AIJan 30, 2013

Learning From What You Don't Observe

arXiv:1301.7407v118 citations
Originality Incremental advance
AI Analysis

This addresses a limitation in diagnostic models for AI systems, offering an incremental improvement by integrating common-sense reasoning about unreported symptoms.

The paper tackles the problem of diagnostic inference by incorporating information from observations that are not made, inspired by human reasoning, and shows that this approach can significantly improve diagnostic accuracy.

The process of diagnosis involves learning about the state of a system from various observations of symptoms or findings about the system. Sophisticated Bayesian (and other) algorithms have been developed to revise and maintain beliefs about the system as observations are made. Nonetheless, diagnostic models have tended to ignore some common sense reasoning exploited by human diagnosticians; In particular, one can learn from which observations have not been made, in the spirit of conversational implicature. There are two concepts that we describe to extract information from the observations not made. First, some symptoms, if present, are more likely to be reported before others. Second, most human diagnosticians and expert systems are economical in their data-gathering, searching first where they are more likely to find symptoms present. Thus, there is a desirable bias toward reporting symptoms that are present. We develop a simple model for these concepts that can significantly improve diagnostic inference.

Foundations

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

Your Notes