npcc
Community Detection by Principal Components Clustering Methods
Based on the classical Degree Corrected Stochastic Blockmodel (DCSBM) model for network community detection problem, we propose two novel approaches: principal component clustering (PCC) and normalized principal component clustering (NPCC). Without any parameters to be estimated, the PCC method is simple to be implemented. Under mild conditions, we show that PCC yields consistent community detection. NPCC is designed based on the combination of the PCC and the RSC method (Qin & Rohe 2013). Population analysis for NPCC shows that NPCC returns perfect clustering for the ideal case under DCSBM. PCC and NPCC is illustrated through synthetic and real-world datasets. Numerical results show that NPCC provides a significant improvement compare with PCC and RSC. Moreover, NPCC inherits nice properties of PCC and RSC such that NPCC is insensitive to the number of eigenvectors to be clustered and the choosing of the tuning parameter. When dealing with two weak signal networks Simmons and Caltech, by considering one more eigenvectors for clustering, we provide two refinements PCC+ and NPCC+ of PCC and NPCC, respectively. Both two refinements algorithms provide improvement performances compared with their original algorithms. Especially, NPCC+ provides satisfactory performances on Simmons and Caltech, with error rates of 121/1137 and 96/590, respectively.
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Dating apps must protect users better, says NPCC
Dating apps "must take more responsibility" for protecting their users' safety on dates, the National Police Chiefs' Council (NPCC) has said. It comes after Stephen Port was found guilty of murdering four men he had met through such apps and websites. Chief Constable Jane Sawyers, police lead for LGBT issues, said apps should provide safety messages. One app, Grindr, did not reply to a request for comment. Tinder said it took users' safety "very seriously".
- Law > Criminal Law (1.00)
- Law Enforcement & Public Safety > Crime Prevention & Enforcement (1.00)