Yejin Choi

Yejin Choi is the Brett Helsel Associate Professor of Computer Science at the University of Washington. Her research considers natural language processing and computer vision.

Yejin Choi
Alma materCornell University
Seoul National University
Scientific career
InstitutionsUniversity of Washington
Stony Brook University
ThesisFine-grained opinion analysis : structure-aware approaches (2010)

Early life and education

Choi is from South Korea. She attended Seoul National University.[1] After earning a bachelor's degree in Computer Science, Choi moved to the United States, where she joined Cornell University as a graduate student. Here she worked with Claire Cardie on natural language processing. After earning her doctorate Choi joined Stony Brook University as an Assistant Professor of Computer Science.[2] At Stony Brook University Choi developed a statistical technique to identify fake hotel reviews.[3]

Research and career

In 2018 Choi joined the Allen Institute for AI.[4] Her research looks to endow computers with a statistical understanding of written language.[5] She became interested in neural networks and their application in artificial intelligence. She started to assemble a knowledge base that became known as the atlas of machine commonsense (ATOMIC). By the time she had finished the creation of atomic, the language model generative Pre-trained Transformer 2 (GPT-2) had been released.[6] ATOMIC does not make use of linguistic rules, but combines the representations of different languages within a neural network.[6]

In 2020 Choi was endowed with the Brett Helsel Professorship.[7] She has since made use of commonsense transformers (COMET) with Good old fashioned artificial intelligence (GOFAI).[6] The approach combines symbolic reasoning and neural networks.[6] She has developed computational models that can detect biases in language that work against people from underrepresented groups.[8] Amongst these, Choi has shown that women in films carry less power than their male counterparts.[5]

Awards and honours

Select publications

  • Ott, Myle; Choi, Yejin; Cardie, Claire; Hancock, Jeffrey T. (2011). "Finding Deceptive Opinion Spam by Any Stretch of the Imagination". Proceedings of the 49th Annual Meeting of the Association for Computational Linguistics: Human Language Technologies. Portland, Oregon, USA: Association for Computational Linguistics: 309–319.

References

  1. "Yejin Choi". Stanford HAI. Retrieved 2020-10-01.
  2. "Yejin Choi". www3.cs.stonybrook.edu. Retrieved 2020-10-02.
  3. "Asian American: Yejin Choi Devises Method to Detect Fake Reviews Goldsea". goldsea.com. Retrieved 2020-10-02.
  4. "Mosaic - People". mosaic.allenai.org. Retrieved 2020-10-01.
  5. Snyder, Alison. "Trying to give AI some common sense". Axios. Retrieved 2020-10-01.
  6. "Common Sense Comes to Computers". Quanta Magazine. Retrieved 2020-10-01.
  7. "Endowment for Faculty Excellence | Paul G. Allen School of Computer Science & Engineering". www.cs.washington.edu. Retrieved 2020-10-01.
  8. "Anita Borg Award (BECA) - CRA-WP". Retrieved 2020-10-01.
  9. Zeng, Daniel. "AI's 10 to Watch" (PDF). IEEE. Retrieved 2020-10-01.
  10. "Yejin Choi (Cornell CS PhD '10) won the Marr Prize for her paper "From Large Scale Image Categorization to Entry-Level Categories" | Department of Computer Science". www.cs.cornell.edu. Retrieved 2020-10-01.
  11. "Announcing the Winners of the Facebook ParlAI Research Awards". Facebook Research. 2017-10-18. Retrieved 2020-10-01.
  12. "AAAI Outstanding Paper Award". aaai.org. Retrieved 2020-10-01.
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