因果力与预防:人类因果判断中线索相互作用效应的解释性解释

P. White
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引用次数: 1

摘要

根据因果力理论,所有的因果关系都被理解为一件事通过作用于另一件事的责任而产生效果的因果力。功率可以在强度上变化,它们的运行也取决于防喷器的存在。当一个结果发生时,有必要通过分配足够的力量来解释它的发生,以产生它的可能原因。权变信息用于估计力量和预防力量的强度,以及它们在多大程度上解释结果的发生和不发生。人们通过推理过程从偶然性信息中做出因果判断,这种推理过程根据这种基本理解来解释证据。从这个解释中,可以推导出一个基于一组通用原则的计算模型,这些原则涉及估计强度,使用这些估计来解释模糊信息,并将所得证据整合到加权平均模型中。结果表明,该模型预测了人类因果判断中的线索交互效应,包括前向和后向阻断、二级和三级后向阻断、前向和后向条件抑制、阴影恢复、超学习和后向超学习。
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Causal powers and preventers: An explanatory account of cue interaction effects in human causal judgement
According to the causal powers theory, all causal relations are understood in terms of causal powers of one thing producing an effect by acting on liability of another thing. Powers can vary in strength, and their operation also depends on the presence of preventers. When an effect occurs, there is a need to account for the occurrence by assigning sufficient strength to produce it to its possible causes. Contingency information is used to estimate strengths of powers and preventers and the extent to which they account for occurrences and nonoccurrences of the outcome. People make causal judgements from contingency information by processes of inference that interpret evidence in terms of this fundamental understanding. From this account it is possible to derive a computational model based on a common set of principles that involve estimating strengths, using these estimates to interpret ambiguous information, and integrating the resultant evidence in a weighted averaging model. It is shown that the model predicts cue interaction effects in human causal judgement, including forward and backward blocking, second and third order backward blocking, forward and backward conditioned inhibition, recovery from overshadowing, superlearning, and backward superlearning.
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