The extent and consequences of p-hacking in science
收藏DataONE2020-06-24 更新2025-07-19 收录
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A focus on novel, confirmatory, and statistically significant results leads to substantial bias in the scientific literature. One type of bias, known as âp-hacking,â occurs when researchers collect or select data or statistical analyses until nonsignificant results become significant. Here, we use text-mining to demonstrate that p-hacking is widespread throughout science. We then illustrate how one can test for p-hacking when performing a meta-analysis and show that, while p-hacking is probably common, its effect seems to be weak relative to the real effect sizes being measured. This result suggests that p-hacking probably does not drastically alter scientific consensuses drawn from meta-analyses.
创建时间:
2025-06-26



