首页> 外文会议>Machine Learning: ECML 2006; Lecture Notes in Artificial Intelligence; 4212 >Toward Robust Real-World Inference: A New Perspective on Explanation-Based Learning
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Toward Robust Real-World Inference: A New Perspective on Explanation-Based Learning

机译:迈向鲁棒的现实世界推理:基于解释的学习的新视角

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Over the last twenty years AI has undergone a sea change. The once-dominant paradigm of logical inference over symbolic knowledge representations has largely been supplanted by statistical methods. The statistical paradigm affords a robustness in the real-world that has eluded symbolic logic. But statistics sacrifices much in expressiveness and inferential richness, which is achieved by first-order logic through the nonlinear interaction and combinatorial interplay among quantified component sentences. We present a new form of Explanation Based Learning in which inference results from two forms of evidence: analytic (support via sound derivation from first-order representations of an expert's conceptualization of a domain) and empirical (corroboration derived from consistency with real-world observations). A simple algorithm provides a first illustration of the approach. Some important properties are proven including tractability and robustness with respect to the real world.
机译:在过去的二十年中,人工智能发生了翻天覆地的变化。关于符号知识表示的逻辑推理曾经占主导地位的范式在很大程度上已被统计方法所取代。统计范式在现实世界中提供了健壮的功能,而这个功能已避开了符号逻辑。但是统计学牺牲了表达力和推论丰富度,这是通过一阶逻辑通过量化成分句之间的非线性相互作用和组合相互作用实现的。我们提出了一种新的基于解释的学习形式,其中推理来自两种形式的证据:分析(通过专家对领域概念化的一阶表示进行的声音推导提供支持)和经验(通过与实际观察结果的一致性得出的佐证) )。一个简单的算法提供了该方法的第一个说明。事实证明,一些重要属性包括相对于现实世界的易处理性和鲁棒性。

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