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Machine Reading for Literary Texts
Machine Reading for Literary Texts
Project Team: Margaret Linley (English, SFU), Oliver Schulte (Computing Science, SFU), Maite Taboada (Linguistics, SFU), Steven Bergner (Computing Science, SFU)
For many researchers, much if not most information about their domain is available in unstructured format only. Examples include literary text, web pages, free form comments and reports. Restricting data analysis to structured data limits the potential of big data methods. The process of extracting structured information from unstructured data is called machine reading. Machine reading supports research in the digital humanities, such as “distant reading” approaches, which aim to find statistical patterns in collections of literary texts, track how ideas, genres, topics, and even moods and emotions circulate, and extract relationship networks of characters. This project studies the Lake District travel books hosted by SFU’s special collections. The team will investigate different machine reading systems for the books themselves, as well as webpages that describe the literary, historical, geographical, and cultural context of the travel books. This project will build machine reading expertise at Big Data Initiative and SFU.