|
1548
|
Conditional random fields: Probabilistic models for segmenting and labeling sequence data
– John Lafferty
- 2001
|
|
6695
|
The Nature of Statistical Learning Theory
– V Vapnik
- 1995
|
|
5664
|
Probabilistic Reasoning in Intelligent Systems
– J Pearl
- 1988
|
|
57
|
Discriminative vs Informative Learning
– Y. Dan Rubinstein
- 1998
|
|
1085
|
Making large-Scale SVM learning practical
– T Joachims
- 1999
|
|
1656
|
A tutorial on support vector machines for pattern recognition
– Christopher J. C. Burges
- 1998
|
|
2529
|
UCI repository of machine learning databases
– C L Blake, C J Merz
- 1998
|
|
3912
|
CM: Neural Networks for Pattern Recognition
– Bishop
- 1995
|
|
197
|
Statistical analysis of non-lattice data
– J Besag
- 1975
|
|
95
|
Conditional random fields for object recognition
– Ariadna Quattoni, Michael Collins, Trevor Darrell
- 2004
|
|
315
|
Exploiting Generative Models in Discriminative Classifiers
– Tommi Jaakkola, David Haussler
- 1998
|
|
142
|
Efficiently Inducing Features of Conditional Random Fields
– Andrew McCallum
- 2003
|
|
767
|
Factor Graphs and the Sum-Product Algorithm
– Frank R. Kschischang, Brendan J. Frey, Hans-Andrea Loeliger
- 1998
|
|
276
|
Discriminative probabilistic models for relational data
– Ben Taskar
- 2002
|
|
711
|
A tutorial on learning with Bayesian networks
– David Heckerman
- 1995
|
|
464
|
Inducing Features of Random Fields
– Stephen Della Pietra, Vincent Della Pietra, John Lafferty
- 1997
|
|
500
|
Probabilistic Networks and Expert Systems
– R G Cowell, A P Dawid, S L Lauritzen, D J Spiegelhater
- 2003
|
|
364
|
Loopy Belief Propagation for Approximate Inference: An Empirical Study
– Kevin P. Murphy, Yair Weiss, Michael I. Jordan
- 1999
|
|
3118
|
A tutorial on hidden markov models and selected applications in speech recognition
– Lawrence R. Rabiner
- 1989
|