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Kan Xu
Assistant Professor
Assistant Professor
,
Information Systems
h-index
6
Citations
2
h-index
Calculated based on number of publications stored in Pure and citations from Scopus
2021
2025
Research activity per year
Overview
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Scholarly Works
(4)
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Dive into the research topics where Kan Xu is active. These topic labels come from the works of this person. Together they form a unique fingerprint.
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Keyphrases
Group Sparse
100%
Sparse Matrix Factorization
100%
Transfer Learning
100%
Word Embedding
100%
Reinforcement Learning
100%
Stochastic Bandits
100%
Linear Bandits
66%
Weighted Median
50%
Sepsis Treatment
33%
Embedding Change
33%
State Space
33%
Text Data
33%
Novel Groups
33%
Learning Policy
33%
Practice Learning
33%
Sparse Penalty
33%
Learning Words
33%
Novel Algorithm
33%
Deep Reinforcement Learning (deep RL)
33%
Unsupervised Learning
33%
Target Domain
33%
Generalization Bounds
33%
Unstructured Text
33%
Conservative Policy
33%
Sparsity
33%
Natural Constraint
33%
High Probability
33%
New Domains
33%
Prediction Accuracy
33%
Text Corpus
33%
Regret
33%
Number of Words
33%
Low-rank Matrix Factorization
33%
Sparse Regression
33%
HIV Treatment
33%
Downstream Task
33%
Continuous State Space
33%
Exploration Stage
33%
Heterogeneous Countries
25%
Linear Regression Estimator
25%
Computer Science
Sparse Matrix Factorization
100%
Reinforcement Learning
100%
Word Embedding
100%
Transfer Learning
100%
Neural Network
100%
Weighted Median
100%
State Space
66%
ReLU Layer
50%
piecewise linear
50%
Feature Space
50%
Neural Network Architecture
50%
Deep Reinforcement Learning
33%
Good Performance
33%
Sparsity
33%
Prediction Accuracy
33%
Unsupervised Learning
33%
Matrix Factorization
33%
Interpretability
33%
Mathematics
Linear Regression Analysis
100%
Median
66%
Synthetic Data
33%
Covariate
33%
Least-Squares Estimate
33%
Global Parameter
33%
Supplementary Material
33%
Confidence Interval
33%
Generalized Linear Model
33%
Minimax
33%