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Package for optimising and evaluating Likelihood Ratio (LR) systems.

Project description

LIR Python Likelihood Ratio Toolkit

Toolkit for developing, optimising and evaluating Likelihood Ratio (LR) systems. This allows benchmarking of LR systems on different datasets, investigating impact of different sampling schemes or techniques, and doing case-based validation and computation of case LRs.

LIR was first released in 2020 and redesigned from scratch in 2025, replacing the previous repository.

References

  • LiR documentation: comprehensive overview, terminology and more on developing LR systems
  • Practitioner Guide (branch | paper | notebook): case study using LiR to develop an LR system using LiR
  • Quick Start: selecting / designing the proper LR system based on your data

Installation

LIR is compatible with Python 3.12 and later. The easiest way to install LIR is to use pip:

pip install lir

Usage

This repository offers both a Python API and a command-line interface.

Command-line interface

Evaluate an LR system using the command-line interface as follows:

  1. define your data, LR system and experiments in a YAML file;
  2. run lir <yaml file>.

The examples folder may be a good starting point for setting up an experiment.

The elements of the experiment configuration YAML are looked up in the registry. The following lists all available elements in the registry.

lir --list-registry

Datasets

There are currently a number of datasets implemented for this project:

Simulations

It is straightforward to simulate data for experimentation. Currently two very simple simulations synthesized_normal_binary and synthesized_normal_multiclass are available, with sources and measurements drawn from normal distributions.

Contributing / Development

Contributions are highly welcomed. If you'd like to contribute to the LiR package, please follow the steps as described in the CONTRIBUTING.md file.

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