HCAIJan 11, 2020

How to Answer Why -- Evaluating the Explanations of AI Through Mental Model Analysis

arXiv:2002.02526v16 citations
AI Analysis

This addresses the need for valid mental model analysis in human-AI interaction, but it appears incremental as it integrates existing methods like cognitive tutoring.

The paper tackles the problem of evaluating AI explanations by surveying users' mental models, proposing an exemplary method to assess explainable AI approaches in a human-centered manner.

To achieve optimal human-system integration in the context of user-AI interaction it is important that users develop a valid representation of how AI works. In most of the everyday interaction with technical systems users construct mental models (i.e., an abstraction of the anticipated mechanisms a system uses to perform a given task). If no explicit explanations are provided by a system (e.g. by a self-explaining AI) or other sources (e.g. an instructor), the mental model is typically formed based on experiences, i.e. the observations of the user during the interaction. The congruence of this mental model and the actual systems functioning is vital, as it is used for assumptions, predictions and consequently for decisions regarding system use. A key question for human-centered AI research is therefore how to validly survey users' mental models. The objective of the present research is to identify suitable elicitation methods for mental model analysis. We evaluated whether mental models are suitable as an empirical research method. Additionally, methods of cognitive tutoring are integrated. We propose an exemplary method to evaluate explainable AI approaches in a human-centered way.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes