Jianhua Chen

Jianhua Chen

Associate Professor

3272F Patrick F. Taylor Hall

Louisiana State University
Baton Rouge, LA 70803

Phone: 225 578 4340


Educational Background

Ph.D. in Computer Science, Jilin University, China, 1988

M.S. in Computer Science, Jilin University, China, 1985


Research Interests

Machine Learning and Data Mining, Data Clustering, Applications of Machine Learning for Security, Web Mining and Ontology Construction, Fuzzy Logic and Fuzzy Systems, Intelligent Information Retrieval and Interactive Systems, Knowledge Representation, Logics in AI, Non-Monotonic Reasoning


Teaching Responsibilities

CSC 7444: Advanced Artificial Intelligence

CSC 7442: Data Mining and Knowledge Discovery from Databases

CSC 7333: Machine Learning

CSC 4444: Artificial Intelligence

CSC 4402: Introduction of Database Systems


Selected Publications

Frej Berglind, Jianhua Chen and Alexandros Sopasakis.  Deep Distributional Temporal Difference Learning for Game Playing.  To Appear: Proc. of International Symposium on Methodologies of Intelligent Systems, Sept. 2020.

Marzieh Mousavian, Jianhua Chen, Steven G. Greening. Depression Detection Using Feature Extraction and Deep Learning from sMRI Images. ICMLA 2019: 1731-1736.

Guoji Xu, Jianhua Chen, Qin Chen. Application of Artificial Neural Networks to Wave Load Prediction for Coastal Bridges. ICCIP 2017: 526-531.

David Sithiaraj, Xinbo Huang, Jianhua Chen.  Predicting Climate Types for the Continental United States using Unsupervised Clustering Techniques.  Environmetrics. 2019;30:e2524.

Jianhua Chen.  Properties of a New Adaptive Sampling Method with Applications to Scalable Learning. Web Intelligence 13(4): 215-227 (2015).

Ömer M. Soysal, Jianhua Chen.  Object Recognition by Spectral Feature Derived from Canonical Shape Representation. Machine Vision and Applications 24(4): 855-868 (2013).

Janardhana Punuru, Jianhua Chen.  Learning Non-taxonomical Semantic Relations from Domain Texts. Journal of Intelligent Information Systems 38(1): 191-207 (2012).


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