Executing One's Way out of the Chinese Room
Created by W.Langdon from
gp-bibliography.bib Revision:1.8010
- @InProceedings{Yoo:2024:GI,
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author = "Shin Yoo",
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title = "Executing One's Way out of the {Chinese Room}",
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booktitle = "13th International Workshop on Genetic Improvement
@ICSE 2024",
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year = "2024",
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editor = "Gabin An and Aymeric Blot and Vesna Nowack and
Oliver Krauss and Justyna Petke",
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pages = "viii",
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address = "Lisbon",
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month = "16 " # apr,
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publisher = "ACM",
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note = "Invited Keynote",
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keywords = "genetic algorithms, genetic programming, Genetic
Improvement, ANN",
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isbn13 = "979-8-4007-0573-1/24/04",
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URL = "http://gpbib.cs.ucl.ac.uk/gi2024/an_2024_GI.pdf",
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DOI = "doi:10.1145/3643692",
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slides_url = "http://gpbib.cs.ucl.ac.uk/gi2024/gi_2024_slides/yoo_gi2024_keynote.pdf",
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video_url = "https://www.youtube.com/watch?v=mtttbsL4qFo&list=PLI8fiFpB7BoIRqJuY80XwmH-DFT_71y2S&index=1",
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size = "1 page",
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abstract = "One very attractive property of Large Language Models
(LLMs) is their emergent in-context learning
capability, which enables us to simply describe our
requirements in natural languages and get the
corresponding source code generated in programming
languages. While LLMs as a generative model are known
to hallucinate, i.e., generate factually incorrect
contents, the fact that code can be executed can be
used to fight this phenomenon. We briefly look at
existing techniques designed to improve the correctness
of code generated by LLMs, and will try to imagine the
future of Genetic Improvement that is supported,
enhanced, and driven by LLMs.",
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notes = "GI @ ICSE 2024, part of \cite{an:2024:GI}",
- }
Genetic Programming entries for
Shin Yoo
Citations