causal dependence plot
Causal Dependence Plots
To use artificial intelligence and machine learning models wisely we must understand how they interact with the world, including how they depend causally on data inputs. In this work we develop Causal Dependence Plots (CDPs) to visualize how a model's predicted outcome depends on changes in a given predictor
- Europe > Austria > Vienna (0.14)
- North America > United States > Wisconsin (0.04)
- Europe > United Kingdom > England > Greater London > London (0.04)
- (3 more...)
Causal Dependence Plots
To use artificial intelligence and machine learning models wisely we must understand how they interact with the world, including how they depend causally on data inputs. In this work we develop Causal Dependence Plots (CDPs) to visualize how a model's predicted outcome depends on changes in a given predictor along with consequent causal changes in other predictor variables. Crucially, this differs from standard methods based on independence or holding other predictors constant, such as regression coefficients or Partial Dependence Plots (PDPs). We demonstrate with simulations and real data experiments how CDPs can be combined in a modular way with methods for causal learning or sensitivity analysis. Since people often think causally about input-output dependence, CDPs can be powerful tools in the xAI or interpretable machine learning toolkit and contribute to applications like scientific machine learning and algorithmic fairness.
Causal Dependence Plots
Loftus, Joshua R., Bynum, Lucius E. J., Hansen, Sakina
Explaining artificial intelligence or machine learning models is increasingly important. To use such data-driven systems wisely we must understand how they interact with the world, including how they depend causally on data inputs. In this work we develop Causal Dependence Plots (CDPs) to visualize how one variable--an outcome--depends on changes in another variable--a predictor--$\textit{along with any consequent causal changes in other predictor variables}$. Crucially, CDPs differ from standard methods based on holding other predictors constant or assuming they are independent. CDPs make use of an auxiliary causal model because causal conclusions require causal assumptions. With simulations and real data experiments, we show CDPs can be combined in a modular way with methods for causal learning or sensitivity analysis. Since people often think causally about input-output dependence, CDPs can be powerful tools in the xAI or interpretable machine learning toolkit and contribute to applications like scientific machine learning and algorithmic fairness.
- Europe > Austria > Vienna (0.14)
- North America > United States > New York > New York County > New York City (0.04)
- North America > United States > Wisconsin (0.04)
- (4 more...)
- Information Technology > Artificial Intelligence > Natural Language > Explanation & Argumentation (0.68)
- Information Technology > Artificial Intelligence > Representation & Reasoning > Model-Based Reasoning (0.48)
- Information Technology > Artificial Intelligence > Machine Learning > Statistical Learning (0.46)