Contrasting Explain-ML with Interpretability Machine Learning Tools in Light of Interactive Machine Learning Principles
نویسندگان
چکیده
The way Complex Machine Learning (ML) models generate their results is not fully understood, including by very knowledgeable users. If users cannot interpret or trust the predictions generated model, they will use them. Furthermore, human role often properly considered in development of ML systems. In this article, we present design, implementation and evaluation Explain-ML, an Interactive (IML) system for Explainable that follows principles Human-Centered (HCML). We assess user experience with Explain-ML interpretability strategies, contrasting them analysis how other IML tools address principles. To do so, have conducted potential light systems design a systematic inspection three – Rulematrix, Explanation Explorer ATMSeer using Semiotic Inspection Method (SIM). Our positive indicators regarding process guided its development. analyses also highlighted aspects are relevant from users’ perspective. By SIM inspections were able to identify common strategies. believe reported work contribute understanding consolidation principles, ultimately advancing knowledge HCML.
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ژورنال
عنوان ژورنال: Journal on Interactive Systems
سال: 2022
ISSN: ['2763-7719']
DOI: https://doi.org/10.5753/jis.2022.2556