基于影响力的在线社交网络拓扑分类的深度学习智能

Somya Jain, Adwitiya Sinha
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引用次数: 0

摘要

社会网络分析提供了可量化的方法和拓扑指标来检查几个跨学科应用的网络结构。在我们的研究中,构建了一个GitHub社区的社交网络,形成了一个由37,700名开发者组成的密集网络,其中有289,003个协会。该研究包括使用图形分析和基准中心性指标(包括度、间度、接近度、PageRank和特征向量)在GitHub网络中找到中心开发人员;这是基于网络结构信息的。我们的研究方法为预测GitHub用户的分类提供了一个突破,使用基于人工智能的学习模型,并使用派生的拓扑网络中心性指标进行训练。该方法通过计算每个用户的中心性得分,然后利用基于网络拓扑的中心性参数构建相关矩阵,为开发人员进行特征提取。此外,导出的拓扑中心性分数被用作输入特征来训练和构建基于人工智能的分类模型。实验结果表明,人工神经网络的性能优于自编码器、逻辑回归和超参数调谐支持向量机。一些中间结果包括相关性、主成分分析、损失监测等。从宏观和加权f1分、召回率、精密度和准确度等方面进行绩效评估。
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Deep learning intelligence for influencer-based topological classification for online social networks
Social network analysis provides quantifiable methods and topological metrics to examine the networked structure for several interdisciplinary applications. In our research, a social network of GitHub community is constructed that forms a dense network of 37,700 developers with 289,003 associations amongst them. The research involves finding the central developers in the GitHub network using graph analytics and benchmark centrality metrics, including degree, betweenness, closeness, PageRank and eigenvector; which is based upon network structural information. Our research methodology provides a breakthrough towards predicting the classification of GitHub users using artificial intelligence-based learning model trained with derived topological network centrality metrics. The proposed approach performs feature extraction for the developers by computing centrality score of each user followed by building correlation matrix using centrality parameters based on network topology. Further, the derived topological centrality scores were used as input features to train and build artificial intelligence-based models for classification. Our experimentation is better performance of artificial neural network over autoencoders, logistic regression and hyper-parameter tuned support vector machine. Certain intermediate outcomes include correlation, principal component analysis, loss monitoring, etc. The performance evaluation was performed in terms of macro and weighted F1-score, recall, precision, and accuracy.
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来源期刊
CiteScore
1.40
自引率
0.00%
发文量
23
期刊介绍: IJICA proposes and fosters discussion on all new computing paradigms and corresponding applications to solve real-world problems. It will cover all aspects related to evolutionary computation, quantum-inspired computing, swarm-based computing, neuro-computing, DNA computing and fuzzy computing, as well as other new computing paradigms
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