2018
DOI: 10.11114/jets.v6i2.2836
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Explaining the Impact of Disabled Children’ Engagement with Physical Activity on Their Parents’ Smartphone Addiction Levels: A Sequential Explanatory Mixed Methods Research

Abstract: In this research, quantitative findings and qualitative follow-up themes were used to quantify, conceptualize and finally try to explain the impact of disabled children" engagement with physical activity on their parents" smartphone addiction levels. An initial phase of quantitative investigation was conducted with 116 parents. Analyses of statistical trends indicated that male parents use smartphones more often than female. Furthermore, quantitizing data towards parents" smartphone addiction showed that paren… Show more

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Cited by 2 publications
(1 citation statement)
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“…Previously, due to the fact that the convolution of the neural network output only considered the influence of one input without considering the influence of the other input, the convolution through neural network can be a success in the field of computer vision, but, in some situations related to the time order (such as video of the next frame document context and prediction), performance is unsatisfactory, and the neural network can develop cycles [ 16 ]. The recurrent neural network not only considers the input of the previous moment but also remembers the previous information and applies it to the calculation of the current output; that is, the nodes between the hidden layer are connected instead of unconnected, and the input of the hidden layer includes not only the output of the input layer but also the output of the hidden layer at the last moment.…”
Section: Improved Deep Neural Network Algorithm Theorymentioning
confidence: 99%
“…Previously, due to the fact that the convolution of the neural network output only considered the influence of one input without considering the influence of the other input, the convolution through neural network can be a success in the field of computer vision, but, in some situations related to the time order (such as video of the next frame document context and prediction), performance is unsatisfactory, and the neural network can develop cycles [ 16 ]. The recurrent neural network not only considers the input of the previous moment but also remembers the previous information and applies it to the calculation of the current output; that is, the nodes between the hidden layer are connected instead of unconnected, and the input of the hidden layer includes not only the output of the input layer but also the output of the hidden layer at the last moment.…”
Section: Improved Deep Neural Network Algorithm Theorymentioning
confidence: 99%