Link Prediction in Dynamic Networks Based on the Selection of Similarity Criteria and Machine Learning

Karwan Mohammed Hamakarim
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引用次数: 0

Abstract

The study’s findings showed that link prediction utilizing the similarity learning model in dynamic networks (LSDN) performed better than other learning techniques including neural network learning and decision tree learning in terms of the three criteria of accuracy, coverage, and efficiency., Compared to the random forest approach, the LSDN learning algorithm’s link prediction accuracy increased from 97% to 99%. The proposed method’s use of oversampling, which improved link prediction accuracy, was the cause of the improvement in area under the curve (AUC). To bring the ratio of the classes closer together, the suggested strategy attempted to produce more samples from the minority class. In addition, similarity criteria were chosen utilizing feature selection techniques based on correlation that had a strong link with classes. This technique decreased over-fitting and improved the suggested method’s test data generalizability. Based on the three criteria (accuracy, coverage, and efficiency), the research’s findings demonstrated that link prediction utilizing the similarity LSDN outperformed other learning techniques including neural network learning and decision tree learning. Compared to the random forest algorithm, the LSDN algorithm’s link prediction accuracy increased from 97% to 99%. The oversampling in the suggested strategy, which increased link prediction accuracy, is what caused the increase in AUC. To bring the ratio of the classes closer together, the suggested strategy attempted to produce more samples from the minority class. In addition, similarity criteria were chosen utilizing feature selection techniques based on correlation that had a strong link with classes. This technique decreased over-fitting and improved the suggested method’s test data generalizability.
基于相似准则选择和机器学习的动态网络链路预测
该研究结果表明,在准确性、覆盖率和效率三个标准方面,利用动态网络中的相似性学习模型(LSDN)的链接预测比包括神经网络学习和决策树学习在内的其他学习技术表现更好。,与随机森林方法相比,LSDN学习算法的链路预测准确率从97%提高到99%。所提出的方法使用了过采样,提高了链接预测的准确性,这是曲线下面积(AUC)提高的原因。为了使类的比例更接近,建议的策略试图从少数类中产生更多的样本。此外,利用基于与类有强烈联系的相关性的特征选择技术来选择相似性标准。该技术减少了过度拟合,提高了所提出方法的测试数据的可推广性。基于三个标准(准确性、覆盖率和效率),研究结果表明,利用相似性LSDN的链接预测优于其他学习技术,包括神经网络学习和决策树学习。与随机森林算法相比,LSDN算法的链路预测准确率从97%提高到99%。建议策略中的过采样提高了链接预测的准确性,这也是AUC增加的原因。为了使类的比例更接近,建议的策略试图从少数类中产生更多的样本。此外,利用基于与类有强烈联系的相关性的特征选择技术来选择相似性标准。该技术减少了过度拟合,提高了所提出方法的测试数据的可推广性。
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