Causal possibility model structures

L. Mazlack
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引用次数: 2

Abstract

Causality occupies a position of centrality in human reasoning. It plays an essential role in commonsense human decision-making. Determining causes has been a tantalizing goal throughout human history. Proper sacrifices to the gods were thought to bring rewards; failure to make the proper observations to led to disaster. Today, data mining holds the promise of extracting unsuspected information from very large databases. The most common methods build association rules. In many ways, the interest in association rules is that they offer the promise (or illusion) of causal, or at least, predictive relationships. However, association rules only calculate a joint occurrence frequency; they do not express a causal relationship. If causal relationships could be discovered, it would be very useful. This paper explores the possible representation of causality drawn from large data sets.
因果可能性模型结构
因果关系在人类推理中占有中心地位。它在人类的常识性决策中起着至关重要的作用。在整个人类历史上,确定原因一直是一个诱人的目标。人们认为适当的祭祀神灵会带来回报;未能做出正确的观察导致了灾难。如今,数据挖掘有望从非常大的数据库中提取不受怀疑的信息。最常见的方法是构建关联规则。在许多方面,对关联规则的兴趣在于它们提供了因果关系的承诺(或幻觉),或者至少是预测关系。然而,关联规则只计算联合出现的频率;它们并不表示因果关系。如果能发现因果关系,那将是非常有用的。本文探讨了从大数据集中抽取的因果关系的可能表示。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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