首页> 外文会议>IEEE International Conference on Computational Intelligence and Computing Research >Reducing affliction using paternity bearing and addiction of digital gadgets by classification algorithm
【24h】

Reducing affliction using paternity bearing and addiction of digital gadgets by classification algorithm

机译:通过父子关系减轻痛苦,并通过分类算法减少数字产品的成瘾

获取原文

摘要

Nowadays, stress is a major issue for juvenile. Stress means, the changes in human behavior or physical behavior. For juvenile stress can turns on biological, chemical and hormonal changes. In this paper, the stress of juvenile can be predicted according to the paternity behavior. Due to digitalized world everybody is in need of digital gadgets like Play station, Tablet, Smart Phones and many gaming devices. The stress of teens is measured due to more usage of Digital gadgets. Bayesian classification is a effective method for prediction, it gives more efficiency than other algorithms in computing. The model is developed by supervised learning methodology. The possibility of stress is more for a juvenile, it leads to severe depression, addiction to drugs or committing suicides, effecting physical health, effecting academic output etc. This research paper will target to avoid such complication of teenagers stress. Using the model, stress of each teenager will be predicted and further reference will be provided for counseling or treatment and also increasing parental care to juvenile. Supervised learning methodology is applied for the efficiency of Stress predictor This research papers is a new methodology to predict stress exclusively for teen agers.
机译:如今,压力已成为青少年的主要问题。压力是指人类行为或身体行为的变化。对于青少年来说,压力可以打开生物,化学和激素的变化。在本文中,可以根据亲子行为预测少年的压力。由于数字化世界,每个人都需要诸如Play Station,平板电脑,智能手机和许多游戏设备之类的数字产品。由于更多使用了数码产品,因此可以衡量青少年的压力。贝叶斯分类是一种有效的预测方法,在计算中比其他算法具有更高的效率。该模型是通过监督学习方法开发的。对于青少年来说,压力的可能性更大,它会导致严重的抑郁,吸毒或自杀,影响身体健康,影响学术成果等。本研究旨在避免青少年压力的这种复杂化。使用该模型,可以预测每个少年的压力,并将为他们提供咨询或治疗以及增加对青少年的父母照管服务。监督学习方法可用于预测压力的效率本研究论文是专门针对青少年的预测压力的新方法。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号