Skip to main content

Currently Skimming:

1 Introduction
Pages 1-2

The Chapter Skim interface presents what we've algorithmically identified as the most significant single chunk of text within every page in the chapter.
Select key terms on the right to highlight them within pages of the chapter.

From page 1...
... Workshop speakers and participants discussed research challenges related to the following topics:  Critical analysis of the current state of machine learning and artificial intelligence (AI) algorithms and systems that are used to generate analytic products from disparate structured and unstructured data types and to detect anomalies;  Statistical methods that can be used to evaluate confidence hierarchies, model uncertainty, and error propagation, and manage risk as a function of time and complexity;  Approaches for ensuring that machine-generated products compare favorably with those of trained human analysts; and  Techniques for responding to adversarial manipulation of input data to influence analytical products by exploiting weaknesses in machine learning and AI algorithms and vulnerabilities in their implementation.
From page 2...
... The views contained in this proceedings are those of the individual workshop participants and do not necessarily represent the views of the participants as a whole, the planning committee, or the National Academies of Sciences, Engineering, and Medicine.

This material may be derived from roughly machine-read images, and so is provided only to facilitate research.
More information on Chapter Skim is available.