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Predicting Student Blood Pressure by Support Vector Machine Using Facebook

机译:支持向量机使用Facebook预测学生血压

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Predicting human blood pressure (B.P) is an important aspect of primary emotion using Facebook has not yet been investigated. Primary emotions help a person to express her/his feelings, thoughts and understanding the importance of social connections using Facebook. Facebook contribute rich environment of primary emotion and famous social site having collection of information that concerned with primary emotions. The well-known machine learning approaches have known as novel methods for doing prediction using SNS. Support Vector Machine (SVM) has recently been a strong machine learning and data mining tool. Our article, it is used to predict human BP. The dataset contain primary emotion and blood pressure that are collected using Facebook post that consists of formal text from come forward of hanyang university student. Current human B.P and those belonging up to six previous primary emotions and B.P values with respect to human emotion are given as input variables, while the blood pressure used as output parameter. The outcome shows that SVM can be prosperously applied for prediction of B.P through primary emotion. On the contrary, validations signify that the error statistics of SVM model marginally outperforms.
机译:尚未研究过使用Facebook预测人的血压(B.P)是主要情绪的重要方面。主要情感可以帮助人们表达自己的想法,思想,并理解使用Facebook进行社交联系的重要性。 Facebook贡献了丰富的原始情感环境和著名的社交网站,这些网站收集了与原始情感有关的信息。众所周知的机器学习方法是使用SNS进行预测的新颖方法。支持向量机(SVM)最近已经成为强大的机器学习和数据挖掘工具。我们的文章,它被用来预测人类的血压。该数据集包含使用Facebook帖子收集的主要情绪和血压,Facebook帖子由来自汉阳大学生挺身而出的正式文本组成。将当前人的B.P和之前属于六个主要情绪的人的B.P和相对于人的情绪的B.P值作为输入变量,而将血压用作输出参数。结果表明,支持向量机可以很好地通过原发情感用于预测B.P。相反,验证表明SVM模型的错误统计数据略胜一筹。

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