PREDICTING SOCIAL NETWORK ADDICTION USING VARIANT SIGMOID TRANSFER FEED-FORWARD NEURAL NETWORKS (FNN-SNA)

F. E. Ayo, O. Folorunso, A. Abayomi-Alli, A. Olubiyi
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Abstract

Researchers have reflected on personal traits that may predict Social Networking Sites (SNS) addiction. However, most of the researchers involved in the findings of personality traits predictor for social networking addiction either postulate or based their conclusions on analytical tools. Moreso, a review of the literature reveals that the prediction of social networking addiction using classifiers have not been well researched. We examined the prediction of SNS addiction from a well-structured questionnaire consisting of sixteen (16) personality traits. The questionnaire was administered on the google form with a response rate of 95% out of the 102-sample size. Additionally, a three (3) variant sigmoid transfer feed- forward neural networks was developed for the prediction of SNS addiction. Result indicated that pertinence (β = 0.251, p  0.01) was the most powerful predictor of social networking addiction in general and less obscurity addiction (β = 0.244, p  0.01). Experimental results also showed that the developed classifier correctly predict SNS addiction with 98% accuracy compared to similar classifiers.      
基于变异s型转移前馈神经网络(fnn-sna)的社交网络成瘾预测
研究人员对可能预示社交网站成瘾的个人特征进行了反思。然而,大多数参与社交网络成瘾人格特征预测研究的研究人员要么是假设,要么是基于分析工具得出的结论。此外,回顾文献发现,使用分类器预测社交网络成瘾尚未得到很好的研究。我们通过一份包含16个人格特征的结构良好的问卷来检验社交网络成瘾的预测。问卷是在谷歌表格上进行的,102个样本的回复率为95%。此外,研究人员还开发了一种用于预测SNS成瘾的三(3)变体乙状结肠转移前馈神经网络。结果表明,相关性(β = 0.251, p 0.01)是一般社交网络成瘾的最有效预测因子,而模糊成瘾的预测因子较低(β = 0.244, p 0.01)。实验结果还表明,与同类分类器相比,开发的分类器正确预测SNS成瘾的准确率为98%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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