NLP Reading Group: Difference between revisions
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;Nov. 13 (Michelle Vanni) | ;Nov. 13 (Michelle Vanni) | ||
: Robert S. Swier and Suzanne Stevenson , | : Robert S. Swier and Suzanne Stevenson , | ||
[nlp.cs.jhu.edu/~cschafer/david/Ch2.pdf Inexact Graph Matching Using Estimation of Distribution Algorithms,Chapter 2, The graph matching problem] | [http://nlp.cs.jhu.edu/~cschafer/david/Ch2.pdf Inexact Graph Matching Using Estimation of Distribution Algorithms,Chapter 2, The graph matching problem] | ||
Submitted to the Ecole Nationale Supérieure des Télécommunications (Paris), for the Degree of Doctor of Philosophy. 2002 | Submitted to the Ecole Nationale Supérieure des Télécommunications (Paris), for the Degree of Doctor of Philosophy. 2002 | ||
:Yakov Keselman, Ali Shokoufandeh, M. Fatih Demirci, Sven Dickinson | :Yakov Keselman, Ali Shokoufandeh, M. Fatih Demirci, Sven Dickinson | ||
[nlp.cs.jhu.edu/~cschafer/david/many-to-many-graph.pdf Many-to-Many Graph Matching via Metric Embedding] | [http://nlp.cs.jhu.edu/~cschafer/david/many-to-many-graph.pdf Many-to-Many Graph Matching via Metric Embedding] | ||
Computer Vision and Pattern Recognition, 2003. Proceedings. 2003 IEEE | Computer Vision and Pattern Recognition, 2003. Proceedings. 2003 IEEE | ||
Revision as of 17:38, 11 February 2008
The reading group attempts to keep abreast of current trends in natural language processing research. We typically read one or two recent NLP conference papers each week, and occasionally look at material from the machine learning, statistics, and linguistics communities as well.
Starting in 2008, we will be posting the weekly readings here. Past readings since 2001 are being filled in presently.
Spring 2008
First meeting of the term will be on Thursday, Jan. 31, at noon in NEB 317. Feel free to bring lunch.
Fall 2007
Topics:
- Domain adaptation
- Recent parsing work
- Text compression
- Semisupervised learning
- Sep.26 (Omar F Zaidan)
- J. Blitzer, R. McDonald, F. Pereira ,
Domain Adaptation with Structural Correspondence Learning ,EMNLP 2006
- Oct.3 (David Smith)
- Shai Ben-David, John Blitzer, Koby Crammer, Fernando Pereira. ,
Analysis of Representations for Domain Adaptation.
- Oct. 10 (Nathaniel W Filardo)
- Mahoney, Matthew ,
Adaptive Weighing of Context Models for Lossless Data Compression. , Florida Institue of Technology, CS Department, Technical report CS-2005-16, EMNLP-CoNLL 2007
- Oct. 17 (Markus Dreyer)
- Nakagawa, Tetsuji ,
Multilingual Dependency Parsing Using Global Features , EMNLP-CoNLL 2007
- Oct. 26 (Christo Kirov)
- Seginer, Yoav ,
Fast Unsupervised Incremental Parsing (syntax induction) , Proceedings ACL 2007
- Nov. 3 (Christo Kirov)
- I. Titov, J. Henderson ,
Constituent Parsing with Incremental Sigmoid Belief Networks , ACL 2007
- Nov. 17 (David Smith)
- X. Zhu ,
Semi-Supervised Learning Literature Survey
- Dec. 12 (Delip Rao)
- M. Belkin, P. Niyogi ,
Laplacian Eigenmaps for Dimensionality Reduction and Data Representation , ACM 2002
- Mikhail Belkin, Partha Niyogi, Vikas Sindhwani ,
Summer 2007
Topics:
- Good recent papers (mainly from 2007)
- May 10 (David Smith )
- M. Johnson, T. Griffiths, and S. Goldwater ,
Bayesian Inference for PCFGs via Markov Chain Monte Carlo , HLT/NAACL 2007
- May 17 (Markus Dreyer)
- M. Galley, K. McKeown ,
Lexicalized Markov Grammars for Sentence Compression , HLT/NAACL 2007
- June 2 (Erin Fitzgerald)
- J. Jiang, C. Zhai ,
A Systematic Exploration of the Feature Space for Relation Extraction , HLT/NAACL 2007
- June 6 (Nikesh Garera)
- A. Alexandrescu, K. Kirchhoff ,
Data-Driven Graph Construction for Semi-Supervised Graph-Based Learning in NLP , HLT/NAACL 2007
- June 14 (David Smith)
- X. Zhu, Z. Ghahramani,J. Lafferty ,
Semi-supervised learning using Gaussian fields and harmonic functions. , ICML 2003
- June 21 (Christopher White)
- K. Murphy, Y. Weiss, M. Jordan ,
Propagation for approximate inference: An empirical study. , 15th UAI, pages 467-?75, 1999
- ... discussing (loopy) belief propagation as background for survey propagation, a topic which has been getting more attention lately for its ability to "solve very large hard combinatorial problems, such as determining the satisfiability of Boolean formulas.
Chapter 8 of Chris Bishop's textbook is supposed to be a good treatment of graphical models overall. It is available free here [1]. He covers BP in section 8.4.4 after first presenting factor graphs in 8.4.3. , David MacKay's treatment of BP, also in terms of factor graphs, is in chapter 26 of his book [2]. It's worth reading this chapter in full, perhaps first reading chapter 16. ... the update equations are given as (26.11) and (26.12) ... [substantial further discussion by jason was here]
Some people may prefer Bishop's style, others MacKay's.
- July 6 (Christopher White)
- A. Braunstein, M. Mezard, R. Zecchina. ,
Survey propagation: an algorithm for satisfiability. , Random Structures and Algorithms, 2005.
- We sent some questions to Zecchina. ,
Lukas Kroc, Ashish Sabharwal and Bart Selman. , Survey Propagation Revisited: An Empirical Study. 23rd UAI, 2007.
- July 18 (David Smith)
- P. Liang, S. Petrov, M. Jordan, D. Klein ,
The Infinite PCFG Using Hierarchical Dirichlet Processes. , Proceedings of the 2007 Joint Conference on Empirical Methods in Natural Language Processing and Computational Natural Language Learning,
- Aug. 3 (Yi Su)
- M. Galley, K. McKeown ,
Lexicalized Markov Grammars for Sentence Compression. , NAACL-HLT 2007
- Aug. 11 (Nikesh Garera)
- L. Shen, G. Satta, A. Joshi. ,
Guided learning for bidirectional sequence classification , ACL 2007
- Aug. 18 (Markus Dreyer)
- D. Talbot, M. Osborne ,
Randomised Language Modelling for Statistical Machine Translation , ACL 2007
- They use a space-efficient randomized data structure (Bloom Filter) to store very large n-gram models.
There is a companion paper that people might want to have a quick look at as well, for comparison: D. Talbot, M. Osborne
Smoothed Bloom Filter Language Models: Tera-Scale LMs on the Cheap
ACL 2007
- Aug. 30 (Delip Rao)
- Gideon S. Mann ,
Simple, Robust, Scalable Semi-supervised Learning via Expectation Regularization , Proceedings of the 24 th International Conference on Machine Learning 2007
Spring 2007
Topics:
- Morphology (unsupervised learning)
- Recent IR/QA papers (with an NLP or multilingual focus)
- Integrating search and learning
- Apr. 19 (John Blatz)
- A. Prieditis ,
Machine discovery of Effective Admissible Heuristics , Machine Learning Journal, 1993
- Apr. 12 (Markus Dreyer)
- A. Haghighi, J. DeNero and D. Klein ,
Approximate Factoring for A* Search , NAACL-HLT 2007
- Mar. 29 & Apr. 5 (Zhifei Li)
- H. Daume III, J. Langford, and D. Marcu ,
Search-based structured prediction. , Machine Learning Journal, forthcoming
- Mar. 8 (David Smith)
- H. Daume III & D. Marcu ,
Learning as search optimization: approximate large margin methods for structured prediction. , ICML 2005
- Mar. 1 (Wei Chen)
- M. Kaisser, S. Scheible, and B. Webber ,
Experiments at the University of Edinburgh for the TREC 2006 QA track. , TREC-15
- They do some fairly deep interpretation of sentences, extracting their predicate-argument structure.
- Feb. 22 (Eric Harley)
- K. Kan Lo & W. Lam ,
Using Semantic Relations with World Knowledge for Question Answering , TREC-15
- Feb. 15 (Nikhil Bojja)
- C. Monson et. al. ,
Unsupervised Induction of Natural Language Morphology Inflection Classes , ACL Student Workshop '04
- Feb. 8 (Delip Rao)
- P. Schone and D. Jurafsky ,
Knowledge-free induction of morphology using latent semantic analysis , CoNLL 2000
- However, there was an extension of this work reported in NAACL-2001 that looks at circumfixes and prefix/affix combinations. [3] ,
- Feb. 1 (Nikesh Garera)
- D. Yarowsky and R. Wicentowski ,
Minimally supervised morphological analysis by multimodal alignment, ACL 2000
- For more details refer to Chapter 4 of Wicentowski's thesis.
Fall 2006
Topics:
- Machine learning: Margin methods and structured classification
- Linguistics: Syntactic formalisms
- Syntax-based MT
- Dec. 13 (Delip Rao)
- J. Carbonell et. al. ,
Context-based machine translation , AMTA 2006
- Dec. 6 (Jason Smith)
- M. Galley et. al. ,
Scalable Inference and Training of Context-Rich Syntactic Translation Models , ACL 2006
- It may also be helpful to look at:
- M. Galley et. al. ,
What's in a translation rule? HLT/NAACL 2004
- Nov. 29 (Balakrishnan V)
- D. Marcu et. al. ,
SPMT: Statistical Machine Translation with Syntactified Target Language Phrases , EMNLP 2006
- Nov. 15 (Eric Harley)
- D. Chiang ,
An introduction to synchronous grammars , ACL 2006 Tutorial
- Slides from the talk are also available. [4] ,
- Nov. 8 (Elliott Drabek)
- K.Shklovsky ,
A Grammatical Sketch of Petalcingo Tzeltal , Undergraduate Thesis, Reed College, 2005
- It is 77 pages long, but not dense, and I will be skipping the following sections:
- Pages
01-14 Phonetics and phonology
18-18 Polyvalence
21-21 Inherent possession and ...
46-55 Tense and aspect and other sections
- Nov. 1 (Yi Su)
- M. Steedman ,
Gapping as Constituent Coordination , Linguistics and Philosophy, Vol. 13, 1990, pp.207-264.
- See Yi for photocopies. ,
- Oct. 25 (Markus Dreyer)
- S. Reizler et. al. ,
- Oct. 18 (Erin Fitzgerald)
- J. Bresnan & R.M. Kaplan ,
Lexical-Functional Grammar: A Formal System for Grammatical Representation , The Mental Representation of Grammatical Relations, MIT Press, 1982
- the edited collection that this appears in is generally interesting. Bresnan defends and develops lexicalized grammars in general; the idea of separate surface and semantic roles; and Bresnan & Kaplan's LFG in particular. You should know that she originated (in 1978) the extremely influential idea of lexicalized syntax -- the idea that a grammar is simply a collection of lexical entries to be assembled in standard language-independent ways, but that there are also "lexical redundancy rules" that relate, e.g., active and passive entries for the same verb. Some chapters address morphological and cognitive issues pertaining to lexicalization, including an essay by Pinker on lexicalist learning. ,
Slides from Erin's presentation can be found here. ,
- Oct. 11 (John Blatz)
- L.Xu, D. Wilkinson, F. Southey, & D. Schuurmans ,
Discriminative Unsupervised Learning of Structured Predictors , ICML 2006
- Oct. 4 (Nikesh Garera)
- A. Culotta & J. Sorensen ,
Dependency Tree Kernels for Relation Extraction , ACL 2004
- D. Zelenko, C. Aone, & A. Richardella
Kernel Methods for Relation Extraction JMLR, Volume 3, 2003
- Sept. 27 (David Smith)
- C. Cortes, P. Haffner, & M. Mohri ,
Rational Kernels , NIPS 2003
- Papers extending rational kernels, including results on positive semidefinite cases, are at:[5] ,
For the record, and not to be read, is an interesting parallel line of research in Fisher Kernels over strings, e.g. this paper by Saunders, Shawe-Taylor and Vinokourov: [6] ,
- Sept. 20 (Elliot Drabek)
- K.Q. Weinberger, F. Sha, & L.K. Saul ,
Learning a kernel matrix for nonlinear dimensionality reduction , ICML 2004
- S.T. Roweis & L.K. Saul,
Nonlinear Dimensionality Reduction by Locally Linear Embedding , Science, 22 December 2000
- J.B. Tenenbaum, V. De Silva, & J.C. Langford
A global geometric framework for nonlinear dimensionality reduction Science, 22 December 2000
- Sept. 13 (Roy Tromble)
- L. Xu, J. Neufeld, B. Larson, & D. Schuurmans ,
Maximum Margin Clustering , NIPS 2004
Summer 2006
Topics:
- Recent HLT-NAACL papers
- Jun. 24 (David Smith)
- Percy Liang, Ben Taskar, Dan Klein ,
Alignment by Agreement , HLT-NAACL, 2006
- Jun. 31 (Markus Dreyer)
- Joakim Nivre, Johan Hall et al ,
Labeled Pseudo-Projective Dependency Parsing with Support Vector Machines , Procceding of CoNLL, 2006
- J. Nivre, J. Nilsson,
Pseudo-Projective Dependency Parsing, ACL 2005
- Jul. 6 (Keith Hall)
- Charles Sutton, Michael Sindelar, Andrew McCallum ,
Reducing Weight Undertraining in Structured Discriminative Learning , HLT-NAACL, 2006
- Jul. 20 (Roy Tromble)
- Mehryar Mohri, Brian Roark ,
Probabilistic Context-Free Grammar Induction Based on Structural Zeros , HLT-NAACL, 2006
- Aug. 4 (David Smith)
- Sharon Goldwater, Thomas L. Griffiths, Mark Johnson ,
Contextual Dependencies in Unsupervised Word Segmentation , ACL 2006
- Anyone looking for a more straight-up language modeling discussion can compare: ,
- Yee Whye Teh ,
A Hierarchical Bayesian Language Model Based On Pitman-Yor Processes ACL 2006
- More resources:
Machine Learning MLPedia page on Dirichlet Processes
- Y. Teh, M. Jordan, M. Beal, and D. Blei,
Hierarchical Dirichlet processes,
Journal of the American Statistical Association, 2006
Spring 2006
Topics:
- Consensus decoding
- Miscellous extraction (idioms)
- Algorithmic speedups/search/dynmaic programming/hard problems
- Disctance reranking
- Feb. 9 (John Blatz)
- Dominic Widdows, Beate Dorow ,
Automatic Extraction of Idioms using Graph Analysis and Asymmetric Lexicosyntactic Patterns , Proceedings of the ACL-SIGLEX Workshop on Deep Lexical Acquisition, 2005
- Afsaneh Fazly, Suzanne Stevenson
Automatic Acquisition of Knowledge about Multiword Predicates,
Proceedings of the 19th Pacific Asia Conference on Language, Information, and Computation (PACLIC 2005).
- Feb. 16 (Noah A Smith)
- Khalil Sima'an ,
Computational Complexity of Probabilistic Disambiguation by means of Tree-Grammars , COLING 1996
- Francisco Casacuberta, Colin de la Higuera,
Computational complexity of problems on probabilistic grammars and LNAI 1981
- For more HMM/Comp, bio view, and extended results view: ,
- Rune B. Lyngsoe, Christian N. S. Pederson ,
The Consensus String Problem and the Complexity of Comparing Hidden Journal of Computer and System Sciences 65, 2002
- Feb. 23 (Omar F. Zaidan)
- Ravichandran, Pantel, Hovy ,
Randomized Algorithms and NLP: Using Locality Sensitive Hash Function for High Speed Noun Clustering , Proceedings of the 43rd Annual Meeting of the ACL, 2005
- J. Gorman, J. Curran
Approximate Searching for Distributional Similarity Proceedings of the ACL-SIGLEX Workshop on Deep Lexical Acquisition, 2005
- Mar.3 (Jason Riesa)
- Hal Daume III, Daniel Marcu ,
Domain Adaptation for Statistical Classifiers , Journal of Artificial Intelligence Research, 2006
- Mar.10 (Roy Tromble)
- Terry Koo, Michael Collins ,
Hidden-Variable Models for Discriminative Reranking , Proceedings of Human Language Technology Conference and Conference on Empirical Methods in Natural Language Processing, 2005
- Mar.17 (Elliott Franco Drabek)
- Necip Fazil Ayan, Bonnie J. Dorr, Christof Monz ,
Alignment Link Projection Using Transformation-Based Learning , HLT-EMNLP 2005
- Mar.31 (Eric Harley)
- Ben Taskar, Lacoste-Julien Simon, Klein Dan ,
A Discriminative Matching Approach to Word Alignment , ACL 2005
- Apr.6 (Eric Harley)
- Ben Taskar, Lacoste-Julien Simon, Klein Dan ,
A Discriminative Matching Approach to Word Alignment , ACL 2005
- Ryan McDonald, Fernando Pereira, Kiril Ribarov, Jan Hajie
Non-projective Dependency Parsing using Spanning Tree Algorithms, Proceedings of Human Language Technology Conference and Conference on Empirical Methods in Natural Language Processing (HLT/EMNLP), 2005.
- Apr. 20 (Balakrishnan V)
- Richard M. Karp, Michael 0. Rabin ,
Efficient randomized Pattern matching Algorithms , IBM Journal of Research and Development, 1987
- May 4 (David Smith)
- C. E. R. Alves, E. N. C′aceres F. Dehne ,
Parallel dynamic programming for solving the string editing problem on a CGM/BSP , SPAA 2002
- May 11 (John Blatz)
- M. Gengler ,
An introduction to parallel dynamic programming , Lecture Notes in Computer Science, 1996
- May 18 (Markus Dreyer)
- Jonathan May, Kevin Knight ,
A Better N-Best List: Practical Determinization of Weighted Finite Tree Automata , Proc. NAACL-HLT, 2006
Fall 2005
- Sept. 14 (Nikesh Garera)
- M. Jordan,
Statistical Learning Theory Chapter 8 (Exponential family and Generalized linear models) ,
- Sept. 21 (Arnab Ghoshal)
- M. Jordan,
Statistical Learning Theory Chapter 2&3 ,
- Oct. 20 (Roy Tromble)
- Sheila M. Reynolds, Jeff A. Bilmes,
Part-of-Speech Tagging using Virtual Evidence and Negative Training. , Proceedings of Human Language Technology Conference and Conference on Empirical Methods in Natural Language Processing. 2005. pp 459--466.
- Oct. 27 (Markus Dreyer)
- D. Roth and W. Yih ,
Integer Linear Programming Inference for Conditional Random Fields. , ICML '2005
- Nov. 4 (Jason Riesa)
- Luke S. Zettlemoyer, Michael Collins. ,
Learning to Map Sentences to Logical Form: Structured Classification with Probabilistic Categorial , Proceedings of UAI 2005
- Nov. 16 (Safiullah Shareef)
- Hassan Sawaf, J?rg Zaplo, Hermann Ney ,
Statistical Classification Methods for Arabic News Articles ,
- Nov. 23 (Roy Tromble)
- Sutton, Charles and McCallum, Andrew ,
Composition of Conditional Random Fields for Transfer Learning , Proceedings of Human Language Technology Conference and Conference on Empirical Methods in Natural Language Processing 2005
Summer 2005
Topics:
- Recent papers on ACL / CoNLL / parallel-text workshop
- Optimality Theory
- Unsupervised/semisupervised/EM
- AI
- Graphical Models
- Dependency Parsing
- Kernels
- Algorithms
- Syntactic MT
- MT Techniques
- Non-dependency parsing
- July 14 (Roy Tromble)
- Goldwater and Johnson ,
[http://www.cog.brown.edu:16080/~sgwater/papers/OTvar03.pdf Learning OT Constraint Rankings Using a Maximum , Entropy Model] In Proceedings of the Workshop on Variation within Optimality Theory, 2003
- July 21 (Keith and Damianos)
- Sharon Goldwater, Mark Johnson ,
[http://www.aclweb.org/anthology/W/W05/W05-0615 Representational Bias in Unsupervised Learning of Syllable , Structure] ACL 2005
- Ando, Rie and Zhang, Tong
A High-Performance Semi-Supervised Learning Method for Text Chunking ACL 2005
- July 28 (Zak)
- Takuya Matsuzaki, Yusuke Miyao, Jun'ichi Tsujii ,
Probabilistic CFG with Latent Annotations , ACL 2005
- Aug 5 (Adam)
- Duh, Kevin and Kirchhoff, Katrin ,
Tagging of Dialectal Arabic: A Minimally Supervised Approach ACL 2005
- Aug 19 (John Blatz)
- Niyogi, Sourabh ,
Steps Toward Deep Lexical Acquisition , ACL 2005
- Aug 26 (Roy Tromble)
- Jenny Rose Finkel, Trond Grenager, Christopher Manning ,
Incorporating Non-local Information into Information Extraction Systems by Gibbs Sampling ACL 2005
- Sep.1 (Markus Nikesh, John Blatz )
- B. Walsh ,
Markov Chain Monte Carlo and Gibbs Sampling Lecture Notes for EEB 581, version 26 April 2004
Spring 2005
Topics:
- Bayesian Nets / inference (tutorials in Michael Jordan's book)
- Dependency Networks
- Using the web as a corpus & extracting corpora from the web
- Feb. 25 (David Smith)
- M. I. Jordan, Z. Ghahramani, T. S. Jaakkola, and L. K. Saul ,
Learning in Graphical Models , MIT Press, 1999
- Mar. 4 (David Smith)
- M. I. Jordan, Z. Ghahramani, T. S. Jaakkola, and L. K. Saul ,
Learning in Graphical Models , MIT Press, 1999
- Mar. 11 (David Smith)
- M. I. Jordan, Z. Ghahramani, T. S. Jaakkola, and L. K. Saul ,
Learning in Graphical Models , MIT Press, 1999
- Apr. 2 (David Smith)
- M. I. Jordan, Z. Ghahramani, T. S. Jaakkola, and L. K. Saul ,
Learning in Graphical Models , MIT Press, 1999
- Apr. 9 (Noah A Smith)
- G. Elidan, N. Friedman. ,
The Information Bottleneck EM Algorithm , UAI 2003
- G. Elidan, Nir Friedman ,
Learning Hidden Variable Networks JMLR 2005
- Apr. 16 (Noah A Smith)
- V. Lavrenko, S.L Feng, R. Manmatha ,
Statistical models for automatic video annotation and retrieval , Acoustics, Speech, and Signal Processing, 2004. Proceedings.
- Apr. 21 (Omar F. Zaidan)
- Tin Kam Ho, Jonathan J. Hull, Sargur N. Stihari ,
Decision Combination in Multiple Classifier Systems , IEEE Transactions on Pattern Analysis and Machine Intelligence, Vol.16. No I. Jan. 1994
- Dan Klein, Kristina Toutanova, H. Tolga Ilhan, Sepandar D. Kamvar and Christopher D. Manning
Combining Heterogeneous Classifiers forWord-Sense Disambiguation ACL 2002
- Apr. 28 (Damianos Karakos)
- Alessandro Moschitti and Roberto Basili ,
Complex Linguistic Features for Text Classification: a comprehensive study , In proceedings of the 26th European Conference on Information Retrieval Research (ECIR 2004)
- May 7 (Markus Dreyer)
- M. Diligenti, F.M. Coetzee, S. Lawrence, C.L. Giles, M. Gori ,
Focused Crawling Using Context Graphs , 26th International Conference on Very Large Databases, VLDB 2000
- Adam Kilgarriff, Gregory Grefenstette:
Introduction to the Special Issue on the Web as Corpus Computational Lingustics, 2003
Fall 2004
Topics:
- Recent papers from ACL/EMNLP 2004
- Graph methods
- Unification parsing
- Parsing strategies
- Syntax for MT or vice-versa
- TAG-based noisy channel model of speech repair
- Collective information extraction with relational Markov networks
- Aug. 20 (Damianos Karakos, Charles Schafer)
- P. Pantel and D. Lin ,
Discovering word senses from text , Proceedings of the eighth ACM SIGKDD international conference on Knowledge discovery and data mining, 2002
- Diana McCarthy, Rob Koeling, Julie Weeds, John Carroll
Finding Predominant Word Senses in Untagged Text 2004
- Aug. 27 (David Smith)
- I. Dan Melamed ,
Statistical Machine Translation by Parsing , ACL 2004
- Daniel Gildea
Dependencies vs. Constituents for Tree-Based Alignment ACL 2004
- Sep. 2 (Gideon Mann)
- Xin Li, Paul Morie, and Dan Roth ,
Robust Reading: Identification and Tracing of Ambiguous Names ACL 2004
- Cheng Niu, Wei Li, Rohini K. Srihari
- Sep. 9 (John Blatz)
- Pascale Fung and Percy Cheung ,
Mining Very-Non-Parallel Corpora: Parallel Sentence and Lexicon Extraction via Bootstrapping and EM ACL 2004
- Dragos Stefan Munteanu, Alexander Fraser and Daniel Marcu
Improved Machine Translation Performance via Parallel Sentence Extraction from Comparable Corpora ACL 2004
- Sep. 24 (Roy Tromble)
- B. Taskar, C. Guestrin and D. Koller ,
Max-Margin Markov Networks , Neural Information Processing Systems Conference (NIPS03), 2003
- B. Taskar, D. Klein, M. Collins, D. Koller and C. Manning
Max-Margin Parsing EMNLP 2004
- Oct. 2 (Nguyen Bach)
- Background knowledge on SVM and Graphical Models ,
Intro SVM Intro Graphical Models
- Oct. 15 (Nguyen Bach)
- Daichi Mochihashi, Genichiro Kikui, Kenji Kita ,
Learning Nonstructural Distance Metric by Minimum Cluster Distortions EMNLP 2004
- Oct. 22 (Michelle Vanni)
- Lin and Och ,
[http://acl.ldc.upenn.edu/acl2004/main/pdf/215_pdf_2-col.pdf Automatic Evaluation of Machine Translation , Quality Using Longest Common Subsequence] ACL 2004
- Babych and Hartley
Extending the BLEU MT Evaluation Method with Frequency Weightings ACL 2004
- Oct. 29 (Eric Goldlust)
- Clark and Curran ,
Parsing the WSJ using CCG and Log-Linear Models ACL 2004
- Nov. 5 (Michelle Vanni)
- Robert S. Swier and Suzanne Stevenson ,
Unsupervised Semantic Role Labelling , EMNLP 2004
- Nianwen Xue, Martha Palmer
Calibrating Features for Semantic Role Labelling EMNLP 2004
- Nov. 13 (Michelle Vanni)
- Robert S. Swier and Suzanne Stevenson ,
Inexact Graph Matching Using Estimation of Distribution Algorithms,Chapter 2, The graph matching problem Submitted to the Ecole Nationale Supérieure des Télécommunications (Paris), for the Degree of Doctor of Philosophy. 2002
- Yakov Keselman, Ali Shokoufandeh, M. Fatih Demirci, Sven Dickinson
Many-to-Many Graph Matching via Metric Embedding Computer Vision and Pattern Recognition, 2003. Proceedings. 2003 IEEE
- ...This chapter is general to the field although pretty sweeping and unspecific as a result. It probably makes a good introduction, since it gives an idea of the scope and diversity of the problem and proposed techniques...
...this is a state of the art paper which is quite dense but quite interesting. solves a very general formulation of inexact graph matching by first imbedding graphs into a normed space...
- Nov. 20 (David Smith)
- Olle H鋑gstr鰉 and Karin Nelander ,
On Exact Simulation of Markov Random Fields Using Coupling from the Past , Foundation of the Scandinavian Journal of Statistics, 1999
- James Fill and Mark Huber
The Randomness Recycler: A New Technique for erfect Sampling. IEEE Symposium on Foundations of Computer Science, 2000
- Nov. 27 (Jia Cui)
- David M. Blei, Andrew Y. Ng, Michael I. Jordan ,
Latent Dirichlet Allocation , Journal of machine Learning Research 3, 2003
- A additional related report on LDA ,
[www.cs.toronto.edu/~ywteh/research/npbayes/report.pdf] ,
- Another introduction to LDA
Spring 2004
Topics:
- combinatorial optimization (software)
- optimality theory
- information extraction
Date/Time | Presenter | Paper(s) | Supporting Papers/Notes
Optimality theory in phonological acquisition , Journal of Speech, Language and Hearing 42, 1999 ---- Paul Boersma, Joost Dekkers and Jeroen van de Weijer Introduction. In Optimality Theory: Phonology, Syntax and Acquisition Oxford University Press 2000
Optimality theory and the Generative Complexity of Constraint Violability , MIT Press
It has been argued that rule-based phonological descriptions can uniformly be expressed as mappings carried out by finite-state transducers, and therefore fall within the class of rational relations. If this property of generative capacity is an empirically correct characterization of phonological mappings, it should hold of any sufficiently restrictive theory of phonology, whether it utilizes constraints or rewrite rules. In this paper, we investigate the conditions under which the phonological descriptions that are possible within the view of constraint interaction embodied in Optimality Theory (Prince and Smolensky 1993) remain within the class of rational relations. We show that this is true when GEN is itself a rational relation, and each of the constraints distinguishes among finitely many regular sets of candidates. ,
Learning to Paraphrase: An Unsupervise Approach Using Multiple-Sequen7:12 PM 2/4/2008ce Alignment , HTL 2003
Theory and Practice of Discourse Parsing and Summarization, Chapters 2 & 3 , The MIT Press, 2000
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Eugene Charniak, Niyu Ge, John Hale
A Statistical Approach to Anaphora Resolution Proceedings of the Sixth Workshop on Very Large Corpora, 1998
Learning Evaluation Functions to Improve Optimization by Local Search , Journal of Machine Learning Research, 2000
Constraint Programming: In Pursuit of the Holy Grail , 1999
Axiomatizing Dependency Parsing Using Set Constraints , Sixth Meeting on Mathematics of Language, 2000
Axiomatizing Dependency Parsing Using Set Constraints , Sixth Meeting on Mathematics of Language, 2000
Mini-Buckets: A General Scheme for Generating Approximations in Automated Reasoning , 2001
Extraction and Data Mining using Conditional-Probability, Relational Models , IJCAI'03 Workshop on Learning Statistical Models from Relational Data, 2003
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May. 1 | Izhak Shafran
Strong Monotonicity in Surplus Sharing , 1999
[8] ,
Accurate Information Extraction from Research Papers using Conditional Random Fields , 2004
== Fall 2003 == ,
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