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An Efficient Classification of Neonates Cry Using Extreme Gradient Boosting-Assisted Grouped-Support-Vector Network.

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TLDR
In this paper, an extreme gradient boosting-powered grouped-support-vector network was proposed for the classification of newborn infants' emotional distress, which achieved a mean accuracy of around 91% for most scenarios.
Abstract
The cry is a loud, high pitched verbal communication of infants. The very high fundamental frequency and resonance frequency characterize a neonatal infant cry having certain sudden variations. Furthermore, in a tiny duration solitary utterance, the cry signal also possesses both voiced and unvoiced features. Mostly, infants communicate with their caretakers through cries, and sometimes, it becomes difficult for the caretakers to comprehend the reason behind the newborn infant cry. As a result, this research proposes a novel work for classifying the newborn infant cries under three groups such as hunger, sleep, and discomfort. For each crying frame, twelve features get extracted through acoustic feature engineering, and the variable selection using random forests was used for selecting the highly discriminative features among the twelve time and frequency domain features. Subsequently, the extreme gradient boosting-powered grouped-support-vector network is deployed for neonate cry classification. The empirical results show that the proposed method could effectively classify the neonate cries under three different groups. The finest experimental results showed a mean accuracy of around 91% for most scenarios, and this exhibits the potential of the proposed extreme gradient boosting-powered grouped-support-vector network in neonate cry classification. Also, the proposed method has a fast recognition rate of 27 seconds in the identification of these emotional cries.

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An Unsupervised Deep Learning-Based Model Using Multiomics Data to Predict Prognosis of Patients with Stomach Adenocarcinoma

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References
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Hybrid genetic algorithm and a fuzzy logic classifier for heart disease diagnosis

TL;DR: Thorough experimental analysis shows that the adaptive genetic algorithm with fuzzy logic (AGAFL) model has outperformed current existing methods in diagnosing heart disease at early stages.
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Early detection of diabetic retinopathy using pca-firefly based deep learning model

TL;DR: The proposed model is evaluated against the prevalent machine learning models and the results justify the superiority of the proposed model in terms of Accuracy, Precision, Recall, Sensitivity and Specificity.
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Hand gesture classification using a novel CNN-crow search algorithm

TL;DR: A crow search-based convolution neural networks model has been implemented in gesture recognition pertaining to the HCI domain and generates 100 percent training and testing accuracy that justifies the superiority of the model against traditional state-of-the-art models.
Journal ArticleDOI

Preserving Data Privacy via Federated Learning: Challenges and Solutions

TL;DR: This article focuses on the most significant challenges associated with the preservation of data privacy via federated learning and valuable attack mechanisms are discussed, and associated solutions are highlighted to the corresponding attack.
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Application of Pattern Recognition Techniques to the Classification of Full-Term and Preterm Infant Cry

TL;DR: This article aims at exploiting differences between full-term and preterm infant cry with robust automatic acoustical analysis and data mining techniques and shows that the best feature set is made up by 10 parameters capable to assess differences between preterm and full- term newborns with about 87% of accuracy.
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