
Big Data and Information Analytics, 2018, 3(2): 5467. doi: 10.3934/bdia.2018007
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Resolutions to flipover credit risk and beyondleast squares estimates and maximum likelihood estimates with monotonic constraints
Royal Bank of Canada, 155 Wellington St W, Toronto, ON M5V 3H6, Canada
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References
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