Empirical Estimates on Hand Manipulation are Recoverable: A Step Towards Individualized and Explainable Robotic Support in Everyday Activities

01/27/2022
by   Alexander Wich, et al.
0

A key challenge for robotic systems is to figure out the behavior of another agent. The capability to draw correct inferences is crucial to derive human behavior from examples. Processing correct inferences is especially challenging when (confounding) factors are not controlled experimentally (observational evidence). For this reason, robots that rely on inferences that are correlational risk a biased interpretation of the evidence. We propose equipping robots with the necessary tools to conduct observational studies on people. Specifically, we propose and explore the feasibility of structural causal models with non-parametric estimators to derive empirical estimates on hand behavior in the context of object manipulation in a virtual kitchen scenario. In particular, we focus on inferences under (the weaker) conditions of partial confounding (the model covering only some factors) and confront estimators with hundreds of samples instead of the typical order of thousands. Studying these conditions explores the boundaries of the approach and its viability. Despite the challenging conditions, the estimates inferred from the validation data are correct. Moreover, these estimates are stable against three refutation strategies where four estimators are in agreement. Furthermore, the causal quantity for two individuals reveals the sensibility of the approach to detect positive and negative effects. The validity, stability and explainability of the approach are encouraging and serve as the foundation for further research.

READ FULL TEXT

page 1

page 3

research
02/18/2022

Interpolation and Regularization for Causal Learning

We study the problem of learning causal models from observational data t...
research
09/27/2022

Falsification before Extrapolation in Causal Effect Estimation

Randomized Controlled Trials (RCTs) represent a gold standard when devel...
research
12/17/2020

Tutorial: Introduction to computational causal inference using reproducible Stata, R and Python code

The purpose of many health studies is to estimate the effect of an expos...
research
07/29/2022

Bias Formulas for Violations of Proximal Identification Assumptions

Causal inference from observational data often rests on the unverifiable...
research
07/28/2021

Causal Support: Modeling Causal Inferences with Visualizations

Analysts often make visual causal inferences about possible data-generat...
research
02/22/2020

Causal Inference in Genetic Trio Studies

We introduce a method to rigorously draw causal inferences—inferences im...

Please sign up or login with your details

Forgot password? Click here to reset