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    <title>[信息本体论] on AI内参</title>
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      <title>超越“透明度陷阱”：为何AI可解释性的终局是本体工程而非脑科学扫描</title>
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      <description>文章深刻剖析了当前AI可解释性研究从“神经透视”转向“本体重构”的范式迁移，指出本体工程才是解决黑箱透明度难题的根本路径，并预判了未来以治理为导向的产业生态演变。</description>
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