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LEADER: 04126cam 2200769 a 4500
001 ocm30358935
003 OCoLC
005 20191209222306.0
008 940411s1995 njua b 001 0 eng
010 $a 94015781
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020 $a9780131209817
035 $a(OCoLC)30358935
050 00 $aQA276.8$b.M46 1995
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100 1 $aMendel, Jerry M.,$d1938-
240 10 $aLessons in digital estimation theory
245 10 $aLessons in estimation theory for signal processing, communications, and control /$cJerry M. Mendel.
260 $aEnglewood Cliffs, N.J. :$bPrentice Hall PTR,$c℗♭1995.
300 $axix, 561 pages :$billustrations ;$c25 cm
336 $atext$btxt$2rdacontent
337 $aunmediated$bn$2rdamedia
338 $avolume$bnc$2rdacarrier
490 1 $aPrentice Hall signal processing series
500 $aPrevious edition published under the title: Lessons in digital estimation theory.
504 $aIncludes bibliographical references (pages 542-552) and index.
505 0 $aIntroduction, coverage, philosophy, and computation -- The linear model -- Least-squares estimation : batch processing -- Least-squares estimation : singular-value decomposition -- Least-squares estimation : recursive processing -- Small-sample properties of estimators -- Large-sample properties of estimators -- Properties of least-squares estimators -- Best linear unbiased estimation -- Likelihood -- Maximum-likelihood estimation -- Multivariate Gaussian random variables -- Mean-squared estimation of random parameters -- Maximum a posteriori estimation of random parameters -- Elements of discrete-time Gauss-Markov random sequences -- State estimation : prediction -- State estimation : filtering (the Kalman filter) -- State estimation : filtering examples -- State estimation : steady-state Kalman filter and its relationship to a digital Wiener filter -- State estimation : smoothing -- State estimation : smoothing (general results) -- State estimation for the not-so-basic state-variable model -- Linearization and discretization of nonlinear systems -- Iterated least squares and extended Kalman filtering -- Maximum-likelihood state and parameter estimation -- Kalman-Bucy filtering.
650 0 $aEstimation theory.
650 7 $aEstimation theory.$2fast$0(OCoLC)fst00915531
650 7 $aScha tztheorie$2gnd
650 7 $aEstimation, The orie de l'.$2ram
650 7 $aTraitement du signal$xMe thodes statistiques.$2ram
650 7 $aTe le communications$xMe thodes statistiques.$2ram
653 0 $aStatistical inference
830 0 $aPrentice-Hall signal processing series.
856 41 $3Table of contents$uhttp://bvbr.bib-bvb.de:8991/F?func=service&doc_library=BVB01&doc_number=007025151&line_number=0001&func_code=DB_RECORDS&service_type=MEDIA
856 41 $3Table of contents$uhttp://www.gbv.de/dms/goettingen/152238875.pdf
856 42 $3Inhaltstext$uhttp://www.zentralblattmath.org/zmath/en/search/?an=0886.62101
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938 $aBaker and Taylor$bBTCP$n94015781
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948 $hNO HOLDINGS IN P4A - 164 OTHER HOLDINGS