Recognizing and Interpreting Temporal Expressions in Open Domain Texts

Since the early 1990s, when the third author was a visiting PhD student at Imperial College, he and Dov Gabbay have had many interactions. Usually over the phone, they talked about science, publishing and other initiatives, and invariably their conversations ended on a strategic note. Dov and the third author of this paper share a fundamental vision on the status and future of logic. To have a bright future, the discipline needs to be strongly embedded in external uses and needs. Much of the innovation in logic over the past decades has come from computer science, with new questions, new modeling needs, new reasoning mechanisms, etc. To continue to strive, we believe that logic should be embedded alongside its application areas, with feedback back and forth through measurable evaluations, either theoretical or experimental. It is clear that in many research institutes around the world this is actually how logic and computer science have come to interact. But we believe that logic can and should play a similar role vis-a-vis other scientific areas, both traditional and non-traditional, such as analytic philosophy, law, cognitive science, economics, information science, theology, language, and political theory.

[1]  Thomas Lukasiewicz MAXIMUM ENTROPY , 2000 .

[2]  Wei Li,et al.  Early results for Named Entity Recognition with Conditional Random Fields, Feature Induction and Web-Enhanced Lexicons , 2003, CoNLL.

[3]  M. de Rijke,et al.  Extracting Temporal Information from Open Domain Text: A Comparative Exploration , 2005, J. Digit. Inf. Manag..

[4]  Andrew McCallum,et al.  Conditional Random Fields: Probabilistic Models for Segmenting and Labeling Sequence Data , 2001, ICML.

[5]  Adam L. Berger,et al.  A Maximum Entropy Approach to Natural Language Processing , 1996, CL.

[6]  Jati K. Sengupta,et al.  Introduction to Information , 1993 .

[7]  Inderjeet Mani,et al.  2003 Standard for the Annotation of Temporal Expressions , 2004 .

[8]  Rafael Muñoz,et al.  Recognizing and tagging temporal expressions in Spanish , 2002 .

[9]  Robert J. Gaizauskas,et al.  Annotating Events and Temporal Information in Newswire Texts , 2000, LREC.

[10]  Inderjeet Mani,et al.  Temporally Anchoring and Ordering Events in News , 2004 .

[11]  Frank Schilder,et al.  Extracting meaning from temporal nouns and temporal prepositions , 2004, TALIP.

[12]  James Pustejovsky,et al.  TimeML: Robust Specification of Event and Temporal Expressions in Text , 2003, New Directions in Question Answering.

[13]  Inderjeet Mani,et al.  Robust Temporal Processing of News , 2000, ACL.

[14]  Patrick Blackburn,et al.  The Language of Time: A Reader , 2006, Computational Linguistics.

[15]  Frank Schilder,et al.  From Temporal Expressions To Temporal Information: Semantic Tagging Of News Messages , 2001, The Language of Time - A Reader.

[16]  Fernando Pereira,et al.  Shallow Parsing with Conditional Random Fields , 2003, NAACL.