研究目的
To extend signalprint-based Sybil detection methods to work without a priori trust in any observer, allowing any participant in an open wireless network to determine which of its one-hop neighbors are non-Sybil.
研究成果
The Mason test effectively eliminates Sybil identities in various environments, with high sensitivity and specificity in office settings. It accepts a majority of conforming identities, though performance varies by environment. The test's overhead is acceptable for infrequent use.
研究不足
The Mason test requires several conforming neighbors and has a limit on total identities to detect selective jamming. It also has high computation time for high-density areas and high false positive rates in some environments.
1:Experimental Design and Method Selection:
The Mason test protocol involves collecting RSSI observations from neighbors and performing Sybil classification based on these observations. The protocol includes identity collection, randomized broadcast request, and RSSI observations report phases.
2:Sample Selection and Data Sources:
The experiments were conducted with HTC Magic Android smartphones in various environments including office, cafeteria, and outdoor settings.
3:List of Experimental Equipment and Materials:
HTC Magic Android smartphones were used for the experiments.
4:Experimental Procedures and Operational Workflow:
The protocol involves phases for identity collection, randomized broadcast request, and RSSI observations report, followed by Sybil classification.
5:Data Analysis Methods:
The performance of the Mason test was evaluated based on sensitivity and specificity metrics derived from confusion matrices.
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