cs.AI updates on arXiv.org 10月20日 12:14
自动化推理系统的可审查性与可信度
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本文探讨了自动化推理系统的可审查性和可信度,分析了影响其审查性的特征,并提出了通过技术和社会措施提高其审查性和可信度的可能步骤。

arXiv:2309.12351v2 Announce Type: replace-cross Abstract: Since its beginnings in the 1940s, automated reasoning by computers has become a tool of ever growing importance in scientific research. So far, the rules underlying automated reasoning have mainly been formulated by humans, in the form of program source code. Rules derived from large amounts of data, via machine learning techniques, are a complementary approach currently under intense development. The question of why we should trust these systems, and the results obtained with their help, has been discussed by philosophers of science but has so far received little attention by practitioners. The present work focuses on independent reviewing, an important source of trust in science, and identifies the characteristics of automated reasoning systems that affect their reviewability. It also discusses possible steps towards increasing reviewability and trustworthiness via a combination of technical and social measures.

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自动化推理 可审查性 可信度 技术措施 社会措施
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