[1] Nezhad, MZ, Sadati, N, Yang, K
and Zhu, D. A deep active survival analysis
approach for precision treatment recommendations: application of prostate
cancer. Expert Systems with Applications. Vol. 15, 16-26.
[2] Zheng, J, Gao, L, Zhang, H, Zhu,
D, Wang, H, Gao, Q and Leung, V. Joint energy management and
interference coordination with Max-Min fairness in ultra-dense hetnets.
IEEE Access, Vol. 6, 32588-32600.
[3] Wang, L, Zhu, D, Towner, E and
Dong, M (2018) Obesity risk factors ranking using
multi-task learning. IEEE Conference on Biomedical and Health
Informatics (IEEE-BHI 2018), Las Vegas, March, 2018.
[4] Li, X and Zhu, D (2018) Robust feature selection via l 2, 1 -norm
in finite mixture of regression. Pattern Recognition Letters,
https://doi.org/10.1016/j.patrec.2018.02.021.
[5] Wang, L, Zhu, D and Dong, M (2018) Clustering over-dispersed data with
mixed feature types. Statistical Analysis and Data mining,
11(2), 55-65, April 2018.
[6] Li, X, Zhu, D and Dong, M
(2018) Multinomial classification with
class-conditional overlapping sparse feature groups. Pattern
Recognition Letters, vol 101, Jan. 2018, pp 37-43 Source Code.
[7] Wang, L, Acharya, L, Bai, C and
Zhu, D (2017) Transcriptome assembly strategies for
precision medicine. Quantitative Biology, pp 1-11,
https://doi.org/10.1007/s40484-017-0109-2.
[8] Wang, L, Zhu, D*, Li, Y and
Dong, M (2017) Modeling
Over-dispersion for Network Data Clustering. In the proceeding of
16th IEEE International Conference on Machine Learning and
Application (ICMLA’17). (Best Paper Award Top 3 Finalist, *Corresponding
Autor)
[9] Nezhad, MZ, Zhu, D*, Yang, K and
Levy, P. (2017) A Supervised
Bi-Clustering Approach for Precision Medicine. In the proceeding of
16th IEEE International Conference on Machine Learning and
Application (ICMLA’17). (Best Poster Award Top 3 Finalist,
*Corresponding Autor)
[10] Li, X, Zhu, D and Levy, P
(2017) Predictive
Deep Network with Leveraging Clinical Measure as Auxiliary Task. In
the proceedings of 2017 IEEE International Conference on Bioinformatics
and Biomedicine (BIBM’17)
[11] Wang, L, Li, Y, Zhou, J, Zhu, D
and Ye, J (2017) Multi-task
Survival Analysis. In the proceedings of 2017
IEEE International Conference on Data Mining (ICDM’17)
[12] Li, X, Zhu, D, Dong, M, Nezhad,
MZ and Levy, P (2017) SDT: A Tree Method for Detecting
Patient Subgroups with Personalized Risk Factors. In the proceedings
of 2017 American Medical Information Association (AMIA) Summit on Clinical
Research Informatics, San Francisco, March 2017.
[13] Nezhad, MZ, Zhu, D, Li, X,
Yang, C and Levy, P (2016) SAFS: A Deep Feature Selection
Approach for Precision Medicine. In the proceedings of 2016 IEEE
Inernational Conference on Bioinformatics and Biomedicine (IEEE BIBM
2016).
[14] Xu, H, Dong, M, Zhu, D, et al.
(2016) Text Classification with Topic-based
Word Embedding and Convolutional Neural Networks. In the proceedings
of 2016 ACM Conference on Bioinformatics, Computational Biology and Health
Informatics (ACM BCB 2016).
[15] Wang, L, Zhu, D, Li, Y and
Dong, M. (2016) Poisson-Markov Mixture Model and
Parallel Algorithm for Binning Massive and Heterogeneous DNA Sequencing Reads.
In the Series of Lecture Notes in Computer Science (ISBRA 2016).
[16] Almomani, R, Dong, M and Zhu,
D. (2016) Bayesian Hierarchical Appearance
Model for Robust Object Tracking. In the Proceeding of International
Conference on Multimedia and Expo (ICME 2016).
[17] Almomani, R, Dong, M and Zhu,
D. (2016) Object Tracking via Dirichlet
Process-based Appearance Models. Neural Computing and
Applications, in press. DOI: 10.1007/s00521-016-2280-1.
科研项目:
1. NSF/CCF: S&CC:
Promoting a Healthier Urban Community: Prioritization of Risk Factors for the
Prevention and Treatment of Pediatric Obesity.
09/01/2016-08/31/2019. (co-Principal Investigator)
2. NSF/IIS: S&AS: INT: Autonomous Battery Operating System (ABOS): An
Adaptive and Comprehensive Approach to Efficient, Safe, and Secure Battery
System Management.
09/01/2017-08/31/2021. (Senior Personnel)
3.
NSF/CCF: EAGER: A novel algorithmic framework for discovering subnetworks
from big biological data. 08/15/2014-08/14/2017. (Principal Investigator)
4.
NIH/NLM: R21.A new informatics paradigm for reconstructing signaling
pathways in human disease. 09/2009 – 08/2012. (Principal Investigator)
5.
NIH/NCI: R01. Analysis of Epstain-Barr virus type III latency on cellular miRNA
gene expression. (co-Investigator)
6. NSF/CCF: CPATH: A verification based learning
model that enriches CS and related undergraduate programs. (co-Principal
Investigator)
教学情况:
Classroom
Teaching
(Computer Science Department at Wayne State University):
1.
CSC 8860 Seminar Topics in Computer Vision and Pattern Recognition. Fall 2017
2.
CSC 7825 Machine Learning. Fall 2014, Fall 2015, Fall 2016
3.
CSC 6580 Design and Analysis of Algorithms. Winter 2015, Winter 2016, Winter
2017
4.
CSC 5825 Intro. to Machine Learning and Applications. Winter 2017, Fall 2017,
Fall 2018
5.
CSC 5991 Special Topics in Comp. Sci. Fall 2012, Fall 2013, Winter 2014 ,
Winter 2015, Winter 2016
6.
CSC 2110 Comp. Sci. I (C++ Programming). Fall 2011, Winter 2012, Winter 2013,
Fall 2013