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      <description>AlphaAgent 论文解读：多 Agent 框架结合 AST 去重、假设对齐、复杂度控制三重正则化，在 CSI 500 和 S&amp;amp;P 500 上挖掘抗衰减的 Alpha 因子。</description>
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