Changho Suh
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Professor, Electrical Engineering, KAIST
Affiliate Professor, NYU
Adjunct Professor, Kim Jaechul Graduate School of AI, KAIST
Adjunct Professor, Semiconductor System Engineering, KAIST
291 Daehak-ro N1-912, Daejeon, South Korea, 34141
+82-42-350-7429
chsuh@kaist.ac.kr
c.suh@nyu.edu
http://csuh.kaist.ac.kr
Google Scholar Profile
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Schedule
Teaching schedule for Fall 2024: EE424 Introduction to Optimization, Tuesday and Thursday 14:30 – 15:45
Office hours: Tuesdays and Thurdays 16:00 - 17:00 (during academic periods)
(Nov. 2024) A new textbook published (Springer):
(May 2024) Delivered a lecture at KAIST AI Business Transformation Program:
(Jan. 2024) My books on convex optimiztion and information theory are featured in the College of Engineering, KAIST (article)
(Dec. 2023) Appointed as Treasurer for IEEE Information Theory Society Board of Governors (2024 to 2026).
(Dec. 2023) Call for Contributions for IEEE Information Theory Newsletter
Deadline: December 15th
Share any ideas, initiatives, or potential contributions you may have in mind
Send contributions to the Newsletter Editor, Changho Suh <chsuh@kaist.ac.kr>
(Oct. 2023) A paper accepted in the IEEE Transactions on Information Theory:
(Oct. 2023) Delivered a lecture at KAIST AI Graduate School CAIO program:
(Sep. 2023) Promoted to Professor.
(Sep. 2023) IEEE Information Theory Newsletter September Issue
(July 2023) Invited talk at EIRIC AI seminar:
(June 2023) IEEE Information Theory Newsletter June Issue
(June 2023) A new textbook published (Springer):
(May 2023) Delivered an AI course at KAIST AI Graduate School CAIO program:
(Apr. 2023) A paper accepted in ICML 2023:
(Apr. 2023) A new textbook published (Now Publishers):
(Mar. 2023) IEEE Information Theory Newsletter March Issue
(Dec. 2022 ) KAIST AI Institute published a new book on social AI
(Dec. 2022) Published an article in KAST next-generation report:
(Dec. 2022) IEEE Information Theory Newsletter December Issue
(Nov. 2022) Elevated to IEEE Fellow:
(Nov. 2022) A new textbook published (Now Publishers):
(Nov. 2022) Delivered a lecture at KAIST AI Graduate School CAIO program:
(Aug. 2022) Received the Google Research Award on:
Selected funding agencies
Selected publications
J. Cho, G. Hwang and C. Suh, “A fair classifier using kernel density estimation,” NeurIPS, Dec. 2020 (Top 10 KAIST Research Achievements).
H. Kim, K. Lee, G. Hwang and C. Suh, “Crash to not crash: Learn to identify dangerous vehicles using a simulator,” AAAI, Honolulu, USA, Jan. 2019 (oral presentation, website, article, media).
K. Ahn, K. Lee, H. Cha and C. Suh, “Binary rating estimation with graph side information,” NeurIPS, Montreal, Canada, Dec. 2018.
C. Suh, J. Cho and D. Tse, “Two-way interference channel capacity: How to have the cake and eat it too,” IEEE Transactions on Information Theory, vol. 64, no. 6, pp. 4259–4281, June 2018.
S. Mohajer, C. Suh and A. Elmahdy, “Active learning for top-K rank aggregation from noisy comparisons,” ICML, Sydney, Australia, Aug. 2017.
Y. Chen, G. Kamath, C. Suh and D. Tse, “Community recovery in graphs with locality,” ICML, New York, USA, June 2016.
Y. Chen and C. Suh, “Spectral MLE: Top-K rank aggregation from pairwise comparisons,” ICML, Lille, France, July 2015 (Bell Labs Prize finalist, IEIE Haedong Young Engineer Award).
C. Suh, M. Ho and D. Tse, “Downlink interference alignment,” IEEE Transactions on Communications, vol. 59, no. 9, pp. 2616–2626, Sep. 2011 (IEEE Communications Society Stephen O. Rice Prize in 2013).
C. Suh and D. Tse, “Feedback capacity of the Gaussian interference channel to within 2 bits,” IEEE Transactions on Information Theory, vol. 57, no. 5, pp. 2667–2685, May 2011 (IEEE ISIT Best Student Paper Award).
C. Suh and K. Ramchandran, “Exact-repair MDS code construction using interference alignment,” IEEE Transactions on Information Theory, vol. 57, no. 3, pp. 1425–1442, Mar. 2011 (IEEE ISIT Best Student Paper Award finalist).
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