Python Causal Impact Implementation Based on Google's R Package. Built using TensorFlow Probability.
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Updated
Jan 13, 2025 - Python
Python Causal Impact Implementation Based on Google's R Package. Built using TensorFlow Probability.
Some examples of using bsts (Bayesian Structural Time Series) to build causal impact models
Causal Impact の理解と誤解
A replication of the paper "Democratization and Economic Output in Sub-Saharan Africa".
The Causal Impact model lets you examine ecommerce and marketing time series data to understand whether changes have led to a statistically significant performance improvement. Here's how to use PyCausalImpact to analyse changes in marketing activity or in this case on Boeing stock price
An R package offering quick and easy prototyping for non-causal impact analysis.
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