2022
DOI: 10.1155/2022/4961203
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[Retracted] Multidimensional State Data Reduction and Evaluation of College Students’ Mental Health Based on SVM

Abstract: In response to the shortcomings of the traditional methods for evaluating the mental health status of college students in terms of computational complexity and low accuracy, a method for evaluating the mental health status of college students based on data reduction and support vector machines was proposed. A model experiment containing internal and external personality tendency classification, anxiety, and depression dichotomy was designed using logistic regression analysis, information entropy, and SVM algor… Show more

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Cited by 8 publications
(4 citation statements)
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“…The DEPOSE method achieved excellent results on various human pose public datasets and achieved the best results at that time, laying the foundation of deep learning in the field of human pose estimation. Subsequently, more deep learning-based pose estimation algorithms were proposed, typically represented by the convolutional pose machine proposed by Shin-En et al and the stacked hourglass network proposed by Dong et al Since convolutional neural networks can automatically learn features of objects and combine them, avoiding the difficulty of designing features manually, with the development of heterogeneous computing chips such as GPUs, training large convolutional neural networks has become possible [ 8 ]. There is no doubt that deep learning will be the dominant approach in the field of human pose estimation for some time to come.…”
Section: Related Workmentioning
confidence: 99%
“…The DEPOSE method achieved excellent results on various human pose public datasets and achieved the best results at that time, laying the foundation of deep learning in the field of human pose estimation. Subsequently, more deep learning-based pose estimation algorithms were proposed, typically represented by the convolutional pose machine proposed by Shin-En et al and the stacked hourglass network proposed by Dong et al Since convolutional neural networks can automatically learn features of objects and combine them, avoiding the difficulty of designing features manually, with the development of heterogeneous computing chips such as GPUs, training large convolutional neural networks has become possible [ 8 ]. There is no doubt that deep learning will be the dominant approach in the field of human pose estimation for some time to come.…”
Section: Related Workmentioning
confidence: 99%
“…Crucially, the intervention algorithm incorporates robust crisis management protocols to address acute situations or emergencies effectively. These protocols outline clear steps for identifying, assessing, and managing crises, including procedures for mobilizing emergency resources, accessing immediate support, and coordinating with external healthcare providers as needed [16]. By prioritizing student safety and well-being, these protocols serve as a critical component of the algorithm's overarching framework.…”
Section: Introductionmentioning
confidence: 99%
“…An Enobio amplifier from Neuroelectrics is used in this study. Enobio has been used for the acquisition and processing of EEG signals in research related to different BCI applications, such as subjective behaviors in marketing [91] and other activities [92][93][94][95][96].…”
Section: Introductionmentioning
confidence: 99%