolving Neural NetworkKnowledge DiscoveryLstm NetworksDocument ClassificationElstm NetworkDeep LearningNeural Architecture SearchLstm NetworkRecurrent Neural NetworkLinguisticsText Mining
Recently, long short-term memory (LSTM) networks are extensively utilized for text classification. Compared to feed-forward neural networks, it has feedback connections, and thus, it has the ability to learn long-term dependencies. However, the LSTM networks suffer from the parameter tuning problem. Generally, initial and control parameters of LSTM are selected on a trial and error basis. Therefore, in this paper, an evolving LSTM (ELSTM) network is proposed. A multiobjective genetic algorithm (MOGA) is used to optimize the architecture and weights of LSTM. The proposed model is tested on a well-known factory reports dataset. Extensive analyses are performed to evaluate the performance of the proposed ELSTM network. From the comparative analysis, it is found that the LSTM network outperforms the competitive models.
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