Data processing: measuring – calibrating – or testing – Measurement system – Statistical measurement
Reexamination Certificate
2006-12-12
2006-12-12
Nghiem, Michael (Department: 2863)
Data processing: measuring, calibrating, or testing
Measurement system
Statistical measurement
C702S181000
Reexamination Certificate
active
07149649
ABSTRACT:
A method for performing an automatic software-driven statistical evaluation of a large amount of data to be assigned to statistical variables in a database contained in at least one cluster. The method is characterized by using a statistical model to model an approximate description of a relative frequency of the state or states of the statistical variables and a statistical dependencies between the state or states, and then determining the approximate relative frequency of the state or states of the statistical variables and the approximate relative frequency belonging to a predetermined relative frequency of the state or states of the statistical variables and an expected value of the state or states of the statistical variables dependent thereon.
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Haft Michael
Hofmann Reimar
Finnegan Henderson Farabow Garrett & Dunner LLP
Nghiem Michael
Panoratio Database Images GmbH
Washburn Douglas N
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