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A grounded theory of abstraction in artificial intelligence

机译:人工智能的基础抽象理论

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In artificial intelligence, abstraction is commonly used to account for the use of various levels of details in a given representation language or the ability to change from one level to another while preserving useful properties. Abstraction has been mainly studied in problem solving, theorem proving, knowledge representation (in particular for spatial and temporal reasoning) and machine learning. In such contexts, abstraction is defined as a mapping between formalisms that reduces the computational complexity of the task at stake. By analysing the notion of abstraction from an information quantity point of view, we pinpoint the differences and the complementary role of reformulation and abstraction in any representation change. We contribute to extending the existing semantic theories of abstraction to be grounded on perception, where the notion of information quantity is easier to characterize formally. In the author's view, abstraction is best represented using abstraction operators, as they provide semantics for classifying different abstractions and support the automation of representation changes. The usefulness of a grounded theory of abstraction in the cartography domain is illustrated. Finally, the importance of explicitly representing abstraction for designing more autonomous and adaptive systems is discussed. [References: 85]
机译:在人工智能中,抽象通常用于说明给定表示语言中各种级别细节的使用或在保留有用属性的同时从一个级别更改为另一个级别的能力。对抽象的研究主要集中在问题解决,定理证明,知识表示(尤其是时空推理)和机器学习方面。在这种情况下,抽象被定义为形式主义之间的映射,这种映射降低了所涉任务的计算复杂性。通过从信息量的角度分析抽象的概念,我们指出了在任何表示形式更改中差异和重构和抽象的互补作用。我们致力于将现有的抽象语义理论扩展到以感知为基础,在这种感知中,信息量的概念更易于形式化地表征。在作者看来,最好使用抽象运算符表示抽象,因为抽象运算符提供了对不同抽象进行分类的语义,并支持表示更改的自动化。说明了制图学领域扎根的抽象理论的有用性。最后,讨论了明确表示抽象对于设计更多自治和自适应系统的重要性。 [参考:85]

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