ML@GT Seminar: David Bamman, University of California, Berkeley

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Event Details
  • Date/Time:
    • Friday November 15, 2019
      12:45 pm - 1:45 pm
  • Location: Klaus 2443
  • Phone:
  • URL:
  • Email:
  • Fee(s):
    N/A
  • Extras:
Contact

Kyla Hanson

khanson@cc.gatech.edu

Summaries

Summary Sentence: The Machine Learning Center at Georgia Tech invites you to a seminar by David Bamman, an assistant professor from the University of California, Berkeley.

Full Summary: No summary paragraph submitted.

Media
  • David Bamman David Bamman
    (image/jpeg)

The Machine Learning Center invites you to a lecture by David Bamman, an assistant professor in the School of Information at UC Berkeley. 

The lecture will be held at 12:45 p.m. on Friday, November 15 in Klaus 2443.

RSVP Here

Title: The Data-Driven Analysis of Literature

Abstract: Literary novels push the limits of natural language processing. While much work in NLP has been heavily optimized toward the narrow domains of news and Wikipedia, literary novels are an entirely different animal--the long, complex sentences in novels strain the limits of syntactic parsers with super-linear computational complexity, their use of figurative language challenges representations of meaning based on neo-Davidsonian semantics, and their long length (ca. 100,000 words on average) rules out existing solutions for problems like coreference resolution that expect a small set of candidate antecedents.

At the same time, fiction drives computational research questions that are uniquely interesting to that domain. In this talk, I'll outline some of the opportunities that NLP presents for research in the quantitative analysis of culture--including measuring the disparity in attention given to characters as a function of their gender over two hundred years of literary history (Underwood et al. 2018)--and describe our progress to date on two problems essential to a more complex representation of plot: recognizing the entities in literary texts, such as the characters, locations, and spaces of interest (Bamman et al. 2019) and identifying the events that are depicted as having transpired (Sims et al. 2019).  Both efforts involve the creation of a new dataset of 200,000 words evenly drawn from 100 different English-language literary texts and building computational models to automatically identify each phenomenon.

This is joint work with Matt Sims, Ted Underwood, Sabrina Lee, Jerry Park, Sejal Popat and Sheng Shen

Bio: David Bamman is an assistant professor in the School of Information at UC Berkeley, where he works on applying natural language processing and machine learning to empirical questions in the humanities and social sciences. His research often involves adding linguistic structure (e.g., syntax, semantics, coreference) to statistical models of text, and focuses on improving NLP for a variety of languages and domains (such as literary text and social media).  Before Berkeley, he received his PhD in the School of Computer Science at Carnegie Mellon University (LTI).

Additional Information

In Campus Calendar
Yes
Groups

College of Computing, GVU Center, ML@GT

Invited Audience
Faculty/Staff, Postdoc, Public, Graduate students, Undergraduate students
Categories
Seminar/Lecture/Colloquium
Keywords
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Status
  • Created By: ablinder6
  • Workflow Status: Published
  • Created On: Oct 14, 2019 - 1:06pm
  • Last Updated: Oct 29, 2019 - 12:53pm