Machine understanding and deep learning representation

被引:0
|
作者
Michael Tamir
Elay Shech
机构
[1] University of California,
[2] Auburn University,undefined
来源
Synthese | / 201卷
关键词
Machine learning; Deep learning; Artificial intelligence; Understanding; Representation; Information theory;
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学科分类号
摘要
Practical ability manifested through robust and reliable task performance, as well as information relevance and well-structured representation, are key factors indicative of understanding in the philosophical literature. We explore these factors in the context of deep learning, identifying prominent patterns in how the results of these algorithms represent information. While the estimation applications of modern neural networks do not qualify as the mental activity of persons, we argue that coupling analyses from philosophical accounts with the empirical and theoretical basis for identifying these factors in deep learning representations provides a framework for discussing and critically evaluating potential machine understanding given the continually improving task performance enabled by such algorithms.
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