Exact and Robust Conformal Inference Methods for Predictive Machine Learning With Dependent Data

02/17/2018
by   Victor Chernozhukov, et al.
0

We extend conformal inference to general settings that allow for time series data. Our proposal is developed as a randomization method and accounts for potential serial dependence by including block structures in the permutation scheme. As a result, the proposed method retains the exact, model-free validity when the data are i.i.d. or more generally exchangeable, similar to usual conformal inference methods. When exchangeability fails, as is the case for common time series data, the proposed approach is approximately valid under weak assumptions on the conformity score.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
12/16/2021

Model-free Bootstrap Prediction Regions for Multivariate Time Series

In Das and Politis(2020), a model-free bootstrap(MFB) paradigm was propo...
research
02/20/2019

Sample Splitting and Weak Assumption Inference For Time Series

We consider the problem of inference after model selection under weak as...
research
10/25/2021

Applying Regression Conformal Prediction with Nearest Neighbors to time series data

In this paper, we apply conformal prediction to time series data. Confor...
research
02/26/2018

Partial Distance Correlation Screening for High Dimensional Time Series

High dimensional time series datasets are becoming increasingly common i...
research
05/25/2022

Conformal Prediction Intervals with Temporal Dependence

Cross-sectional prediction is common in many domains such as healthcare,...
research
01/29/2021

Adaptive Sequential Design for a Single Time-Series

The current work is motivated by the need for robust statistical methods...
research
11/11/2015

Instantaneous Modelling and Reverse Engineering of DataConsistent Prime Models in Seconds!

A theoretical framework that supports automated construction of dynamic ...

Please sign up or login with your details

Forgot password? Click here to reset