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Approaches to Measuring Inconsistent Information

机译:测量不一致信息的方法

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Measures of quantity of information have been studied extensively for more than fifty years. The seminal work on information theory is by Shannon. This work, based on probability theory, can be used in a logical setting when the worlds are the possible events. This work is also the basis of Lozinskii's work for defining the quantity of information of a formula (or knowledgebase) in propositional logic. But this definition is not suitable when the knowledgebase is inconsistent. In this case, it has no classical model, so we have no "event" to count. This is a shortcoming since in practical applications (e.g. databases) it often happens that the knowledgebase is not consistent. And it is definitely not true that all inconsistent knowledgebases contain the same (null) amount of information, as given by the "classical information theory". As explored for several years in the paraconsistent logic community, two inconsistent knowledgebases can lead to very different conclusions, showing that they do not convey the same information. There has been some recent interest in this issue, with some interesting proposals. Though a general approach for information theory in (possibly inconsistent) logical knowledgebases is missing. Another related measure is the measure of contradiction. It is usual in classical logic to use a binary measure of contradiction: a knowledgebase is either consistent or inconsistent. This dichotomy is obvious when the only deductive tool is classical inference, since inconsistent knowledgebases are of no use. But there are now a number of logics developed to draw non-trivial conclusions from an inconsistent knowledgebase. So this dichotomy is not sufficient to describe the amount of contradiction of a knowledgebase, one needs more fine-grained measures. Some interesting proposals have been made for this. The main aim of this paper is to review the measures of information and contradiction, and to study some potential practical applications. This has significant potential in developing intelligent systems that can be tolerant to inconsistencies when reasoning with real-world knowledge.
机译:已经广泛研究了信息量的措施超过五十年。关于信息理论的开创性工作是由香农。基于概率理论的这项工作可以在世界当世界是可能的事件时在逻辑环境中使用。这项工作也是Lozinskii在命题逻辑中定义公式(或知识库)信息量的工作的基础。但是当知识库不一致时,这种定义并不适合。在这种情况下,它没有经典模型,因此我们没有“事件”。这是在实际应用中(例如数据库)以来的缺点,经常发生知识库并不一致。并且绝对不是确实,所有不一致的知识库包含相同的(零)信息,由“经典信息理论”给出。正如透析逻辑逻辑社区所探讨的那样,两个不一致的知识库可以导致得出非常不同的结论,表明他们没有传达相同的信息。近来有一些兴趣在这个问题上,有一些有趣的建议。虽然缺少(可能不一致)逻辑知识库中的信息理论的一般方法缺失。另一个相关措施是矛盾的衡量标准。通常在古典逻辑中使用二进制测量矛盾:知识库是一致或不一致的。当唯一的演绎工具是经典推断的唯一推理时,这种二分法是显而易见的,因为不一致的知识库是没有使用的。但现在已经开发了许多逻辑来绘制来自不一致的知识库中的非琐碎的结论。因此,这种二分法不足以描述知识库的矛盾量,需要更细粒度的措施。已经为此进行了一些有趣的提案。本文的主要目的是审查信息和矛盾的措施,并研究一些潜在的实际应用。这在开发智能系统方面具有显着潜力,这些系统可以在推理真实知识时宽容不一致。

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