Skip to content

amazon-science/causal-validation

This commit does not belong to any branch on this repository, and may belong to a fork outside of the repository.

Folders and files

NameName
Last commit message
Last commit date

Latest commit

d473a72 · Sep 19, 2024

History

29 Commits
Sep 6, 2024
Sep 16, 2024
Sep 19, 2024
Sep 10, 2024
Sep 18, 2024
Sep 6, 2024
Sep 10, 2024
Aug 22, 2024
Aug 22, 2024
Aug 22, 2024
Aug 22, 2024
Sep 13, 2024
Sep 9, 2024
Sep 10, 2024

Repository files navigation

Causal Validation

This package provides functionality to define your own causal data generation process and then simulate data from the process. Within the package, there is functionality to include complex components to your process, such as periodic and temporal trends, and all of these operations are fully composable with one another.

A short example is given below

from causal_validation import Config, simulate
from causal_validation.effects import StaticEffect
from causal_validation.plotters import plot
from causal_validation.transforms import Trend, Periodic
from causal_validation.transforms.parameter import UnitVaryingParameter
from scipy.stats import norm

cfg = Config(
    n_control_units=10,
    n_pre_intervention_timepoints=60,
    n_post_intervention_timepoints=30,
)

# Simulate the base observation
base_data = simulate(cfg)

# Apply a linear trend with unit-varying intercept
intercept = UnitVaryingParameter(sampling_dist = norm(0, 1))
trend_component = Trend(degree=1, coefficient=0.1, intercept=intercept)
trended_data = trend_component(base_data)

# Simulate a 5% lift in the treated unit's post-intervention data
effect = StaticEffect(0.05)
inflated_data = effect(trended_data)

# Plot your data
plot(inflated_data)

Examples

To supplement the above example, we have two more detailed notebooks which exhaustively present and explain the functionalty in this package, along with how the generated data may be integrated with AZCausal.

  1. Data Synthesis: We here show the full range of available functions for data generation.
  2. Placebo testing: Validate your model(s) using placebo tests.
  3. AZCausal notebook: We here show how the generated data may be used within an AZCausal model.

Installation

In this section we guide the user through the installation of this package. We distinguish here between users of the package who seek to define their own data generating processes, and developers who wish to extend the existing functionality of the package.

Prerequisites

  • Python 3.10 or higher
  • Hatch (optional, but recommended for developers)

To install the latest stable version, run pip install causal-validation in your terminal.

For Users

  1. It's strongly recommended to use a virtual environment. Create and activate one using your preferred method before proceeding with the installation.
  2. Clone the package git clone [email protected]:amazon-science/causal-validation.git
  3. Enter the package's root directory cd causal-validation
  4. Install the package pip install -e .

For Developers

  1. Follow steps 1-3 from For Users
  2. Create a hatch environment hatch env create
  3. Open a hatch shell hatch shell
  4. Validate your installation by running hatch run dev:test