A pressing research topic is to find ways to explain the decisions of machine learning systems to end users, data officers, and other stakeholders. These explanations must be understandable to human beings. Much work in this field focuses on image classification, as the required explanations can rely on images, therefore making communication relatively easy, and may take into account the image as a whole. Here, we propose to exploit the representational power of sparse dictionaries to determine image local properties that can be used as crucial ingredients of humanly understandable explanations of classification decisions.
Explaining classification systems using sparse dictionaries
Apicella A.;
2019
Abstract
A pressing research topic is to find ways to explain the decisions of machine learning systems to end users, data officers, and other stakeholders. These explanations must be understandable to human beings. Much work in this field focuses on image classification, as the required explanations can rely on images, therefore making communication relatively easy, and may take into account the image as a whole. Here, we propose to exploit the representational power of sparse dictionaries to determine image local properties that can be used as crucial ingredients of humanly understandable explanations of classification decisions.File in questo prodotto:
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