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b.star()
- Compute Optimal Block Length for Stationary and Circular Bootstrap
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Engel95
- 1995 British Family Expenditure Survey
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cps71
- Canadian High School Graduate Earnings
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Italy
- Italian GDP Panel
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oecdpanel
- Cross Country Growth Panel
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wage1
- Cross-Sectional Data on Wages
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gradients()
- Extract Gradients
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np np-package
- Nonparametric Kernel Smoothing Methods for Mixed Data Types
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npcmstest()
- Kernel Consistent Model Specification Test with Mixed Data Types
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npcdens()
- Kernel Conditional Density Estimation with Mixed Data Types
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npcdensbw()
- Kernel Conditional Density Bandwidth Selection with Mixed Data Types
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npcdist()
- Kernel Conditional Distribution Estimation with Mixed Data Types
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npcdistbw()
- Kernel Conditional Distribution Bandwidth Selection with Mixed Data Types
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npconmode()
- Kernel Modal Regression with Mixed Data Types
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npcopula()
- Kernel Copula Estimation with Mixed Data Types
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npdeneqtest()
- Kernel Consistent Density Equality Test with Mixed Data Types
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npudens()
- Kernel Density Estimation with Mixed Data Types
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npudensbw()
- Kernel Density Bandwidth Selection with Mixed Data Types
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npdeptest()
- Kernel Consistent Pairwise Nonlinear Dependence Test for Univariate Processes
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npudist()
- Kernel Distribution Estimation with Mixed Data Types
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npudistbw()
- Kernel Distribution Bandwidth Selection with Mixed Data Types
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npksum()
- Kernel Sums with Mixed Data Types
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npplot()
- General Purpose Plotting of Nonparametric Objects
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npplreg()
- Partially Linear Kernel Regression with Mixed Data Types
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npplregbw()
- Partially Linear Kernel Regression Bandwidth Selection with Mixed Data Types
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npqcmstest()
- Kernel Consistent Quantile Regression Model Specification Test with Mixed Data Types
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npqreg()
- Kernel Quantile Regression with Mixed Data Types
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npquantile()
- Kernel Univariate Quantile Estimation
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npreg()
- Kernel Regression with Mixed Data Types
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npregbw()
- Kernel Regression Bandwidth Selection with Mixed Data Types
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npregiv()
- Nonparametric Instrumental Regression
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npregivderiv()
- Nonparametric Instrumental Derivatives
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npsdeptest()
- Kernel Consistent Serial Dependence Test for Univariate Nonlinear Processes
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npsigtest()
- Kernel Regression Significance Test with Mixed Data Types
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npindex()
- Semiparametric Single Index Model
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npindexbw()
- Semiparametric Single Index Model Parameter and Bandwidth Selection
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npscoef()
- Smooth Coefficient Kernel Regression
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npscoefbw()
- Smooth Coefficient Kernel Regression Bandwidth Selection
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npsymtest()
- Kernel Consistent Density Asymmetry Test with Mixed Data Types
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npunitest()
- Kernel Consistent Univariate Density Equality Test with Mixed Data Types
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npseed()
- Set Random Seed
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nptgauss()
- Truncated Second-order Gaussian Kernels
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npuniden.boundary()
- Kernel Bounded Univariate Density Estimation Via Boundary Kernel Functions
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npuniden.reflect()
- Kernel Bounded Univariate Density Estimation Via Data-Reflection
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npuniden.sc()
- Kernel Shape Constrained Bounded Univariate Density Estimation
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se()
- Extract Standard Errors
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uocquantile()
- Compute Quantiles