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Additive partially linear models for massive heterogeneous data
Binhuan Wang
, Yixin Fang
, Heng Lian
, Hua Liang
Mathematical Sciences
Research output
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Contribution to journal
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Article
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peer-review
9
Scopus citations
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Keyphrases
Asymptotic Distribution
100%
Additive Partially Linear Model
100%
Big Heterogeneous Data
100%
Homogeneity Test
100%
Simulation Study
50%
Tuning Parameter
50%
Aggregation Behavior
50%
Medicare
50%
Oracle
50%
Linear Components
50%
Linear Framework
50%
Partially Linear Model
50%
Nonlinear Component
50%
Payment Data
50%
Asymptotic Optimal
50%
Optimal Bound
50%
Heterogeneous Parameters
50%
Provider Payment
50%
Plug-in Estimator
50%
Utilization Data
50%
Provider Utilization
50%
Mathematics
Linear Models
100%
Subpopulation
100%
Asymptotic Distribution
66%
Asymptotics
33%
Simulation Study
33%
Nonlinear
33%
Common Multiple
33%