SILGMLDec 18, 2018

Globalness Detection in Online Social Network

arXiv:1812.07135v11 citations
Originality Incremental advance
AI Analysis

This work addresses the problem of fuzzy classification in online social networks, which is incremental as it applies a new method to a specific domain.

The paper tackles the challenge of classifying items without clear boundaries by proposing a globalness detection framework, achieving 89% precision and 88% recall for local pages on a Facebook dataset.

Classification problems have made significant progress due to the maturity of artificial intelligence (AI). However, differentiating items from categories without noticeable boundaries is still a huge challenge for machines -- which is also crucial for machines to be intelligent. In order to study the fuzzy concept on classification, we define and propose a globalness detection with the four-stage operational flow. We then demonstrate our framework on Facebook public pages inter-like graph with their geo-location. Our prediction algorithm achieves high precision (89%) and recall (88%) of local pages. We evaluate the results on both states and countries level, finding that the global node ratios are relatively high in those states (NY, CA) having large and international cities. Several global nodes examples have also been shown and studied in this paper. It is our hope that our results unveil the perfect value from every classification problem and provide a better understanding of global and local nodes in Online Social Networks (OSNs).

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