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11-737 Multilingual NLP
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Overview
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Government Investment in Languages
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US Government LT Investment
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The Scenario
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Lorelei Incident
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Lorelei Evaluation Exercises
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Lorelei Performers
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CMU System: Ariel
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Techniques
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Lorelei Questions
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System vs Annotator Performance
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Experiments on English Core Data
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Lessons Learned
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Let's Try It in a Real Disaster
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Lorelei's Legacy
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IR: Discussion Point
Description:
Explore the LORELEI (Low Resource Languages for Emergent Incidents) project in this lecture by Alan Black, focusing on rapidly developing low-resource information extraction for new languages. Delve into the US government's investment in language technologies and the project's scenario for evaluating systems in emergency situations. Examine the CMU Ariel system, various techniques employed, and performance comparisons between systems and human annotators. Learn about experiments conducted on English core data and the lessons gleaned from the project. Discover how LORELEI's principles were applied in a real disaster scenario and discuss the project's lasting impact on the field of multilingual natural language processing.

CMU Multilingual NLP - The LORELEI Project

Graham Neubig
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