2023
DOI: 10.1109/access.2023.3320042
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Ensemble Multifeatured Deep Learning Models and Applications: A Survey

Satheesh Abimannan,
El-Sayed M. El-Alfy,
Yue-Shan Chang
et al.

Abstract: Ensemble multifeatured deep learning methodology has emerged as a powerful approach to overcome the limitations of single deep learning models in terms of generalization, robustness, and performance. This survey provides an extended review of ensemble multifeatured deep learning models, and their applications, challenges, and future directions. We explore potential applications of these models across various domains, including computer vision, medical imaging, natural language processing, and speech recognitio… Show more

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Cited by 11 publications
(3 citation statements)
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“…The proposed TT-TBAD for anomaly detection is evaluated against state-of-the-art models, including LSTM-AE, GRU, LSTM, ConvLSTM-AE, and Attention-Bi-LSTM, with an assessment based on accuracy [ 46 ], precision [ 47 ], recall [ 48 ], and the F1 score [ 49 ]. The comparative study involves the utilization of a data annotation mechanism to label the partial test dataset, ensuring suitability for the detection evaluation.…”
Section: Resultsmentioning
confidence: 99%
“…The proposed TT-TBAD for anomaly detection is evaluated against state-of-the-art models, including LSTM-AE, GRU, LSTM, ConvLSTM-AE, and Attention-Bi-LSTM, with an assessment based on accuracy [ 46 ], precision [ 47 ], recall [ 48 ], and the F1 score [ 49 ]. The comparative study involves the utilization of a data annotation mechanism to label the partial test dataset, ensuring suitability for the detection evaluation.…”
Section: Resultsmentioning
confidence: 99%
“…To address the limitations of the current research status, this study fully considers the impact of multiple key factors on the longevity of landslide dams and constructs a Stacking ensemble learning framework to predict the longevity of landslide dams. Stacking ensemble learning is a machine learning method that combines the predictions of multiple base learners to improve overall prediction performance [24][25][26] . By combining the output results of multiple models, the final prediction results are more accurate and reliable, with better generalization performance.…”
Section: Figure 1 Field Photo Of Ldammentioning
confidence: 99%
“…Data preprocessing encompasses the elimination of irrelevant, missing values, and undesired data from the acquired dataset. This process includes three critical phases: data filtering, data normalization, and error correction [38]. In the proposed methodology, we employ the Generative Adversarial Network algorithm for data filtering, which is an artificial neural network comprising two key components: the generator (G) and the discriminator (D).…”
Section: ) Problem Formulation and The Mechanism Of Ganmentioning
confidence: 99%