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EMNLP 1999: College Park, MD, USA
- Pascale Fung, Joe Zhou:
Joint SIGDAT Conference on Empirical Methods in Natural Language Processing and Very Large Corpora, EMNLP 1999, College Park, MD, USA, June 21-22, 1999. Association for Computational Linguistics 1999 - Kenneth Ward Church:
What's Happened Since the First SIGDAT Meeting? - Michel Simard:
Text-Translation Alignment: Three Languages Are Better Than Two. - Jordi Daudé, Lluís Padró, German Rigau:
Mapping Multilingual Hierarchies Using Relaxation Labeling. - Franz Josef Och, Christoph Tillmann, Hermann Ney:
Improved Alignment Models for Statistical Machine Translation. - Atsushi Fujii, Tetsuya Ishikawa:
Cross-Language Information Retrieval for Technical Documents. - Steven Abney, Robert E. Schapire, Yoram Singer:
Boosting Applied to Tagging and PP Attachment. - Ezra Black, Andrew M. Finch, Ruigiang Zhang:
Applying Extrasentential Context To Maximum Entropy Based Tagging With A Large Semantic And Syntactic Tagset. - Lluís Màrquez, Horacio Rodríguez, Josep Carmona, Josep Montolio:
Improving POS Tagging Using Machine-Learning Techniques. - Sharon A. Caraballo, Eugene Charniak:
Determining the specificity of nouns from text. - Seonho Kim, Zooil Yang, Mansuk Song, Jung-Ho Ahn:
Retrieving Collocations From Korean Text. - Claire Cardie, Kiri Wagstaff:
Noun Phrase Coreference as Clustering. - Silviu Cucerzan, David Yarowsky:
Language Independent Named Entity Recognition Combining Morphological and Contextual Evidence. - Michael Collins, Yoram Singer:
Unsupervised Models for Named Entity Classification. - Sven Hartrumpf:
Hybrid Disambiguation of Prepositional Phrase Attachment and Interpretation. - Jin-Dong Kim, Sang-Zoo Lee, Hae-Chang Rim:
HMM Specialization with Selective Lexicalization. - Richard M. Schwartz:
Why Doesn't Natural Language Come Naturally? - Peter A. Heeman:
POS Tags and Decision Trees for Language Modeling. - Dekai Wu, Jun Zhao, Zhifang Sui:
An Information-Theoretic Empirical Analysis of Dependency-Based Feature Types for Word Prediction Models. - Shimei Pan, Kathleen R. McKeown:
Word Informativeness and Automatic Pitch Accent Modeling. - Tadashi Nomoto, Yuji Matsumoto:
Learning Discourse Relations with Active Data Selection. - Marcia Muñoz, Vasin Punyakanok, Dan Roth, Dav Zimak:
A Learning Approach to Shallow Parsing. - Amon Seagull, Lenhart K. Schubert:
Guiding a Well-Founded Parser with Corpus Statistics. - John C. Henderson, Eric Brill:
Exploiting Diversity in Natural Language Processing: Combining Parsers. - Julio Gonzalo, Anselmo Peñas, Felisa Verdejo:
Lexical ambiguity and Information Retrieval revisited. - Vasileios Hatzivassiloglou, Judith L. Klavans, Eleazar Eskin:
Detecting Text Similarity over Short Passages: Exploring Linguistic Feature Combinations via Machine Learning. - Jörg Tiedemann:
Automatic Construction of Weighted String Similarity Measures. - David Yarowsky, Radu Florian:
Taking the load off the conference chairs-towards a digital paper-routing assistant. - Martha Analía Alegre, Josep M. Sopena, Agustí Lloberas:
PP-Attachment: A Committee Machine Approach. - Sabine Buchholz, Jorn Veenstra, Walter Daelemans:
Cascaded Grammatical Relation Assignment. - Daniel Ka-Leung Chan, Dekai Wu:
Automatically Merging Lexicons that have Incompatible Part-of-Speech Categories. - Stephen Clark, David J. Weir:
An Iterative Approach to Estimating Frequencies over a Semantic Hierarchy. - Mirella Lapata, Chris Brew:
Using Subcategorization to Resolve Verb Class Ambiguity. - Beáta Megyesi:
Improving Brill's Pos Tagger for an Agglutinative Language. - Wee Meng Soon, Hwee Tou Ng, Chung Yong Lim:
Corpus-Based Learning for Noun Phrase Coreference Resolution. - Juntae Yoon, Key-Sun Choi, Mansuk Song:
Corpus-Based Approach for Nominal Compound Analysis for Korean Based on Linguistic and Statistical Information.

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