Is There a Statistical Solution to the Generality Problem?

被引:0
|
作者
Julien Dutant
Erik J. Olsson
机构
[1] University of Geneva,Department of Philosophy
[2] Lund University,Department of Philosophy
来源
Erkenntnis | 2013年 / 78卷
关键词
True Belief; Natural Kind; Process Type; Cognitive Architecture; Relevant Type;
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摘要
This article is concerned with a statistical proposal due to James R. Beebe for how to solve the generality problem for process reliabilism. The proposal is highlighted by Alvin I. Goldman as an interesting candidate solution. However, Goldman raises the worry that the proposal may not always yield a determinate result. We address this worry by proving a dilemma: either the statistical approach does not yield a determinate result or it leads to trivialization, i.e. reliability collapses into truth (and anti-reliability into falsehood). Various strategies for avoiding this predicament are considered, including revising the statistical rule or restricting its application to natural kinds. All amendments are seen to have serious problems of their own. We conclude that reliabilists need to look elsewhere for a convincing solution to the generality problem.
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页码:1347 / 1365
页数:18
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