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Distilling Reliable Information From Unreliable Theories

机译:从不可靠的理论中提取可靠的信息

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Suppose a domain expert gives us a domain theory which is meant to classify examples as positive or negative examples of some concept. Now suppose, as is often the case, that the expert specifies parts of the theory which might be in need of repair, as opposed to those parts of the theory which are certainly not in need of repair. We say that such a theory is partially mutable. There might be some non-empty set of examples each of which has a classification in the partially mutable theory which is invariant under all possible sets of repairs to unreliable components of the theory. We call such examples stable. We present an efficient algorithm for identifying stable examples for a large class of first-order clausal theories with negation and recursion. We further show how to use stability to arbitrate between the theory and a noisy oracle to improve classification accuracy. We present experimental results on some flawed theories which illustrate the approach.
机译:假设领域专家为我们提供了一个领域理论,该理论旨在将示例分为某些概念的肯定或否定示例。现在,通常情况下,假设专家指定了理论中可能需要修复的部分,而不是理论中肯定不需要修复的部分。我们说这样的理论是部分可变的。可能会有一些非空的示例集,每个示例在部分可变理论中都有一个分类,在对该理论的不可靠组成部分进行所有可能的修复后,它们都是不变的。我们称此类例子稳定。我们提出了一种有效的算法,用于针对带有否定和递归的大量一阶子句理论确定稳定的示例。我们进一步展示了如何使用稳定性在理论和嘈杂的预言之间进行仲裁以提高分类准确性。我们提出了一些有缺陷的理论的实验结果,说明了该方法。

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