Improving the vector auto regression technique for time-series link prediction by using support vector machine
Predicting links between the nodes of a graph has become an important Data Mining task because of its direct applications to biology, social networking, communication surveillance, and other domains. Recent literature in time-series link prediction has shown that the Vector Auto Regression (VAR) tec...
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ph-ateneo-arc.discs-faculty-pubs-10842020-05-07T09:28:59Z Improving the vector auto regression technique for time-series link prediction by using support vector machine Fernandez, Proceso L, Jr Co, Jan Miles Predicting links between the nodes of a graph has become an important Data Mining task because of its direct applications to biology, social networking, communication surveillance, and other domains. Recent literature in time-series link prediction has shown that the Vector Auto Regression (VAR) technique is one of the most accurate for this problem. In this study, we apply Support Vector Machine (SVM) to improve the VAR technique that uses an unweighted adjacency matrix along with 5 matrices: Common Neighbor (CN), Adamic-Adar (AA), Jaccard’s Coefficient (JC), Preferential Attachment (PA), and Research Allocation Index (RA). A DBLP dataset covering the years from 2003 until 2013 was collected and transformed into time-sliced graph representations. The appropriate matrices were computed from these graphs, mapped to the feature space, and then used to build baseline VAR models with lag of 2 and some corresponding SVM classifiers. Using the Area Under the Receiver Operating Characteristic Curve (AUC-ROC) as the main fitness metric, the average result of 82.04% for the VAR was improved to 84.78% with SVM. Additional experiments to handle the highly imbalanced dataset by oversampling with SMOTE and undersampling with K-means clusters, however, did not improve the average AUC-ROC of the baseline SVM. 2016-01-01T08:00:00Z text application/pdf https://archium.ateneo.edu/discs-faculty-pubs/85 https://archium.ateneo.edu/cgi/viewcontent.cgi?article=1084&context=discs-faculty-pubs Department of Information Systems & Computer Science Faculty Publications Archīum Ateneo Artificial Intelligence and Robotics Computer Sciences |
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Artificial Intelligence and Robotics Computer Sciences Fernandez, Proceso L, Jr Co, Jan Miles Improving the vector auto regression technique for time-series link prediction by using support vector machine |
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Predicting links between the nodes of a graph has become an important Data Mining task because of its direct applications to biology, social networking, communication surveillance, and other domains. Recent literature in time-series link prediction has shown that the Vector Auto Regression (VAR) technique is one of the most accurate for this problem. In this study, we apply Support Vector Machine (SVM) to improve the VAR technique that uses an unweighted adjacency matrix along with 5 matrices: Common Neighbor (CN), Adamic-Adar (AA), Jaccard’s Coefficient (JC), Preferential Attachment (PA), and Research Allocation Index (RA). A DBLP dataset covering the years from 2003 until 2013 was collected and transformed into time-sliced graph representations. The appropriate matrices were computed from these graphs, mapped to the feature space, and then used to build baseline VAR models with lag of 2 and some corresponding SVM classifiers. Using the Area Under the Receiver Operating Characteristic Curve (AUC-ROC) as the main fitness metric, the average result of 82.04% for the VAR was improved to 84.78% with SVM. Additional experiments to handle the highly imbalanced dataset by oversampling with SMOTE and undersampling with K-means clusters, however, did not improve the average AUC-ROC of the baseline SVM. |
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Fernandez, Proceso L, Jr Co, Jan Miles |
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Fernandez, Proceso L, Jr Co, Jan Miles |
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Fernandez, Proceso L, Jr |
title |
Improving the vector auto regression technique for time-series link prediction by using support vector machine |
title_short |
Improving the vector auto regression technique for time-series link prediction by using support vector machine |
title_full |
Improving the vector auto regression technique for time-series link prediction by using support vector machine |
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Improving the vector auto regression technique for time-series link prediction by using support vector machine |
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Improving the vector auto regression technique for time-series link prediction by using support vector machine |
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improving the vector auto regression technique for time-series link prediction by using support vector machine |
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Archīum Ateneo |
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2016 |
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https://archium.ateneo.edu/discs-faculty-pubs/85 https://archium.ateneo.edu/cgi/viewcontent.cgi?article=1084&context=discs-faculty-pubs |
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