Chi-Ken Lu

Machine Learning Research Faculty in Rutgers University Newark

Research Expertise

theoretical physics
machine learning
Gaussian process
Condensed Matter Physics
Electronic, Optical and Magnetic Materials
Physical and Theoretical Chemistry
Statistics and Probability
Statistical and Nonlinear Physics
Modeling and Simulation
Mathematical Physics
Atomic and Molecular Physics, and Optics
Ceramics and Composites
Materials Chemistry
Inorganic Chemistry

About

Expert in statistical machine learning with experiences in probabilistic machine learning. Hands-on experiences include analyzing and modeling the MedPAR data, OLS, LASSO, deep learning.

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Publications

Hole doping by molecular oxygen in organic semiconductors: Band-structure calculations
Physical Review B
2007
Strong ferromagnetism induced by canted antiferromagnetic order in double perovskite iridates(La1xSrx)2ZnIrO6
Physical Review B
2015
Spin current and spin accumulation near a Josephson junction between a singlet and triplet superconductor
Physical Review B
2009
Zero-energy vortex bound states in noncentrosymmetric superconductors
Physical Review B
2008
Spin current in topologically trivial and nontrivial noncentrosymmetric superconductors
Physical Review B
2010
New Class of 3D Topological Insulator in Double Perovskite
The Journal of Physical Chemistry Letters
2016
Zero Modes and Charged Skyrmions in Graphene Bilayer
Physical Review Letters
2012
Signature of superconducting states in cubic crystal without inversion symmetry
Physical Review B
2008
Robust pinning of magnetic moments in pyrochlore iridates
Physical Review B
2017
Image Classification Based On Deep Convolutional Network And Gaussian Aggregate Encoding
2020 IEEE 32nd International Conference on Tools with Artificial Intelligence (ICTAI)
2020
Pairing symmetry and vortex zero mode for superconducting Dirac fermions
Physical Review B
2010
Magnetic breakdown in twisted bilayer graphene
Physical Review B
2014
Antilinear spectral symmetry and the vortex zero modes in topological insulators and graphene
Physical Review B
2010
Spectrum of the Dirac Hamiltonian with the mass hedgehog in arbitrary dimension
Physical Review B
2011
Conserved charges of order-parameter textures in Dirac systems
Physical Review B
2012
Zero modes of the generalized fermion-vortex system in a magnetic field
Physical Review B
2014
Effect of defect-enhanced molecular oxygen adsorption on the imbalance of hole versus electron mobility in conjugated polymers
Physical Review B
2007
Manifestations of topological band crossings in bulk entanglement spectrum: An analytical study for integer quantum Hall states
Physical Review B
2015
Probing layer localization in twisted graphene bilayers via cyclotron resonance
Physical Review B
2014
Synthesis, crystal structure and magnetic properties of a new B -site ordered double perovskite Sr 2 CuIrO 6
Journal of Solid State Chemistry
2014
Standing-wave-decomposition Gaussian process
Physical Review E
2018
Population inversion in ap-doped quantum well with reduced photon energy
Physical Review B
2006
Bayesian inference with finitely wide neural networks
Physical Review E
2023
Conditional Deep Gaussian Processes: Multi-Fidelity Kernel Learning
Entropy
2021
Conditional Deep Gaussian Processes: Empirical Bayes Hyperdata Learning
Entropy
2021
Friedel oscillation near a van Hove singularity in two-dimensional Dirac materials
Journal of Physics: Condensed Matter
2016
Supersymmetric Runge–Lenz–Pauli vector for Dirac vortex in topological insulators and graphene
Journal of Physics A: Mathematical and Theoretical
2011
Transverse Magnetic Field Distribution in the Vortex State of Noncentrosymmetric Superconductor with O Symmetry
Journal of Low Temperature Physics
2009

Education

National Chiao Tung University

Ph.D., Institute of Physics / September, 2006

Hsinchu

National Tsing Hua University

Master, Electrical Engineering / July, 1998

Hsinchu

National Tsing Hua University

Bachelor, Electrical Engineering / June, 1996

Hsinchu

Experience

Rutgers University Newark

Research Associate / August, 2019Present

Postdoc Associate / September, 2017July, 2019

National Taiwan Normal University

Research Fellow / August, 2014July, 2017

Indiana University Bloomington

postdoc / June, 2012July, 2014

Simon Fraser University

postdoc / March, 2010May, 2012

Academia Sinica

postdoc / October, 2006February, 2010

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