Explainability via Responsibility

10/04/2020
by   Faraz Khadivpour, et al.
0

Procedural Content Generation via Machine Learning (PCGML) refers to a group of methods for creating game content (e.g. platformer levels, game maps, etc.) using machine learning models. PCGML approaches rely on black box models, which can be difficult to understand and debug by human designers who do not have expert knowledge about machine learning. This can be even more tricky in co-creative systems where human designers must interact with AI agents to generate game content. In this paper we present an approach to explainable artificial intelligence in which certain training instances are offered to human users as an explanation for the AI agent's actions during a co-creation process. We evaluate this approach by approximating its ability to provide human users with the explanations of AI agent's actions and helping them to more efficiently cooperate with the AI agent.

READ FULL TEXT
research
07/27/2021

Toward Co-creative Dungeon Generation via Transfer Learning

Co-creative Procedural Content Generation via Machine Learning (PCGML) r...
research
09/25/2018

Explainable PCGML via Game Design Patterns

Procedural content generation via Machine Learning (PCGML) is the umbrel...
research
09/06/2022

Explaining Machine Learning Models in Natural Conversations: Towards a Conversational XAI Agent

The goal of Explainable AI (XAI) is to design methods to provide insight...
research
06/10/2021

Brittle AI, Causal Confusion, and Bad Mental Models: Challenges and Successes in the XAI Program

The advances in artificial intelligence enabled by deep learning archite...
research
09/01/2020

AI solutions for drafting in Magic: the Gathering

Drafting in Magic: the Gathering is a sub-game of a larger trading card ...
research
11/02/2021

Instructive artificial intelligence (AI) for human training, assistance, and explainability

We propose a novel approach to explainable AI (XAI) based on the concept...

Please sign up or login with your details

Forgot password? Click here to reset