Online and Interactive Bayesian Inference Debugging
By: Nathanael Nussbaumer, Markus Böck, Jürgen Cito
Potential Business Impact:
Fixes computer models that guess answers.
Probabilistic programming is a rapidly developing programming paradigm which enables the formulation of Bayesian models as programs and the automation of posterior inference. It facilitates the development of models and conducting Bayesian inference, which makes these techniques available to practitioners from multiple fields. Nevertheless, probabilistic programming is notoriously difficult as identifying and repairing issues with inference requires a lot of time and deep knowledge. Through this work, we introduce a novel approach to debugging Bayesian inference that reduces time and required knowledge significantly. We discuss several requirements a Bayesian inference debugging framework has to fulfill, and propose a new tool that meets these key requirements directly within the development environment. We evaluate our results in a study with 18 experienced participants and show that our approach to online and interactive debugging of Bayesian inference significantly reduces time and difficulty on inference debugging tasks.
Similar Papers
Sound Interval-Based Synthesis for Probabilistic Programs
Programming Languages
Helps scientists find answers without needing math skills.
Bayesian Predictive Probabilities for Online Experimentation
Applications
Lets online tests check results early safely.
Conservative Software Reliability Assessments Using Collections of Bayesian Inference Problems
Applications
Makes sure computer programs are safe to use.