Transparency Communication for Machine Learning in Human-Automation Interaction
Abstract
Technological advances offer the promise of autonomous systems to form human-machine teams that are more capable than their individual members. Understanding the inner workings of the autonomous systems, especially as machine-learning (ML) methods are being widely applied to the design of such systems, has become increasingly challenging for the humans working with them. The "black-box" nature of quantitative ML approaches poses an impediment to peoples situation awareness (SA) of these ML-based systems, often resulting in either disuse or over-reliance of autonomous systems employing such algorithms. Research in human-automation interaction has shown that transparency communication can improve teammates' SA, foster the trust relationship, and boost the human-automation team's performance. In this chapter, we will examine the implications of an agent transparency model for human interactions with ML-based agents using automated explanations. We will discuss the application of a particular ML method, reinforcement learning (RL), in Partially Observable Markov Decision Process (POMDP)-based agents, and the design of explanation algorithms for RL in POMDPs.
Document Details
- Document Type
- Technical Report
- Publication Date
- Jun 08, 2018
- Accession Number
- AD1159991
Entities
People
- David V. Pynadath
- Jessie Y. Chen
- Michael J. Barnes
- Ning Wang
Organizations
- University of Southern California