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finlabR

Portfolio analytics and simulation toolkit in R. Includes: - Mean-variance optimization (efficient frontier, max Sharpe, min variance) - CVaR minimization - Risk parity (equal risk contribution) - Regime clustering (k-means) - Asset correlation and clustering (PCA, EM, k-means) - VaR/CVaR analysis - Monte Carlo price simulation - Option pricing (Monte Carlo, binomial tree, American) - Limit order book simulation and features

Quick start

library(finlabR)

# load example dataset
prices <- get_example_prices()
rets <- calc_returns(prices[, -1])

# returns matrix (rows = time, cols = assets)
min_var <- mvo_min_variance(rets)
frontier <- mvo_efficient_frontier(rets, n = 30)
max_sharpe <- mvo_max_sharpe(rets, rf = 0.02)

cvar <- cvar_minimize(rets, alpha = 0.95)
rp <- risk_parity_weights(stats::cov(rets))

varcvar <- var_cvar(rets, alpha = 0.95)

# limit order book demo
book <- simulate_orderbook(n_steps = 200, p0 = 100)
lob_features <- extract_features(book)
# run source('runme.R') for Shiny App

Full reference

See REFERENCE.md in the repository for the full list of functions and usage examples. #file <- system.file(“extdata/runme.R”, package = “finlabR”) #source(file) ## Run the Shiny dashboard

shiny::runApp(system.file("shiny/finlabR-dashboard", package = "finlabR"))

These binaries (installable software) and packages are in development.
They may not be fully stable and should be used with caution. We make no claims about them.