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Explainable and Interpretable Reinforcement Learning for Robotics

Title
Explainable and Interpretable Reinforcement Learning for Robotics [electronic resource] / by Aaron M. Roth, Dinesh Manocha, Ram D. Sriram, Elham Tabassi.
ISBN
9783031475184
Edition
1st ed. 2024.
Publication
Cham : Springer International Publishing : Imprint: Springer, 2024.
Physical Description
1 online resource (XV, 114 p.) 14 illus., 13 illus. in color.
Local Notes
Access is available to the Yale community.
Access and use
Access restricted by licensing agreement.
Summary
This book surveys the state of the art in explainable and interpretable reinforcement learning (RL) as relevant for robotics. While RL in general has grown in popularity and been applied to increasingly complex problems, several challenges have impeded the real-world adoption of RL algorithms for robotics and related areas. These include difficulties in preventing safety constraints from being violated and the issues faced by systems operators who desire explainable policies and actions. Robotics applications present a unique set of considerations and result in a number of opportunities related to their physical, real-world sensory input and interactions. The authors consider classification techniques used in past surveys and papers and attempt to unify terminology across the field. The book provides an in-depth exploration of 12 attributes that can be used to classify explainable/interpretable techniques. These include whether the RL method is model-agnostic or model-specific, self-explainable or post-hoc, as well as additional analysis of the attributes of scope, when-produced, format, knowledge limits, explanation accuracy, audience, predictability, legibility, readability, and reactivity. The book is organized around a discussion of these methods broken down into 42 categories and subcategories, where each category can be classified according to some of the attributes. The authors close by identifying gaps in the current research and highlighting areas for future investigation. In addition, this book: Provides readers with a categorization system to discuss explainable and interpretable RL techniques Explores RL methodology specific to robotics applications Explains how interpretable RL algorithms can enhance trust, increase adoption, reduce risk, and increase safety.
Variant and related titles
Springer Nature Synthesis Collection of Technology.
Other formats
Printed edition:
Printed edition:
Printed edition:
Format
Books / Online
Language
English
Added to Catalog
April 10, 2024
Series
Synthesis lectures on artificial intelligence and machine learning.
Synthesis Lectures on Artificial Intelligence and Machine Learning,
Contents
Introduction
Classification System
Explainable Methods Organized by Category
4 Key Considerations and Resources
Opportunities, Challenges, and Future Directions.
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