A Locally Adaptive Interpretable Regression

05/07/2020
by   Lkhagvadorj Munkhdalai, et al.
0

Machine learning models with both good predictability and high interpretability are crucial for decision support systems. Linear regression is one of the most interpretable prediction models. However, the linearity in a simple linear regression worsens its predictability. In this work, we introduce a locally adaptive interpretable regression (LoAIR). In LoAIR, a metamodel parameterized by neural networks predicts percentile of a Gaussian distribution for the regression coefficients for a rapid adaptation. Our experimental results on public benchmark datasets show that our model not only achieves comparable or better predictive performance than the other state-of-the-art baselines but also discovers some interesting relationships between input and target variables such as a parabolic relationship between CO2 emissions and Gross National Product (GNP). Therefore, LoAIR is a step towards bridging the gap between econometrics, statistics, and machine learning by improving the predictive ability of linear regression without depreciating its interpretability.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
07/28/2020

Surrogate Locally-Interpretable Models with Supervised Machine Learning Algorithms

Supervised Machine Learning (SML) algorithms, such as Gradient Boosting,...
research
07/03/2020

Gaussian Process Regression with Local Explanation

Gaussian process regression (GPR) is a fundamental model used in machine...
research
11/30/2021

Leveraging Intrinsic Gradient Information for Machine Learning Model Training

Designing models that produce accurate predictions is the fundamental ob...
research
12/14/2021

Local Prediction Pools

We propose local prediction pools as a method for combining the predicti...
research
08/25/2021

Inverse Sampling of Degenerate Datasets from a Linear Regression Line

When linear regression generates a relationship between a (dependent) sc...
research
01/04/2018

Model Class Reliance: Variable Importance Measures for any Machine Learning Model Class, from the "Rashomon" Perspective

There are serious drawbacks to many current variable importance (VI) met...
research
06/04/2020

Inject Machine Learning into Significance Test for Misspecified Linear Models

Due to its strong interpretability, linear regression is widely used in ...

Please sign up or login with your details

Forgot password? Click here to reset