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Hui Zou
Professor
,
Statistics (Twin Cities)
Email
zouxx019
umn
edu
2004
2024
Research activity per year
Overview
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Network
Projects and Grants
(14)
Research output
(103)
Similar Profiles
(6)
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Dive into the research topics where Hui Zou is active. These topic labels come from the works of this person. Together they form a unique fingerprint.
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Weight
Alphabetically
Mathematics
High-dimensional
88%
Variable Selection
65%
Lasso
60%
Elastic Net
58%
Quantile Regression
52%
Regression
49%
Support Vector Machine
48%
Estimator
38%
Discriminant Analysis
31%
Performance
28%
Covariance matrix
28%
Covariates
27%
Screening
25%
Oracle Property
24%
Nonparametric Regression
24%
Regularization
24%
Cross-validation
23%
Demonstrate
23%
Model
21%
Oracle
21%
Predictors
20%
Classifier
20%
Path
20%
Higher Dimensions
20%
Tapering
20%
Penalized Regression
19%
Majorization
19%
Penalized Likelihood
19%
Discrimination
18%
Margin
18%
Data analysis
18%
Optimal Estimation
17%
Simulation
17%
Learning
17%
Coordinate Descent
16%
Multiple Regression
16%
Composite
16%
Correlation Matrix
16%
Sufficient Dimension Reduction
16%
Partially Linear Model
15%
Model Selection
14%
Local Approximation
14%
Linear Discriminant Analysis
14%
Compound Poisson
14%
Tuning
14%
Efficient Algorithms
14%
Estimate
14%
Varying Coefficients
14%
Multiple Linear Regression
13%
Business & Economics
Variable Selection
100%
Quantile Regression
61%
Estimator
52%
Regularization
50%
Support Vector Machine
36%
Discriminant Analysis
35%
Predictors
32%
Majorization
27%
Least Squares
24%
Matrix
24%
Simulation Study
23%
Screening
22%
Compound Poisson Model
20%
Covariates
20%
Nonparametric Regression
19%
Model Selection
19%
Cross-validation
18%
Partially Linear Model
17%
Performance
16%
Graphical Models
15%
Principal Component Analysis
15%
Coefficients
15%
Sample Size
15%
Optimality
14%
Loss Function
14%
Finite Sample
13%
Kernel
12%
Gradient
12%
Principal Components
12%
Filter
12%
Correlation Matrix
10%
Prediction
10%
Approximation
10%
Discrimination
10%
Boosting
10%
Simulation
10%
Heteroscedasticity
9%
Adaptive Estimation
9%
Estimation Risk
9%
Logistic Regression
9%
Regression Analysis
9%
Censored Regression
9%
Penalty
9%
Varying Coefficient Model
9%
Polynomial Regression
9%
Tobit
8%
Generalized Linear Model
8%