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1 research outputs found
Efficient algorithms for training the parameters of hidden Markov models using stochastic expectation maximization (EM) training and Viterbi training
Author
A Churbanov
A Dempster
+39 more
A Drawid
A Hobolth
A Krogh
A Viterbi
B Juang
C Nguyen
C Tarnas
CM Bishop
D Hirschberg
E Keibler
F king
G Lunter
I Meyer
I Miklós
IM Meyer
Irmtraud M Meyer
J Besemer
JA Grice
JL Jensen
K Won
L Baum
M Stanke
P Bjöorkholm
R Durbin
R Finn
R Sramek
R Wheeler
RJ Elliott
S Sivaprakasam
S Su
SL Cawley
T Larsen
Tin Y Lam
TY Lam
V Ter-Hovhannisyan
W Khreich
W Turin
X Qian
Y Lifshits
Publication venue
'Springer Science and Business Media LLC'
Publication date
Field of study
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