Learning Hidden Markov Model Structure for Information Extraction (1999)

by Kristie Seymore , Andrew Mccallum , Ronald Rosenfeld
Venue:In AAAI 99 Workshop on Machine Learning for Information Extraction
Citations:128 - 7 self

Documents Related by Co-Citation

3117 A tutorial on hidden markov models and selected applications in speech recognition – Lawrence R. Rabiner - 1989
76 Information Extraction Using Hidden Markov Models – Timothy Robert Leek, Timothy Robert Leek - 1997
355 Maximum entropy markov models for information extraction and segmentation – Andrew Mccallum, Dayne Freitag - 2000
6234 Maximum likelihood from incomplete data via the EM algorithm – A. P. Dempster, N. M. Laird, D. B. Rubin - 1977
89 Information Extraction with HMM Structures Learned by Stochastic Optimization – Dayne Freitag, Andrew Mccallum - 2000
296 Learning Information Extraction Rules for Semi-structured and Free Text – Stephen Soderland, Claire Cardie, Raymond Mooney - 1999
238 Nymble: High-Performance Learning Name-Finder – Daniel M. Bikel, Scott Miller, Richard Schwartz, Ralph Weischedel - 1997
277 Bottom-Up Relational Learning of Pattern Matching Rules for Information Extraction – Mary Elaine Califf, Raymond J. Mooney, David Cohn - 2003
244 Automatically Generating Extraction Patterns from Untagged Text – Ellen Riloff - 1996
6698 Statistical Learning Theory – V N Vapnik - 1998
283 Extracting patterns and relations from the world wide web – Sergey Brin - 1998
28 A.: Information extraction using hmms and shrinkage – D Freitag, McCallum - 1999
18 Improving text clasification by shrinkage in a hierarchy of classes – A McCallum, R Rosenfeld, T Mitchell, A Ng - 1998
632 Text Classification from Labeled and Unlabeled Documents using EM – Kamal Nigam, Andrew Kachites Mccallum, Sebastian Thrun, Tom Mitchell - 1999
63 Learning Information Extraction Patterns From Examples – Scott Huffman - 1995
73 Relational Learning Techniques for Natural Language Information Extraction – Mary Elaine Califf - 1998
138 A Hierarchical Approach to Wrapper Induction – Ion Muslea, Steve Minton, Craig Knoblock - 1999
151 Real-world Data is Dirty: Data Cleansing and The Merge/Purge Problem – Mauricio A. Hernández, Salvatore J. Stolfo - 1998
243 Digital libraries and autonomous citation indexing – Steve Lawrence, C. Lee Giles, Kurt Bollacker - 1999