Nguyen, H.Roughan, M.2012-10-122012-10-122012IEEE Signal Processing Letters, 2012; 19(10):696-6991070-99081558-2361http://hdl.handle.net/2440/73539Most large attacks on the Internet are distributed. As a result, such attacks are only partially observed by any one Internet Service Provider (ISP). Detection would be significantly easier with pooled observations, but privacy concerns often limit the information that providers are willing to share. Multi-party secure distributed computation provides a means for combining observations without compromising privacy. In this letter, we show the benefits of this approach, the most notable of which is that combinations of observations solve identifiability problems in existing approaches for detecting network attacks.en© 2012 IEEEHidden Markov modelsidentifiabilitymultiple observersnetworkssecurity.Improving hidden Markov model inferences with private data from multiple observersJournal article002012184210.1109/LSP.2012.22138110003081117000012-s2.0-8486569921523242Nguyen, H. [0000-0003-1028-920X]Roughan, M. [0000-0002-7882-7329]