Skip to main content

Implementations of common offline policy evaluation methods.

Project description

Offline policy evaluation

PyPI version

Implementations and examples of common offline policy evaluation methods in Python. For more information on offline policy evaluation see this tutorial.

Installation

pip install offline-evaluation

Usage

from ope.methods import doubly_robust

Get some historical logs generated by a previous policy:

df = pd.DataFrame([
	{"context": {"p_fraud": 0.08}, "action": "blocked", "action_prob": 0.90, "reward": 0},
	{"context": {"p_fraud": 0.03}, "action": "allowed", "action_prob": 0.90, "reward": 20},
	{"context": {"p_fraud": 0.02}, "action": "allowed", "action_prob": 0.90, "reward": 10},
	{"context": {"p_fraud": 0.01}, "action": "allowed", "action_prob": 0.90, "reward": 20},     
	{"context": {"p_fraud": 0.09}, "action": "allowed", "action_prob": 0.10, "reward": -20},
	{"context": {"p_fraud": 0.40}, "action": "allowed", "action_prob": 0.10, "reward": -10},
 ])

Define a function that computes P(action | context) under the new policy:

def action_probabilities(context):
    epsilon = 0.10
    if context["p_fraud"] > 0.10:
        return {"allowed": epsilon, "blocked": 1 - epsilon}    
    return {"allowed": 1 - epsilon, "blocked": epsilon}

Conduct the evaluation:

doubly_robust.evaluate(df, action_probabilities)
> {'expected_reward_logging_policy': 3.33, 'expected_reward_new_policy': -28.47}

This means the new policy is significantly worse than the logging policy. Instead of A/B testing this new policy online, it would be better to test some other policies offline first.

See examples for more detailed tutorials.

Supported methods

  • Inverse propensity scoring
  • Direct method
  • Doubly robust (paper)

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

offline-evaluation-0.0.6.tar.gz (4.7 kB view hashes)

Uploaded Source

Supported by

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