Text Dependencies: Information Cascades, Translations and Multi-Input Attention - 2018
Center for Language & Speech Processing(CLSP), JHU via YouTube
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Explore text dependencies, information cascades, and multi-input attention in this comprehensive lecture by David Smith from the Center for Language & Speech Processing at Johns Hopkins University. Delve into methods for inferring and exploiting dependency structures in texts, including a new directed spanning tree model for information cascades and a contrastive training procedure. Learn about extracting parallel passages from multilingual corpora using polylingual topic models to improve translation systems. Discover techniques for detecting and correcting multiple transcriptions of the same passage in noisy OCR data using multi-input attention models. Gain insights into applications of natural language processing in information retrieval, social sciences, and humanities, as well as computational linguistic models of structure learning and historical change.
Syllabus
Text Dependencies: Information Cascades, Translations and Multi-Input Attention - David Smith 2018
Taught by
Center for Language & Speech Processing(CLSP), JHU