循环因果复合体

L. Mazlack
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引用次数: 0

摘要

因果常识推理感知在人类决策中起着至关重要的作用。已知的因果关系具有很高的决策价值。至少对某些关系的了解本质上是不精确的。因果复合体是一组较小的因果关系,可以组成一个更大粒度的因果对象。通常,在对一些大粒度事件进行推理时,常识推理比对许多细粒度事件进行推理更成功。然而,粒度较大的因果对象必然更不精确。一个令人满意的解决方案可能是开发大粒度的溶液,当大粒度的不精确性令人不满意时,再开发细粒度的对象。通常,因果关系由一个有条件边(概率、可能性、随机性等)的网络来表示。可以使用各种表示图形和模型。一类需要的必要描述是循环,包括相互的因果依赖,既有非累积效应,也有累积效应(包括反馈)。如果没有循环描述,在科学和日常生活中使用的因果结构的多样性和丰丰性将是不完整的。因果贝叶斯网络已经受到了极大的关注;一个明显的弱点是它们不允许循环;它们还有其他重要的限制条件,包括马尔科夫条件在内的独立性条件。本文讨论了一般因果网络和贝叶斯因果网络,并介绍了一般的不精确图形因果模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Cyclic Causal Complexes
Causal commonsense reasoning perceptions play an essential role in human decision-making. A known cause/effect relationship has a high decision value. Knowledge of at least some relationships is inherently imprecise. Causal complexes are groupings of smaller causal relations that can make up a larger grained causal object. Usually, commonsense reasoning is more successful in reasoning about a few large-grained events than many finer-grained events. However, larger-grained causal objects are necessarily more imprecise. A satisficing solution might be to develop large-grained solutions and then develop finer-grain objects when the impreciseness of the larger-grain is unsatisfactory. Often, a causal relationship is represented by a network with conditioned edges (probability, possibility, randomness, etc.). Various kinds of representational graphs and models can be used. One class of needed necessary descriptions are cycles, including mutual causal dependencies, both with non-cumulative effects and cumulative effects (including feedback). Without cyclic descriptions, there will be an incomplete representation of the variety and wealth of causal constructions used in science as well as in everyday life. Causal Bayes networks have received significant attention; a significant weakness is that they do not allow cycles; they have other significant restrictions, including independence conditions that include Markoff conditions. This paper discusses general and Bayes causal networks and introduces general imprecise graphic causal models.
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