Tools for creating and working with aggregate probability distributions.
Project description
aggregate: a powerful actuarial modeling library
Purpose
aggregate builds approximations to compound (aggregate) probability distributions quickly and accurately. It can be used to solve insurance, risk management, and actuarial problems using realistic models that reflect underlying frequency and severity. It delivers the speed and accuracy of parametric distributions to situations that usually require simulation, making it as easy to work with an aggregate (compound) probability distribution as the lognormal. aggregate includes an expressive language called DecL to describe aggregate distributions and is implemented in Python under an open source BSD-license.
White Paper (new July 2023)
The White Paper describes the purpose, implementation, and use of the class aggregate.Aggregate that handles the creation and manipulation of compound frequency-severity distributions.
Documentation
Where to get it
Installation
To install into a new Python>=3.10 virtual environment:
python -m venv path/to/your/venv`` cd path/to/your/venv
followed by:
\path\to\env\Scripts\activate
on Windows, or:
source /path/to/env/bin/activate
on Linux/Unix or MacOS. Finally, install the package:
pip install aggregate[dev]
All the code examples have been tested in such a virtual environment and the documentation will build.
Version History
0.22.0
Created version 0.22.0, convolation
0.21.4
Updated requirement using pipreqs recommendations
Color graphics in documentation
Added expected_shift_reduce = 16 # Set this to the number of expected shift/reduce conflicts to parser.py to avoid warnings. The conflicts are resolved in the correct way for the grammar to work.
Issues: there is a difference between dfreq[1] and 1 claim ... fixed, e.g., when using spliced severities. These should not occur.
0.21.3
Risk progression, defaults to linear allocation.
Added g_insurance_statistics to extensions to plot insurance statistics from a distortion g.
Added g_risk_appetite to extensions to plot risk appetite from a distortion g (value, loss ratio, return on capital, VaR and TVaR weights).
Corrected Wang distortion derivative.
Vectorized Distortion.g_prime calculation for proportional hazard
Added tvar_weights function to spectral to compute the TVaR weights of a distortion. (Work in progress)
Updated dependencies in pyproject.toml file.
0.21.2
Misc documentation updates.
Experimental magic functions, allowing, eg. %agg [spec] to create an aggregate object (one-liner).
0.21.1 yanked from pypi due to error in pyproject.toml.
0.21.0
Moved sly into the project for better control. sly is a Python implementation of lex and yacc parsing tools. It is written by Dave Beazley. Per the sly repo on github:
The SLY project is no longer making package-installable releases. It’s fully functional, but if choose to use it, you should vendor the code into your application. SLY has zero-dependencies. Although I am semi-retiring the project, I will respond to bug reports and still may decide to make future changes to it depending on my mood. I’d like to thank everyone who has contributed to it over the years. –Dave
Experimenting with a line/cell DecL magic interpreter in Jupyter Lab to obviate the need for build.
0.20.2
risk progression logic adjusted to exclude values with zero probability; graphs updated to use step drawstyle.
0.20.1
Bug fix in parser interpretation of arrays with step size
Added figures for AAS paper to extensions.ft and extensions.figures
Validation “not unreasonable” flag set to 0
Added aggregate_white_paper.pdf
Colors in risk_progression
0.20.0
sev_attachment: changed default to None; in that case gross losses equal ground-up losses, with no adjustment. But if layer is 10 xs 0 then losses become conditional on X > 0. That results in a different behaviour, e.g., when using dsev[0:3]. Ripple through effect in Aggregate (change default), Severity (change default, and change moment calculation; need to track the “attachment” of zero and the fact that it came from None, to track Pr attaching)
dsev: check if any elements are < 0 and set to zero before computing moments in dhistogram
same for dfreq; implemented in validate_discrete_distribution in distributions module
Default recommend_p=0.99999 set in constsants module.
interpreter_test_suite renamed to run_test_suite and includes test to count and report if there are errors.
Reason codes for failing validation; Aggregate.qt becomes Aggregte.explain_validation
0.19.0
Fixed reinsurance description formatting
Improved splice parsing to allow explicit entry of lb and ub; needed to model mixtures of mixtures (Albrecher et al. 2017)
0.18.0 (major update)
Added ability to specify occ reinsurance after a built in agg; this allows you to alter a gross aggregate more easily.
Underwriter.safe_lookup uses deepcopy rather than copy to avoid problems array elements.
Clean up and improved Parser and grammar
atom -> term is much cleaner (removed power, factor; now managed with prcedence and assoicativity)
EXP and EXPONENT are right associative, division is not associative so 1/2/3 gives an error.
Still SR conflict from dfreq [ ] [ ] because it could be the probabilities clause or the start of a vectorized limit clause
Remaining SR conflicts are from NUMBER, which is used in many places. This is a problem with the grammar, not the parser.
Added more tests to the parser test suite
Severity weights clause must come after locations (more natural)
Added ability for unconditional dsev.
Support for splicing (see below)
Cleanup of Aggregate class, concurrent with creating a cheat sheet
many documentation updates
plot_old deleted
deleted delbaen_haezendonck_density; not used; not doing anything that isn’t easy by hand. Includes dh_sev_density and dh_agg_density.
deleted fit as alternative name for approximate
deleted unused fields
Cleanup of Portfolio class, concurrent with creating a cheat sheet
deleted fit as alternative name for approximate
deleted q_old_0_12_0 (old quantile), q_temp, tvar_old_0_12_0
deleted plot_old, last_a, _(inverse)_tail_var(_2)
deleted def get_stat(self, line='total', stat='EmpMean'): return self.audit_df.loc[line, stat]
deleted resample, was an alias for sample
Management of knowledge in Underwriter changed to support loading a database after creation. Databases not loaded until needed - alas that includes printing the object. TODO: Consider a change?
Frequency mfg renamed to freq_pgf to match other Frequency class methods and to accuractely describe the function as a probability generating function rather than a moment generating function.
Added introspect function to Utilities. Used to create a cheat sheet for Aggregate.
Added cheat sheets, completed for Aggregate
Severity can now be conditional on being in a layer (see splice); managed adjustments to underlying frozen rv using decorators. No overhead if not used.
Added “splice” option for Severity (see Albrecher et. al ch XX) and Aggregate, new arguments sev_lb and sev_ub, each lists.
Underwriter.build defaults update argument to None, which uses the object default.
pretty printing: now returns a value, no tacit mode; added _html version to run through pygments, that looks good in Jupyter Lab.
0.17.1
Adjusted pyproject.toml
pygments lexer tweaks
Simplified grammar: % and inf now handled as part of resolving NUMBER; still 16 = 5 * 3 + 1 SR conflicts
Reading databases on demand in Underwriter, resulting in faster object creation
Creating and testing exsitance of subdirectories in Undewriter on demand using properties
Creating directories moved into Extensions __init__.py
lexer and parser as properties for Underwriter object creation
Default recommend_p changed from 0.999 to 0.99999.
recommend_bucket now uses p=max(p, 1-1e-8) if severity is unlimited.
0.17.0 (July 2023)
more added as a proper method
Fixed debugfile in parser.py which stops installation if not None (need to enure the directory exists)
Fixed build and MANIFEST to remove build warning
parser: semicolon no longer mapped to newline; it is now used to provide hints notes
recommend_bucket uses p=max(p, 1-1e-8) if limit=inf. Default increased from 0.999 to 0.99999 based on examples; works well for limited severity but not well for unlimited severity.
Implemented calculation hints in note strings. Format is k=v; pairs; k bs, log2, padding, recommend_p, normalize are recognized. If present they are used if no arguments are passed explicitly to build.
Added interpreter_test_suite() to Underwriter to run the test suite
Added test_suite_file to Underwriter to return Path to test_suite.agg` file
Layers, attachments, and the reinsurance tower can now be ranges, [s:f:j] syntax
0.16.1 (July 2023)
IDs can now include dashes: Line-A is a legitimate date
Include templates and test-cases.agg file in the distribution
Fixed mixed severity / limit profile interaction. Mixtures now work with exposure defined by losses and premium (as opposed to just claim count), correctly account for excess layers (which requires re-weighting the mixture components). Involves fixing the ground up severity and using it to adjust weights first. Then, by layer, figure the severity and convert exposure to claim count if necessary. Cases where there is no loss in the layer (high layer from low mean / low vol componet) replace by zero. Use logging level 20 for more details.
Added more function to Portfolio, Aggregate and Underwriter classes. Given a regex it returns all methods and attributes matching. It tries to call a method with no arguments and reports the answer. more is defined in utilities and can be applied to any object.
Moved work of qt from utilities into Aggregate` (where it belongs). Retained qt for backwards compatibility.
Parser: power <- atom ** factor to power <- factor ** factor to allow (1/2)**(3/4)
random` module renamed `random_agg to avoid conflict with Python random
Implemented exact moments for exponential (special case of gamma) because MED is a common distribution and computing analytic moments is very time consuming for large mixtures.
Added ZM and ZT examples to test_cases.agg; adjusted Portfolio examples to be on one line so they run through interpreter_file tests.
0.16.0 (June 2023)
Implemented ZM and ZT distributions using decorators!
Added panjer_ab to Frequency, reports a and b values, p_k = (a + b / k) p_{k-1}. These values can be tested by computing implied a and b values from r_k = k p_k / p_{k-1} = ak + b; diff r_k = a and b is an easy computation.
Added freq_dist(log2) option to Freq to return the frequency distribution stand-alone
Added negbin frequency where freq_a equals the variance multiplier
0.15.0 (June 2023)
Added pygments lexer for decl (called agg, agregate, dec, or decl)
Added to the documentation
using pygments style in pprint_ex html mode
removed old setup scripts and files and stack.md
0.14.1 (June 2023)
Added scripts.py for entry points
Updated .readthedocs.yaml to build from toml not requirements.txt
Fixes to documentation
Portfolio.tvar_threshold updated to use scipy.optimize.bisect
Added kaplan_meier to utilities to compute product limit estimator survival function from censored data. This applies to a loss listing with open (censored) and closed claims.
doc to docs []
Enhanced make_var_tvar for cases where all probabilities are equal, using linspace rather than cumsum.
0.13.0 (June 4, 2023)
Updated Portfolio.price to implement allocation='linear' and allow a dictionary of distortions
ordered='strict' default for Portfolio.calibrate_distortions
Pentagon can return a namedtuple and solve does not return a dataframe (it has no return value)
Added random.py module to hold random state. Incorporated into
Utilities: Iman Conover (ic_noise permuation) and rearrangement algorithms
Portfolio sample
Aggregate sample
Spectral bagged_distortion
Portfolio added n_units property
Portfolio simplified __repr__
Added block_iman_conover to utilitiles. Note tester code in the documentation. Very Nice! 😁😁😁
New VaR, quantile and TVaR functions: 1000x speedup and more accurate. Builder function in utilities.
pyproject.toml project specification, updated build process, now creates whl file rather than egg file.
0.12.0 (May 2023)
add_exa_sample becomes method of Portfolio
Added create_from_sample method to Portfolio
Added bodoff method to compute layer capital allocation to Portfolio
Improved validation error reporting
extensions.samples module deleted
Added spectral.approx_ccoc to create a ct approx to the CCoC distortion
qdp moved to utilities (describe plus some quantiles)
Added Pentagon class in extensions
Added example use of the Pollaczeck-Khinchine formula, reproducing examples from the actuar` risk vignette to Ch 5 of the documentation.
Earlier versions
See github commit notes.
Version numbers follow semantic versioning, MAJOR.MINOR.PATCH:
MAJOR version changes with incompatible API changes.
MINOR version changes with added functionality in a backwards compatible manner.
PATCH version changes with backwards compatible bug fixes.
Issues and Todo
Treatment of zero lb is not consistent with attachment equals zero.
Flag attempts to use fixed frequency with non-integer expected value.
Flag attempts to use mixing with inconsistent frequency distribution.
Getting started
To get started, import build. It provides easy access to all functionality.
Here is a model of the sum of three dice rolls. The DataFrame describe compares exact mean, CV and skewness with the aggregate computation for the frequency, severity, and aggregate components. Common statistical functions like the cdf and quantile function are built-in. The whole probability distribution is available in a.density_df.
from aggregate import build, qd a = build('agg Dice dfreq [3] dsev [1:6]') qd(a)
>>> E[X] Est E[X] Err E[X] CV(X) Est CV(X) Err CV(X) Skew(X) Est Skew(X) >>> X >>> Freq 3 0 >>> Sev 3.5 3.5 0 0.48795 0.48795 -3.3307e-16 0 2.8529e-15 >>> Agg 10.5 10.5 -3.3307e-16 0.28172 0.28172 -8.6597e-15 0 -1.5813e-13
print(f'\nProbability sum < 12 = {a.cdf(12):.3f}\nMedian = {a.q(0.5):.0f}')
>>> Probability sum < 12 = 0.741 >>> Median = 10
aggregate can use any scipy.stats continuous random variable as a severity, and supports all common frequency distributions. Here is a compound-Poisson with lognormal severity, mean 50 and cv 2.
a = build('agg Example 10 claims sev lognorm 50 cv 2 poisson') qd(a)
>>> E[X] Est E[X] Err E[X] CV(X) Est CV(X) Err CV(X) Skew(X) Est Skew(X) >>> X >>> Freq 10 0.31623 0.31623 >>> Sev 50 49.888 -0.0022464 2 1.9314 -0.034314 14 9.1099 >>> Agg 500 498.27 -0.0034695 0.70711 0.68235 -0.035007 3.5355 2.2421
# cdf and quantiles print(f'Pr(X<=500)={a.cdf(500):.3f}\n0.99 quantile={a.q(0.99)}')
>>> Pr(X<=500)=0.611 >>> 0.99 quantile=1727.125
See the documentation for more examples.
Dependencies
See requirements.txt.
Install from source
git clone --no-single-branch --depth 50 https://github.com/mynl/aggregate.git . git checkout --force origin/master git clean -d -f -f python -mvirtualenv ./venv # ./venv/Scripts on Windows ./venv/bin/python -m pip install --exists-action=w --no-cache-dir -r requirements.txt # to create help files ./venv/bin/python -m pip install --upgrade --no-cache-dir pip setuptools<58.3.0 ./venv/bin/python -m pip install --upgrade --no-cache-dir pillow mock==1.0.1 alabaster>=0.7,<0.8,!=0.7.5 commonmark==0.9.1 recommonmark==0.5.0 sphinx<2 sphinx-rtd-theme<0.5 readthedocs-sphinx-ext<2.3 jinja2<3.1.0
Note: options from readthedocs.org script.
License
BSD 3 licence.
Help and contributions
Limited help available. Email me at help@aggregate.capital.
All contributions, bug reports, bug fixes, documentation improvements, enhancements and ideas are welcome. Create a pull request on github and/or email me.
Social media: https://www.reddit.com/r/AggregateDistribution/.
Project details
Release history Release notifications | RSS feed
Download files
Download the file for your platform. If you're not sure which to choose, learn more about installing packages.
Source Distribution
Built Distribution
Hashes for aggregate-0.22.0-py3-none-any.whl
Algorithm | Hash digest | |
---|---|---|
SHA256 | 5964437b36affed413dd52f56704e2ebd9b0659e86e3e196a694d6d3947ec20f |
|
MD5 | af329b960ab5eb7cca816d91d63674bc |
|
BLAKE2b-256 | 3988623fba749174024cf17397ba047d0eed924b0d4002f14e013d204fa0e98d |