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(We will participate in the DARPA robotics challenge, which will be held in June 2015.)
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== We, the '''[http://bkplus.smart-humanity.snu.ac.kr/src/ Smart Humanity Convergence Center]''' at SNU, awarded a '''BK21+ program''' grant funded by Korean Government 2013. ==
 
== We, the '''[http://bkplus.smart-humanity.snu.ac.kr/src/ Smart Humanity Convergence Center]''' at SNU, awarded a '''BK21+ program''' grant funded by Korean Government 2013. ==
  
== We will participate in the '''[http://www.theroboticschallenge.org/ DARPA robotics challenge]''', which will be held in June 2015. ==
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== We will participate in the '''[http://www.theroboticschallenge.org/ DARPA Robotics Challenge]''', which will be held in June 2015. ==
 
    
 
    
 
* Minsik Lee and Nojun Kwak coauthored a paper titled "''Efficient L1-Norm-Based Low-Rank Matrix Approximations for Large-Scale Problems Using Alternating Rectified Gradient Method''" which is accepted for publication in IEEE Transactions on Neural Networks and Learning Systems.
 
* Minsik Lee and Nojun Kwak coauthored a paper titled "''Efficient L1-Norm-Based Low-Rank Matrix Approximations for Large-Scale Problems Using Alternating Rectified Gradient Method''" which is accepted for publication in IEEE Transactions on Neural Networks and Learning Systems.

Revision as of 14:15, 14 August 2014

대학원 입학에 관심 있는 학생은 곽노준 교수님(nojunk@snu.ac.kr)께 직접 연락하세요.

We, the Smart Humanity Convergence Center at SNU, awarded a BK21+ program grant funded by Korean Government 2013.

We will participate in the DARPA Robotics Challenge, which will be held in June 2015.

  • Minsik Lee and Nojun Kwak coauthored a paper titled "Efficient L1-Norm-Based Low-Rank Matrix Approximations for Large-Scale Problems Using Alternating Rectified Gradient Method" which is accepted for publication in IEEE Transactions on Neural Networks and Learning Systems.
  • Prof. Kwak recently published a paper "Principal component analysis by Lp-norm maximization" in IEEE Transactions on Cybernetics.

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