I received my PhD degree in 2012 from Machine Learning Department, School of Computer Science, Carnegie Mellon University. I work with Jeff Schneider on learning with limited supervision by encoding input and output information. I've worked as a research intern on high-frequency trading and statistical arbitrage (at Citadel Investment Group), behavioral targeting and computational advertising (at Yahoo! Labs) and parallel machine learning on video analysis (at IBM T.J. Watson Research Center).
I am supported by the IBM PhD Fellowship (2009 - 2011). Thanks IBM!
I am supported by the Yahoo! Key Scientific Challenges Award (20 awardees worldwide in 2009). Thanks Yahoo!
My research has also been supported by the ICML student travel scholarship, NIPS travel award and SDM travel award. Thanks!
1) Learning with limited supervision by encoding input and output information.
2) Web mining: web information extraction, computational advertising and behavioral targeting.
3) Parallel machine learning and Hadoop.
Yi Zhang and Jeff Schneider. Maximum Margin Output Coding, ICML 2012. (pdf) (code)
Yi Zhang and Jeff Schneider. A Composite Likelihood View for Multi-Label Classification, AISTATS 2012. (pdf)
Yi Zhang and Jeff Schneider. Multi-label Output Codes using Canonical Correlation Analysis, AISTATS 2011. (pdf) (code)
Yi Zhang and Jeff Schneider. Learning Multiple Tasks with a Sparse Matrix-Normal Penalty, NIPS 2010. (pdf)
Yi Zhang and Jeff Schneider. Projection Penalty: Dimension Reduction without Loss, ICML 2010. (pdf)
Yi Zhang. Multi-Task Active Learning with Output Constraints, AAAI 2010. (pdf)
Yi Zhang, Jeff Schneider and Artur Dubrawski. Learning Compressible Models. 2010 SIAM International Conference on Data Mining, SDM 2010. (pdf)
Yi Zhang. Smart PCA. The 21th International Joint Conference on Artificial Intelligence, IJCAI 2009. (pdf)
Yi Zhang, Jeff Schneider and Artur Dubrawski. Learning the Semantic Correlation: An Alternative Way to Gain from Unlabeled Text, NIPS 2008. (pdf)
Yi Zhang and Xiaoming Jin. Concept Sampling: Towards Systematic Selection in Large-Scale Mixed Concepts in Machine Learning, IJCAI 2007. (pdf)
Yi Zhang and Xiaoming Jin. An Automatic Construction and Organization Strategy for Ensemble Learning on Data Streams. SIGMOD Record, Vol. 35, No. 3, 2006. (pdf)
Yi Zhang and Xiaoming Jin.
Classifying Data Streams by Training Data Combination.
The 1st China Symposium on Classification and Applications, 2005.
Yi Zhang and Zhidong Deng.
Identifying Biological Pathways via Phase Decomposition and Profile Extraction.
Computational Systems Bioinformatics, 2006
(pdf)
Zhidong Deng and Yi Zhang.
Collective Behavior of a Small-World Recurrent Neural System with Scale-Free Distribution.
IEEE Transactions on Neural Networks, Vol. 18, Issue 5, 2007
(pdf)
Zhidong Deng and Yi Zhang.
Complex Systems Modeling Using Scale-Free Highly-Clustered Echo State Network.
IJCNN 2006.
(pdf) 3. Computational Biology: Analyzing Time-Series Gene Expression Data
4. Recurrent Neural Networks for Modeling Nonlinear Dynamics
----- Where Am I? -----
office:
8008 GHC
Carnegie Mellon University