Skip to main content

Of the Actuary, By the Actuary, For the Actuary: A ZNSTARS Python package for actuarial risk modeling and simulation

Project description

ActRisk

PyPI version Python 3.8+ License: MIT Code style: black

A Python package for actuarial risk modeling and simulation.

Features

  • Risk Modeling: Advanced tools for actuarial risk analysis
  • Monte Carlo Simulations: High-performance simulation capabilities
  • Configuration Management: Flexible YAML-based configuration system
  • Statistical Analysis: Comprehensive statistical tools for risk assessment

Installation

From PyPI (recommended)

pip install actrisk

From Source

git clone https://github.com/jzhng105/actrisk.git
cd actrisk
pip install -e .

Development Installation

git clone https://github.com/jzhng105/actrisk.git
cd actrisk
pip install -e .[dev]

Quick Start

from actrisk import load_config, DistributionFitter
from actstats import actuarial as act

# Load configuration
config = load_config()

sev_data = act.lognormal(0.5,0.2).rvs(size=10000)

#############################
###### Fit Severity #########
#############################
# User specifies distributions and metrics 
distribution_names = config.distributions['severity']
metrics = config.metrics

sev_fitter = actfitter(sev_data, distributions=distribution_names, metrics=metrics)
sev_fitter.fit()
sev_fitter.best_fits
sev_fitter.selected_fit

Documentation

Features in Detail

Configuration Management

# Initialize fitter with config file
config = load_config()

Fit Distributions

# ---------------------------------------------
# Import required modules
# ---------------------------------------------
from actrisk import load_config, DistributionFitter
from actstats import actuarial as act

# ---------------------------------------------
# 1. Generate Example Data
# ---------------------------------------------
# Severity data: Using lognormal distribution with mu=0.5 and sigma=0.2
sev_data = act.lognormal(0.5, 0.2).rvs(size=10000)

# Frequency data: Using Poisson distribution with λ=10
freq_data = act.poisson.rvs(10, 1000)

# ---------------------------------------------
# 2. Load Configuration
# ---------------------------------------------
# This loads distribution lists and metrics from the actrisk config file
config = load_config()

# ---------------------------------------------
# 3. Fit Severity Distributions
# ---------------------------------------------
# Get severity distributions and metrics from config
distribution_names = config.distributions['severity']
metrics = config.metrics

# Initialize severity fitter
sev_fitter = DistributionFitter(sev_data, distributions=distribution_names, metrics=metrics)

# Perform fitting
sev_fitter.fit()

# View best fits and selected distribution
print("Best fits:", sev_fitter.best_fits)
print("Selected fit:", sev_fitter.selected_fit)
print("Selected distribution object:", sev_fitter.get_selected_dist())

# Manually selecting a distribution (example: 'uniform')
sev_fitter.select_distribution('uniform')
selected_fit = sev_fitter.selected_fit

# Print details of the selected fit
print("Selected fitting distribution:", selected_fit['name'])
print("Parameters:", selected_fit['params'])
print("AIC:", selected_fit['aic'])
print("BIC:", selected_fit['bic'])

# Calculate statistics for severity
sev_fitter.calculate_statistics()

# Plot predictions
sev_fitter.plot_predictions()

# Print summary report
sev_fitter.summary()

# ---------------------------------------------
# 4. Generate Samples from Severity Fit
# ---------------------------------------------
samples = sev_fitter.sample(size=10)
print("Generated samples:", samples)

# Generate mixed samples (e.g., weighted combinations)
samples = sev_fitter.sample_mixed(0.1, 0.1, size=10)
print("Generated samples:", samples)

# ---------------------------------------------
# 5. Fit Frequency Distributions
# ---------------------------------------------
distribution_names = config.distributions['frequency']
metrics = config.metrics

# Initialize frequency fitter
freq_fitter = DistributionFitter(freq_data, distributions=distribution_names, metrics=metrics)

# Show available frequency distributions
print("Frequency distributions:", freq_fitter.distributions)

# Perform fitting
freq_fitter.fit()

# View best fits and summary
print("Frequency best fits:", freq_fitter.best_fits)
print("Frequency selected fit:", freq_fitter.selected_fit)
freq_fitter.summary()

Stochastic Simulation

#####################################
###### Stochastic Simulation ########
#####################################
# ---------------------------------------------
# 1. Import Required Modules
# ---------------------------------------------
from actrisk import StochasticSimulator
from actstats import actuarial as act

# ---------------------------------------------
# 2. Define Frequency and Severity Distributions
# ---------------------------------------------
# Frequency distribution: Poisson with λ=10
freq_dist = 'poisson'
freq_params = (10,)

# Severity distribution: Lognormal with mu=10, sigma=0.5
sev_dist = 'lognormal'
sev_params = (10, 0.5)

# Preview quantile (e.g., 80th percentile of Poisson)
quantile_80 = act.poisson.ppf(0.8, 10)
print("80th percentile of Poisson(10):", quantile_80)

# ---------------------------------------------
# 3. Initialize Simulator with Different Levels of Complexity
# ---------------------------------------------

# With copula
simulator = StochasticSimulator(freq_dist, freq_params, sev_dist, sev_params, 10000, True, 1234, 0.6, 'frank', 0.6)

# with linear correlation
simulator = StochasticSimulator(freq_dist, freq_params, sev_dist, sev_params, 10000, True, 1234, 0.6)

# Without copula or linear correlation
simulator = StochasticSimulator(freq_dist, freq_params, sev_dist, sev_params, 10000, True, 1234)

# ---------------------------------------------
# 4. Generate Simulated Aggregate Losses
# ---------------------------------------------
simulations = simulator.gen_agg_simulations()

# Access full simulation DataFrame
print("All simulations preview:")
print(simulator.all_simulations.head())

# ---------------------------------------------
# 5. Analyze Simulation Results
# ---------------------------------------------

# Calculate aggregate percentile (e.g., 99.2%)
percentile_99_2 = simulator.calc_agg_percentile(99.2)
print("99.2% Aggregate Loss Percentile:", percentile_99_2)

# Plot loss distribution histogram
simulator.plot_distribution()

# Show simulation mean
print("Mean simulated loss:", simulator.results.mean())

# If copula is used, plot frequency-severity correlation structure
simulator.plot_correlated_variables()

# Summary statistics and shape diagnostics
simulator.analyze_results()

# ---------------------------------------------
# 6. Apply Deductibles and Limits
# ---------------------------------------------
# Apply per occurrence deductible of 1,000
# Occurrence limit of 10,000
# Annual aggregate deductible of 100,000
# Annual aggregate limit of 300,000
gross_loss = simulator.apply_deductible_and_limit(1000, 10000, 100000, 300000)


# Assign processed loss to expected structure for reporting
gross_loss['amount'] = gross_loss['gross_loss']

# Re-analyze results based on capped/layered gross loss
simulator.analyze_results(all_simulations=gross_loss)

# ---------------------------------------------
# 7. Export Simulated Data to CSV
# ---------------------------------------------
simulator.all_simulations

Correlated Mutivariate Distribution Simulation

Sample correlation matrix csv file

Correlation Matrix, LoB1, LoB2, LoB3, LoB4, LoB5
LoB1, 1, 0.5, 0.5, 0.3, 0.2
LoB2, 0.5, 1, 0.5, 0.7, 0.3 
LoB3, 0.5, 0.5, 1, 0.2, 0.5
LoB4, 0.3, 0.7, 0.2, 1, 0.3
LoB5, 0.2, 0.3, 0.5, 0.3, 1

Sample multi-line distribution json file

[
    {
        "index": 1,
        "dist_name": "LoB1",
        "dist_type": "gamma",
        "dist_param": [2, 1]
    },
    {
        "index": 2,
        "dist_name": "LoB2",
        "dist_type": "lognormal",
        "dist_param": [2, 1]
    },
    {
        "index": 3,
        "dist_name": "LoB3",
        "dist_type": "gamma",
        "dist_param": [3, 1]
    },
    {
        "index": 4,
        "dist_name": "LoB4",
        "dist_type": "lognormal",
        "dist_param": [3, 2]
    },
    {
        "index": 5,
        "dist_name": "LoB5",
        "dist_type": "gamma",
        "dist_param": [4, 2]
    }
]
import pandas as pd
from actrisk import StochasticSimulator

##### Generate correlated mutivariate distribution
corr_matrix_file = 'examples/correlated_sim/corr_matrix.csv'
dist_list_file = 'examples/correlated_sim/dist_list.json'
simulator = StochasticSimulator("normal", [1,0], "normal",[1,0], 100000, True, 1234) # placeholder parameters for the simulator
simulator.gen_multivariate_corr_simulations(corr_matrix_file, dist_list_file, True)
simulator._all_simulations_data
data = pd.DataFrame(simulator._all_simulations_data)
data_t = data.transpose()
# Compute correlation matrix
correlation_matrix = data_t.corr()
print(correlation_matrix)

Synthetic Claim Simulation

##########################################
###### Synthetic Claim Simulation ########
##########################################
import pandas as pd
import numpy as np
from actrisk import ClaimSimulator

# Simulate policy characteristics
policies = pd.DataFrame({
    'policy_id': range(1, 101),
    'freq_dist': 'poisson',
    'freq_params': list(zip(np.random.uniform(0.6, 0.8, 100).round(2),)), 
    'sev_dist': 'lognormal',
    'sev_params': list(zip(np.random.uniform(0.8, 1.2, 100).round(2), np.random.uniform(0.3, 0.7, 100).round(2))),
    'start_date': pd.Timestamp('2023-01-01'),
    'end_date': pd.Timestamp('2023-12-31'),
})

# Instantiate the ClaimSimulator with input policies and np random seed 42
claim_sim = ClaimSimulator(policies, 42)

# Access the processed policy DataFrame
claim_sim.policies

# Run the claim simulation (frequency × severity) for all policy groups
claim_sim.simulate_claims()

# Access the resulting simulated claim records
claim_sim.claim_data

# Set parameters for the non-homogeneous Poisson process (NHPP) for date simulation
lambda0 = 10     # Baseline intensity
alpha = 0.5      # Seasonality amplitude
phase = 0        # Phase shift of the seasonality
T = 1            # Duration of the exposure in years

# Simulate claim occurrence dates using a seasonal NHPP
claim_sim.simulate_dates_nhpp(lambda0, alpha, phase, T)

# Shift claim dates so that the simulation aligns with calendar year starting from 2023
start_year = 2023
claim_sim.apply_shifted_dates(start_year)

# Define base loss development factors (LDFs) by development month
base_LDFs = {
    0: 2,     # Initial LDF at 0 months
    3: 1.5,   # LDF at 3 months
    6: 1.2,
    9: 1.1,
    12: 1.05,
    15: 1.02,
    18: 1.00  # Ultimate LDF at 18 months
}

volatility = 0.1      # Standard deviation for stochastic fluctuation in LDFs
tail_factor = 1.0     # No additional tail development (fully developed at 18 months)

# Simulate the claim development triangles based on LDFs and apply stochastic volatility
claim_sim.simulate_claim_development(base_LDFs, volatility, tail_factor)

# Access the simulated claim development triangle or long-format development data
claim_sim.claim_development

# Access updated policies (could include mappings to simulated claims)
claim_sim.policies

# Save the simulated claim development data to a file (replace with actual path)
claim_sim.save_claim_development('sample_file_path')

Development

Setting up Development Environment

# Clone the repository
git clone https://github.com/jzhng105/actrisk.git
cd actrisk

# Create virtual environment
python -m venv venv
source venv/bin/activate  # On Windows: venv\Scripts\activate

Contributing

We welcome contributions! Please see our Contributing Guide for details.

Development Workflow

  1. Fork the repository
  2. Create a feature branch (git checkout -b feature/amazing-feature)
  3. Make your changes
  4. Add tests for new functionality
  5. Ensure all tests pass (pytest)
  6. Commit your changes (git commit -m 'Add amazing feature')
  7. Push to the branch (git push origin feature/amazing-feature)
  8. Open a Pull Request

License

This project is licensed under the MIT License - see the LICENSE file for details.

Citation

If you use ActRisk in your research, please cite:

@software{actrisk2025,
  title={ActRisk: A Python package for actuarial risk modeling and simulation},
  author={Juntao Zhang},
  year={2025},
  url={https://github.com/jzhng105/actrisk}
}

Support

Changelog

See CHANGELOG.md for a list of changes and version history.

Project details


Download files

Download the file for your platform. If you're not sure which to choose, learn more about installing packages.

Source Distribution

actrisk-0.1.0.6.tar.gz (23.1 kB view details)

Uploaded Source

Built Distribution

If you're not sure about the file name format, learn more about wheel file names.

actrisk-0.1.0.6-py3-none-any.whl (21.0 kB view details)

Uploaded Python 3

File details

Details for the file actrisk-0.1.0.6.tar.gz.

File metadata

  • Download URL: actrisk-0.1.0.6.tar.gz
  • Upload date:
  • Size: 23.1 kB
  • Tags: Source
  • Uploaded using Trusted Publishing? No
  • Uploaded via: twine/6.1.0 CPython/3.10.11

File hashes

Hashes for actrisk-0.1.0.6.tar.gz
Algorithm Hash digest
SHA256 1323919b37026b6a03d36d0192aadc056bc8e971432f3672e82c7ec6ec8821aa
MD5 9af82c26bf52b86bf638fb07e4906efb
BLAKE2b-256 138c2e71c3eb4313ee8d4a7baa624767cff5d357bb6b14e2fad6f264367d24ac

See more details on using hashes here.

File details

Details for the file actrisk-0.1.0.6-py3-none-any.whl.

File metadata

  • Download URL: actrisk-0.1.0.6-py3-none-any.whl
  • Upload date:
  • Size: 21.0 kB
  • Tags: Python 3
  • Uploaded using Trusted Publishing? No
  • Uploaded via: twine/6.1.0 CPython/3.10.11

File hashes

Hashes for actrisk-0.1.0.6-py3-none-any.whl
Algorithm Hash digest
SHA256 2a86e6c21ce55bb5c52c36d58425e26feda7eacccb2a3b40506a3308849b47cd
MD5 c552172d24fda54e985734b9f7a92395
BLAKE2b-256 d4ae4bf4bcfbfd3f5a94e71d361a788f17f1eff3e1b1c67c587431137d5819c5

See more details on using hashes here.

Supported by

AWS Cloud computing and Security Sponsor Datadog Monitoring Depot Continuous Integration Fastly CDN Google Download Analytics Pingdom Monitoring Sentry Error logging StatusPage Status page