Why Are Research Findings Supported by Experimental Data with High Probability Often False? --Critical Analysis of the Replication Crisis and Statistical Bias in Scientific Literature
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The scientific community faces a paradox: research findings that appear to be strongly supported by experimental data with high statistical probability are often false. Despite John Ioannidis's seminal 2005 assertion that "most published research findings are false," the scientific establishment continues to operate under the assumption that findings with high probability support are correspondingly likely to be true. This paper examines why this fundamental misconception persists and explores the underlying causes of false findings in scientific literature. Through analysis of the replication crisis, statistical bias, and case studies including microwave absorption theory and Kanazawa's beauty-daughters hypothesis, we demonstrate how flawed statistical standards and theoretical deficiencies in mainstream theories create a systematic bias toward false positive results. The paper argues that the emphasis on replication experiments, originally proposed by Feynman to combat "cargo cult science," has paradoxically contributed to the problem by flooding journals with non-innovative content that dilutes truly innovative research. Furthermore, the modern peer review system systematically suppresses minority viewpoints that challenge mainstream theories, treating them as "pseudoscience" despite the historical reality that scientific progress is typically driven by non-mainstream minorities rather than conformist research.