Savvy Parity Regression Model Estimation with ‘savvyPR’

library(savvyPR)
library(ggplot2)

Introduction

This vignette demonstrates how to use the savvyPR package for parity regression model estimation and cross-validation. The package handles multicollinearity by applying risk parity constraints, supporting both Budget-based and Target-based parameterizations.

Installation

# Install the development version from GitHub
# devtools::install_github("Ziwei-ChenChen/savvyPR)
library(savvyPR)
library(MASS)
library(glmnet)
## Loading required package: Matrix
## Loaded glmnet 4.1-8

Parity Regression Model Estimation

The savvyPR function is used to fit a parity regression model. Here we demonstrate its usage with synthetic, highly correlated data.

library(MASS)
library(glmnet)

# Function to create a correlation matrix for X
create_corr_matrix <- function(rho, p) {
  corr_matrix <- diag(1, p)
  for (i in 2:p) {
    for (j in 1:(i-1)) {
      corr_matrix[i, j] <- rho^(abs(i - j))
      corr_matrix[j, i] <- corr_matrix[i, j] # symmetric matrix
    }
  }
  return(corr_matrix)
}

# Function to generate beta values with both positive and negative signs
generate_beta <- function(p) {
  half_p <- ceiling(p / 2)
  beta <- rep(c(1, -1), length.out = p) * rep(1:half_p, each = 2)[1:p]
  return(beta)
}

set.seed(123)
n <- 1500  
p <- 15  
rho <- -0.5  

corr_matrix <- create_corr_matrix(rho, p)
x <- mvrnorm(n = n, mu = rep(0, p), Sigma = corr_matrix)
beta <- generate_beta(p + 1)
sigma_vec <- abs(rnorm(n = n, mean = 15, sd = sqrt(1)))
y <- rnorm(n, mean = as.vector(cbind(1,x)%*%beta), sd = sigma_vec)
  
# 1. Run OLS estimation with intercept
result_ols <- lm(y ~ x)
coef_ols <- coef(result_ols)

# 2. Run Ridge Regression (RR) estimation
result_RR <- glmnet(x, y, alpha = 0, lambda = 1)
coef_RR <- coef(result_RR)

# 3. Run PR estimation (Budget Method)
result_pr_budget <- savvyPR(x, y, method = "budget", val = 0.05, intercept = TRUE)
print(result_pr_budget)
## 
## Call:  savvyPR(x = x, y = y, method = "budget", val = 0.05, intercept = TRUE) 
## 
##  Method Number of Non-Zero Coefficients Intercept Included Lambda Value
##  budget                              16                Yes           NA
## 
## Coefficients:
##  Coefficient Estimate
##  (Intercept)   0.9474
##           X1  -3.6223
##           X2   3.7272
##           X3  -3.4870
##           X4   4.1283
##           X5  -4.1596
##           X6   5.1385
##           X7  -4.9644
##           X8   6.0606
##           X9  -6.0015
##          X10   6.3743
##          X11  -5.6775
##          X12   7.8006
##          X13  -7.3068
##          X14   9.0372
##          X15  -8.7735
coef_pr_budget <- coef(result_pr_budget)

# 4. Run PR estimation (Target Method)
result_pr_target <- savvyPR(x, y, method = "target", val = 1, intercept = TRUE)
print(result_pr_target)
## 
## Call:  savvyPR(x = x, y = y, method = "target", val = 1, intercept = TRUE) 
## 
##  Method Number of Non-Zero Coefficients Intercept Included Lambda Value
##  target                              16                Yes           NA
## 
## Coefficients:
##  Coefficient Estimate
##  (Intercept)   0.9978
##           X1  -4.1012
##           X2   4.1303
##           X3  -3.8591
##           X4   4.4168
##           X5  -4.5009
##           X6   5.4143
##           X7  -5.2861
##           X8   6.2761
##           X9  -6.2403
##          X10   6.5827
##          X11  -5.9788
##          X12   7.9785
##          X13  -7.5766
##          X14   9.2430
##          X15  -9.0638
coef_pr_target <- coef(result_pr_target)

# Calculate the L2 distance to true beta
ols_L2 <- sqrt(sum((beta - coef_ols)^2))
print(paste("OLS L2:", ols_L2))
## [1] "OLS L2: 2.24654287653346"
RR_L2 <- sqrt(sum((beta - coef_RR)^2))
print(paste("Ridge L2:", RR_L2))
## [1] "Ridge L2: 2.10076303047981"
pr_budget_L2 <- sqrt(sum((beta - coef_pr_budget)^2))
print(paste("PR Budget L2:", pr_budget_L2))
## [1] "PR Budget L2: 4.6582202853575"
pr_target_L2 <- sqrt(sum((beta - coef_pr_target)^2))
print(paste("PR Target L2:", pr_target_L2))
## [1] "PR Target L2: 5.74454449168347"

You can use the summary function to get detailed statistics for your models:

summary(result_pr_budget)
## Summary of Parity Model
## ===================================================================
## 
## Parameterization Method: budget 
## Intercept: Included
## 
## Call:
## savvyPR(x = x, y = y, method = "budget", val = 0.05, intercept = TRUE)
## 
## Residuals:
##          0%         25%         50%         75%        100% 
## -56.4721096 -10.9724126  -0.1952992  10.8910982  48.9682405 
## 
## Coefficients:
##             Estimate Std. Error t value  Pr(>|t|)   2.5 %   97.5 %  Signif.
## (Intercept) 0.9474   0.431      2.1984   0.0281     0.1028  1.7921  *      
## X1          -3.6223  0.5026     -7.2072  9.0577e-13 -4.6073 -2.6372 ***    
## X2          3.7272   0.5477     6.8045   1.4663e-11 2.6536  4.8007  ***    
## X3          -3.487   0.5593     -6.2346  5.8903e-10 -4.5832 -2.3908 ***    
## X4          4.1283   0.55       7.5065   1.0423e-13 3.0504  5.2062  ***    
## X5          -4.1596  0.5612     -7.4125  2.0734e-13 -5.2595 -3.0598 ***    
## X6          5.1385   0.5528     9.2957   5.0478e-20 4.0551  6.2219  ***    
## X7          -4.9644  0.5569     -8.914   1.4106e-18 -6.056  -3.8729 ***    
## X8          6.0606   0.5498     11.0227  3.2671e-27 4.983   7.1383  ***    
## X9          -6.0015  0.5598     -10.7216 6.9524e-26 -7.0986 -4.9044 ***    
## X10         6.3743   0.5607     11.3678  9.0139e-29 5.2753  7.4733  ***    
## X11         -5.6775  0.5529     -10.2685 6.0457e-24 -6.7612 -4.5938 ***    
## X12         7.8006   0.5748     13.5718  1.2278e-39 6.6741  8.9272  ***    
## X13         -7.3068  0.5552     -13.1595 1.7263e-37 -8.3951 -6.2185 ***    
## X14         9.0372   0.5627     16.059   1.2454e-53 7.9342  10.1401 ***    
## X15         -8.7735  0.4755     -18.4495 1.3655e-68 -9.7056 -7.8415 ***    
## ---
## Signif. codes:  0 '***' 0.001 '**' 0.01 '*' 0.05 '.' 0.1 ' ' 1
## 
## Residual standard error: 16.6436 on 1484 degrees of freedom
## Multiple R-squared: 0.7826 , Adjusted R-squared: 0.7804 
## F-statistic: 356.1532 on 15 and 1484 DF,  p-value: 0.0000e+00 
## AIC: 8451.993 , BIC: 8537.004 , Deviance: 411082.4
summary(result_pr_target)
## Summary of Parity Model
## ===================================================================
## 
## Parameterization Method: target 
## Intercept: Included
## 
## Call:
## savvyPR(x = x, y = y, method = "target", val = 1, intercept = TRUE)
## 
## Residuals:
##          0%         25%         50%         75%        100% 
## -58.9781373 -11.4050252  -0.2897816  11.4442435  52.0560037 
## 
## Coefficients:
##             Estimate Std. Error t value  Pr(>|t|)   2.5 %    97.5 %  Signif.
## (Intercept) 0.9978   0.4524     2.2056   0.0276     0.1111   1.8844  *      
## X1          -4.1012  0.5276     -7.7736  1.4166e-14 -5.1352  -3.0671 ***    
## X2          4.1303   0.575      7.1833   1.0728e-12 3.0033   5.2572  ***    
## X3          -3.8591  0.5871     -6.5731  6.8054e-11 -5.0098  -2.7084 ***    
## X4          4.4168   0.5773     7.6507   3.5751e-14 3.2853   5.5484  ***    
## X5          -4.5009  0.5891     -7.6408  3.8518e-14 -5.6555  -3.3464 ***    
## X6          5.4143   0.5803     9.3308   3.6947e-20 4.277    6.5516  ***    
## X7          -5.2861  0.5846     -9.042   4.6833e-19 -6.4319  -4.1402 ***    
## X8          6.2761   0.5772     10.8739  1.4943e-26 5.1448   7.4073  ***    
## X9          -6.2403  0.5876     -10.6202 1.9152e-25 -7.392   -5.0887 ***    
## X10         6.5827   0.5886     11.1835  6.2051e-28 5.4291   7.7364  ***    
## X11         -5.9788  0.5804     -10.3013 4.4033e-24 -7.1163  -4.8412 ***    
## X12         7.9785   0.6033     13.2239  8.0385e-38 6.796    9.1611  ***    
## X13         -7.5766  0.5829     -12.9991 1.1453e-36 -8.7189  -6.4342 ***    
## X14         9.243    0.5907     15.647   3.3967e-51 8.0853   10.4008 ***    
## X15         -9.0638  0.4992     -18.1572 1.0869e-66 -10.0422 -8.0854 ***    
## ---
## Signif. codes:  0 '***' 0.001 '**' 0.01 '*' 0.05 '.' 0.1 ' ' 1
## 
## Residual standard error: 17.4711 on 1484 degrees of freedom
## Multiple R-squared: 0.7605 , Adjusted R-squared: 0.758 
## F-statistic: 314.0652 on 15 and 1484 DF,  p-value: 0.0000e+00 
## AIC: 8597.558 , BIC: 8682.57 , Deviance: 452975.2

The package also provides built-in plotting functions to visualize the coefficients and the risk parity optimization distributions.

# Plot the estimated coefficients
plot(result_pr_budget, plot_type = "estimated_coefficients", label = TRUE)

Four-panel visualization: The top two plots show estimated regression coefficients for budget and target methods. The bottom two plots display the risk parity distribution, including optimization weights and relative risk contributions across predictors.

plot(result_pr_target, plot_type = "estimated_coefficients", label = FALSE)

Four-panel visualization: The top two plots show estimated regression coefficients for budget and target methods. The bottom two plots display the risk parity distribution, including optimization weights and relative risk contributions across predictors.

# Plot the risk contributions and weights/target variables
plot(result_pr_budget, plot_type = "risk_contributions", label = TRUE)

Four-panel visualization: The top two plots show estimated regression coefficients for budget and target methods. The bottom two plots display the risk parity distribution, including optimization weights and relative risk contributions across predictors.

plot(result_pr_target, plot_type = "risk_contributions", label = FALSE)

Four-panel visualization: The top two plots show estimated regression coefficients for budget and target methods. The bottom two plots display the risk parity distribution, including optimization weights and relative risk contributions across predictors.

Cross-Validation for Parity Regression Models

The cv.savvyPR function performs cross-validation to select optimal parameters. It handles both the “budget” sequence and the “target” sequence automatically.

# Cross-validation with Ridge
result_rr_cv <- cv.glmnet(x, y, alpha = 0, folds = 5)
fit_rr1 <- glmnet(x, y, alpha = 0, lambda = result_rr_cv$lambda.min)
coef_rr_cv <- coef(fit_rr1)[,1]

# Cross-validation with model type PR1 (Budget Method)
result_pr_cv1 <- cv.savvyPR(x, y, method = "budget", folds = 5, model_type = "PR1", measure_type = "mse")
coef_pr_cv1 <- coef(result_pr_cv1)

# Cross-validation with model type PR2 (Target Method)
result_pr_cv2 <- cv.savvyPR(x, y, method = "target", folds = 5, model_type = "PR2", measure_type = "mse")
coef_pr_cv2 <- coef(result_pr_cv2)

# Cross-validation with model type PR3 (Budget Method)
result_pr_cv3 <- cv.savvyPR(x, y, method = "budget", folds = 5, model_type = "PR3", measure_type = "mse")
coef_pr_cv3 <- coef(result_pr_cv3)

# Calculate the L2 distance 
print(paste("Ridge CV L2:", sqrt(sum((beta - coef_rr_cv)^2))))
## [1] "Ridge CV L2: 2.02357341480252"
print(paste("PR1 CV (Budget) L2:", sqrt(sum((beta - coef_pr_cv1)^2))))
## [1] "PR1 CV (Budget) L2: 2.13653233706683"
print(paste("PR2 CV (Target) L2:", sqrt(sum((beta - coef_pr_cv2)^2))))
## [1] "PR2 CV (Target) L2: 2.13123848154008"
print(paste("PR3 CV (Budget) L2:", sqrt(sum((beta - coef_pr_cv3)^2))))
## [1] "PR3 CV (Budget) L2: 1.95028924294646"

We can summarize the cross-validation results to see the optimal tuning values chosen by the algorithm.

summary(result_pr_cv1)
## Summary of Cross-Validated Parity Model
## ===================================================================
## 
## Parameterization Method: budget 
## Intercept: Included
## 
## Call:
## cv.savvyPR(x = x, y = y, method = "budget", folds = 5, model_type = "PR1", 
##     measure_type = "mse")
## 
## Residuals:
##          0%         25%         50%         75%        100% 
## -48.7354673 -10.2964301  -0.2204747  10.6115532  52.7232048 
## 
## Coefficients:
##             Estimate Std. Error t value  Pr(>|t|)   2.5 %   97.5 %  Signif.
## (Intercept) 0.7757   0.3938     1.9699   0.0490     0.0039  1.5476  *      
## X1          -1.4127  0.4593     -3.0759  0.0021     -2.3128 -0.5125 **     
## X2          2.366    0.5005     4.727    2.4950e-06 1.385   3.347   ***    
## X3          -1.7786  0.5111     -3.4801  0.0005     -2.7803 -0.7769 ***    
## X4          3.533    0.5026     7.0302   3.1358e-12 2.5481  4.518   ***    
## X5          -2.7157  0.5128     -5.296   1.3616e-07 -3.7208 -1.7107 ***    
## X6          4.5448   0.5051     8.9974   6.8876e-19 3.5548  5.5348  ***    
## X7          -3.7245  0.5089     -7.3185  4.0907e-13 -4.7219 -2.727  ***    
## X8          5.5978   0.5024     11.1415  9.5942e-28 4.6131  6.5826  ***    
## X9          -5.2052  0.5115     -10.1763 1.4707e-23 -6.2077 -4.2027 ***    
## X10         5.9252   0.5124     11.5639  1.1254e-29 4.921   6.9295  ***    
## X11         -4.5194  0.5052     -8.9451  1.0806e-18 -5.5096 -3.5291 ***    
## X12         7.4844   0.5252     14.2501  2.7928e-43 6.455   8.5138  ***    
## X13         -6.4236  0.5074     -12.6604 5.8619e-35 -7.4181 -5.4292 ***    
## X14         8.5038   0.5142     16.537   1.6420e-56 7.496   9.5117  ***    
## X15         -7.9255  0.4345     -18.2386 3.2262e-67 -8.7772 -7.0738 ***    
## ---
## Signif. codes:  0 '***' 0.001 '**' 0.01 '*' 0.05 '.' 0.1 ' ' 1
## 
## Residual standard error: 15.2088 on 1484 degrees of freedom
## Multiple R-squared: 0.8185 , Adjusted R-squared: 0.8166 
## F-statistic: 446.0718 on 15 and 1484 DF,  p-value: 0.0000e+00 
## AIC: 8181.532 , BIC: 8266.543 , Deviance: 343259.3 
## 
## Cross-Validation Summary:
## Mean Cross-Validation Error ( mse: Mean-Squared Error ): 234.5913 
## Optimal Val: 0.002051 
## Fixed Lambda: 0
summary(result_pr_cv2)
## Summary of Cross-Validated Parity Model
## ===================================================================
## 
## Parameterization Method: target 
## Intercept: Included
## 
## Call:
## cv.savvyPR(x = x, y = y, method = "target", folds = 5, model_type = "PR2", 
##     measure_type = "mse")
## 
## Residuals:
##          0%         25%         50%         75%        100% 
## -49.3945508 -10.3670298  -0.2395204  10.7127881  54.4065137 
## 
## Coefficients:
##             Estimate Std. Error t value  Pr(>|t|)   2.5 %   97.5 %  Signif.
## (Intercept) 0.764    0.3937     1.9405   0.0525     -0.0077 1.5356  .      
## X1          -1.1001  0.4592     -2.396   0.0167     -2.0001 -0.2002 *      
## X2          2.3507   0.5004     4.6976   2.8764e-06 1.3699  3.3315  ***    
## X3          -1.5982  0.511      -3.1279  0.0018     -2.5997 -0.5968 **     
## X4          3.5608   0.5024     7.087    2.1112e-12 2.576   4.5455  ***    
## X5          -2.605   0.5127     -5.0812  4.2258e-07 -3.6098 -1.6002 ***    
## X6          4.4804   0.505      8.8718   2.0229e-18 3.4906  5.4702  ***    
## X7          -3.6559  0.5088     -7.1855  1.0567e-12 -4.6531 -2.6587 ***    
## X8          5.5172   0.5023     10.9836  4.8790e-27 4.5327  6.5017  ***    
## X9          -5.1496  0.5114     -10.0701 4.0618e-23 -6.1519 -4.1474 ***    
## X10         5.8444   0.5123     11.4088  5.8468e-29 4.8404  6.8485  ***    
## X11         -4.4766  0.5051     -8.8625  2.1904e-18 -5.4666 -3.4866 ***    
## X12         7.381    0.5251     14.0566  3.1557e-42 6.3518  8.4102  ***    
## X13         -6.3708  0.5073     -12.5592 1.8691e-34 -7.365  -5.3766 ***    
## X14         8.3905   0.5141     16.3204  3.3696e-55 7.3829  9.3982  ***    
## X15         -7.7903  0.4344     -17.9316 3.0955e-65 -8.6418 -6.9388 ***    
## ---
## Signif. codes:  0 '***' 0.001 '**' 0.01 '*' 0.05 '.' 0.1 ' ' 1
## 
## Residual standard error: 15.2052 on 1484 degrees of freedom
## Multiple R-squared: 0.8186 , Adjusted R-squared: 0.8167 
## F-statistic: 446.3271 on 15 and 1484 DF,  p-value: 0.0000e+00 
## AIC: 8180.829 , BIC: 8265.841 , Deviance: 343098.6 
## 
## Cross-Validation Summary:
## Mean Cross-Validation Error ( mse: Mean-Squared Error ): 234.9548 
## Optimal Val: 0 
## Fixed Lambda: 0.7543
summary(result_pr_cv3)
## Summary of Cross-Validated Parity Model
## ===================================================================
## 
## Parameterization Method: budget 
## Intercept: Included
## 
## Call:
## cv.savvyPR(x = x, y = y, method = "budget", folds = 5, model_type = "PR3", 
##     measure_type = "mse")
## 
## Residuals:
##          0%         25%         50%         75%        100% 
## -49.1703575 -10.3073085  -0.3193037  10.8172768  53.4727869 
## 
## Coefficients:
##             Estimate Std. Error t value  Pr(>|t|)   2.5 %   97.5 %  Signif.
## (Intercept) 0.7686   0.3939     1.9513   0.0512     -0.0034 1.5405  .      
## X1          -1.4104  0.4593     -3.0704  0.0022     -2.3107 -0.5101 **     
## X2          2.2843   0.5006     4.5631   5.4569e-06 1.3032  3.2655  ***    
## X3          -1.8217  0.5112     -3.5638  0.0004     -2.8236 -0.8199 ***    
## X4          3.4573   0.5026     6.8782   8.9074e-12 2.4721  4.4424  ***    
## X5          -2.7309  0.5129     -5.3246  1.1674e-07 -3.7361 -1.7257 ***    
## X6          4.4236   0.5052     8.7558   5.4115e-18 3.4334  5.4138  ***    
## X7          -3.7275  0.509      -7.3232  3.9544e-13 -4.7252 -2.7299 ***    
## X8          5.479    0.5025     10.903   1.1107e-26 4.4941  6.4639  ***    
## X9          -5.1863  0.5116     -10.1376 2.1323e-23 -6.189  -4.1836 ***    
## X10         5.803    0.5125     11.3233  1.4394e-28 4.7986  6.8075  ***    
## X11         -4.5692  0.5053     -9.042   4.6805e-19 -5.5596 -3.5788 ***    
## X12         7.2898   0.5253     13.8772  2.9219e-41 6.2602  8.3194  ***    
## X13         -6.4111  0.5075     -12.6334 7.9892e-35 -7.4057 -5.4164 ***    
## X14         8.3162   0.5143     16.1692  2.7349e-54 7.3081  9.3242  ***    
## X15         -7.7702  0.4346     -17.8779 6.8380e-65 -8.622  -6.9183 ***    
## ---
## Signif. codes:  0 '***' 0.001 '**' 0.01 '*' 0.05 '.' 0.1 ' ' 1
## 
## Residual standard error: 15.2115 on 1484 degrees of freedom
## Multiple R-squared: 0.8184 , Adjusted R-squared: 0.8166 
## F-statistic: 445.8784 on 15 and 1484 DF,  p-value: 0.0000e+00 
## AIC: 8182.064 , BIC: 8267.075 , Deviance: 343381.1 
## 
## Cross-Validation Summary:
## Mean Cross-Validation Error ( mse: Mean-Squared Error ): 234.3193 
## Fixed Val: 0.002051 
## Optimal Lambda: 0.03728

We can also visualize the cross-validated models:

# Plot coefficients and risk contributions for PR1
plot(result_pr_cv1, plot_type = "estimated_coefficients", label = TRUE)

Coefficient and risk contribution plots for cross-validated PR1 and PR2 models, illustrating the impact of optimal tuning on model parameters.

plot(result_pr_cv1, plot_type = "risk_contributions",label = TRUE)

Coefficient and risk contribution plots for cross-validated PR1 and PR2 models, illustrating the impact of optimal tuning on model parameters.

# Plot coefficients and risk contributions for PR2
plot(result_pr_cv2, plot_type = "estimated_coefficients", label = FALSE)

Coefficient and risk contribution plots for cross-validated PR1 and PR2 models, illustrating the impact of optimal tuning on model parameters.

# Cannot plot risk-contribution for PR2 since the tuning parameter val=0 is fixed.
#plot(result_pr_cv2, plot_type = "risk_contributions", label = FALSE)

We can visualize the cross-validation error curves to see exactly where the optimal minimum was found.

# Plot the cross-validation errors for each model
plot(result_rr_cv)

Cross-validation MSE curves for Ridge and PR models. Each plot shows mean squared error against the log of the tuning parameter, with vertical dashed lines marking the optimal values.

plot(result_pr_cv1, plot_type = "cv_errors", label = TRUE)

Cross-validation MSE curves for Ridge and PR models. Each plot shows mean squared error against the log of the tuning parameter, with vertical dashed lines marking the optimal values.

plot(result_pr_cv2, plot_type = "cv_errors")

Cross-validation MSE curves for Ridge and PR models. Each plot shows mean squared error against the log of the tuning parameter, with vertical dashed lines marking the optimal values.

plot(result_pr_cv3, plot_type = "cv_errors", label = FALSE)

Cross-validation MSE curves for Ridge and PR models. Each plot shows mean squared error against the log of the tuning parameter, with vertical dashed lines marking the optimal values.

Finally, we can plot the Coefficient Paths to see how the coefficients shrink or change as the tuning parameter varies. Notice that we use xvar = “val” to plot against the unified tuning parameter.

# Plot the coefficient paths for cross-validation models
plot(result_pr_cv1, plot_type = "cv_coefficients", xvar = "val", max_vars_per_plot = 10, label = TRUE)

Series of coefficient path plots showing how individual variable estimates evolve as the regularization parameter (lambda) or parity parameter (val) changes.Series of coefficient path plots showing how individual variable estimates evolve as the regularization parameter (lambda) or parity parameter (val) changes.

# Show what happens when max_vars_per_plot exceeds the limit (will trigger a warning and reset to 10)
plot(result_pr_cv2, plot_type = "cv_coefficients", xvar = "norm", max_vars_per_plot = 12, label = FALSE)
## Warning in plotCVCoef(result_list = x, label = label, xvar = xvar,
## max_vars_per_plot = max_vars_per_plot, : max_vars_per_plot cannot exceed 10.
## Setting max_vars_per_plot to 10.

Series of coefficient path plots showing how individual variable estimates evolve as the regularization parameter (lambda) or parity parameter (val) changes.Series of coefficient path plots showing how individual variable estimates evolve as the regularization parameter (lambda) or parity parameter (val) changes.

# PR3 uses dual-optimization, so we can plot against lambda as well
plot(result_pr_cv3, plot_type = "cv_coefficients", xvar = "norm", max_vars_per_plot = 10, label = TRUE)

Series of coefficient path plots showing how individual variable estimates evolve as the regularization parameter (lambda) or parity parameter (val) changes.Series of coefficient path plots showing how individual variable estimates evolve as the regularization parameter (lambda) or parity parameter (val) changes.

plot(result_pr_cv3, plot_type = "cv_coefficients", xvar = "lambda", max_vars_per_plot = 10, label = TRUE)

Series of coefficient path plots showing how individual variable estimates evolve as the regularization parameter (lambda) or parity parameter (val) changes.Series of coefficient path plots showing how individual variable estimates evolve as the regularization parameter (lambda) or parity parameter (val) changes.

plot(result_pr_cv3, plot_type = "cv_coefficients", xvar = "dev", max_vars_per_plot = 10, label = TRUE)

Series of coefficient path plots showing how individual variable estimates evolve as the regularization parameter (lambda) or parity parameter (val) changes.Series of coefficient path plots showing how individual variable estimates evolve as the regularization parameter (lambda) or parity parameter (val) changes.

Conclusion

This vignette has provided an overview of the main functionalities of the savvyPR package, covering both the Budget-based and Target-based risk parity constraints. For more details, refer to the function documentation.