AutoDOViz: Human-Centered Automation for Decision Optimization
Daniel Karl I. Weidele, Shazia Afzal, Abel N. Valente, Cole Makuch,, Owen Cornec, Long Vu, Dharmashankar Subramanian, Werner Geyer, Rahul Nair,, Inge Vejsbjerg, Radu Marinescu, Paulito Palmes, Elizabeth M. Daly, Loraine, Franke, Daniel Haehn

TL;DR
AutoDOViz is an interactive interface that simplifies decision optimization using reinforcement learning, making it more accessible, understandable, and collaborative for data scientists and domain experts.
Contribution
The paper introduces AutoDOViz, a human-centered system that lowers barriers to applying RL for decision optimization and enhances collaboration and trust.
Findings
Data scientists are more willing to engage in DO after using AutoDOViz.
AutoDOViz increases trust and understanding of RL models.
The system facilitates human-in-the-loop decision making.
Abstract
We present AutoDOViz, an interactive user interface for automated decision optimization (AutoDO) using reinforcement learning (RL). Decision optimization (DO) has classically being practiced by dedicated DO researchers where experts need to spend long periods of time fine tuning a solution through trial-and-error. AutoML pipeline search has sought to make it easier for a data scientist to find the best machine learning pipeline by leveraging automation to search and tune the solution. More recently, these advances have been applied to the domain of AutoDO, with a similar goal to find the best reinforcement learning pipeline through algorithm selection and parameter tuning. However, Decision Optimization requires significantly more complex problem specification when compared to an ML problem. AutoDOViz seeks to lower the barrier of entry for data scientists in problem specification for…
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