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Opening the Black Box: A practitioner’s guide to Artificial Intelligence and Machine Learning in assessment (Part 2)
0
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3
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2018
Jahr
Abstract
Key digested message The use of Machine Learning (ML) and Artificial Intelligence (AI) is beginning to impact the assessment of human characteristics across a number of domains, including talent assessment. In the first part of this guide, featured in the last issue of this publication, the authors explained what is and is not machine learning, and how it differs from psychometric approaches and Artificial Intelligence. This second part will guide assessment practitioners on the questions to ask and issues to consider when deciding whether to use ML-based assessment, as well as signposting some jargon used by data scientists.
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