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FAM-LbR 2010 : NAACL Workshop on Formalisms and Methodology for Learning by Reading | |||||||||||
Link: http://www.rutumulkar.com/FAM-LbR.php | |||||||||||
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Call For Papers | |||||||||||
Extended Deadline: 8th March
1st International Workshop on Formalisms and Methodology for Learning by Reading (FAM-LbR) NAACL 2010 Workshop June 5-6, 2010 (http://www.rutumulkar.com/FAM-LbR.php ) Call for Papers It has been a long term vision of Artificial Intelligence to develop Learning by Reading systems that can capture knowledge from naturally occurring texts, convert it into a deep logical notation and perform some inferences/reasoning on them. Such systems directly build on relatively mature areas of research, including Information Extraction (for picking out relevant information from the text), Commonsense and AI Reasoning (for deriving inferences from the knowledge acquired), Bootstrapped Learning (for using the learned knowledge to expand the knowledge base) and Question Answering (for providing evaluation mechanisms for Learning by Reading systems). In Natural Language Processing, statistical learning techniques have provided new solutions and breakthroughs in various areas over the last decade. In Knowledge Representation and Reasoning, systems have achieved impressive performance and scale in far more complex problems than the past. Learning by Reading is a two-part process. One part deals with extracting interesting information from naturally occurring texts, and the other is to use this extracted knowledge to expand the knowledge base and consequently the system's inference capabilities. Previous systems have chosen either a "broad and shallow" or a "narrow and deep" knowledge acquisition and reasoning strategy. These techniques are constrained by either their limited reasoning ability or their extreme domain dependence. The goal of this workshop is to draw together researchers to explore the nature and degree of integration possible between symbolic and statistical techniques for knowledge acquisition and reasoning. In particular, given these developments, what is the role of commonsense knowledge and reasoning in language understanding? What are the limitations of each style of processing, and how can they be overcome by complementary strengths of the other? What are appropriate evaluation metrics for Learning by Reading systems? Topics of interest include (but are not limited to) ------------------------------ ---------------------- Unguided and targeted (goal-directed) machine reading Wikipedia and web based machine reading Knowledge extraction from text vs. using pre-built knowledge resources Learning temporal sequences, causality, and other semantics from text Bridging knowledge gaps in text through inference Ontology learning or expansion Knowledge Integration into evolving models Abductive/deductive, commonsense, and other reasoning Bootstrapping learning by Reading systems Important Dates ----------------- Mar 8, 2010 Submission due date Mar 30, 2010 Notification of acceptance Apr 12, 2010 Camera ready papers due Jun 5-6, 2010 Workshops Submission Instructions ------------------------ Please visit http://www.rutumulkar.com/FAM-LbR.php for more information. Location --------- FAM-LbR is held with NAACL 2010 (June 1-6, 2010) in downtown Los Angeles. Local information can be found from the conference website (http://naaclhlt2010.isi.edu/index.html). Related Workshops and Conferences ------------------------------ ---- Machine Reading, AAAI Spring Symposium 2007 (http://www.cs.washington.edu/homes/pjallen/aaaiss07/index.htm) Learning by Reading and Learning to Read, AAAI Spring Symposium 2009 (http://www.coral-lab.org/~oates/aaai2009ss/) K-CAP 2009 (http://kcap09.stanford.edu/) Organizers ----------- Rutu Mulkar-Mehta James Allen Jerry Hobbs Eduard Hovy Bernardo Magnini Chris Manning Contact Information -------------------- Please email Rutu Mulkar-Mehta (me@rutumulkar.com) for any further questions. |
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