美联储:全面召回?大型语言模型的宏观经济知识评价(英文版)
美联储:全面召回?大型语言模型的宏观经济知识评价(英文版).pdf |
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We evaluate the ability of large language models (LLMs) to estimate historical macroeconomic variables and data release dates. We find that LLMs have precise knowledge of some recent statistics, but performance degrades as we go farther back in history. We highlight two particularly important kinds of recall errors: mixing together first print data with subsequent revisions (i.e., smoothing across vintages) and mixing data for past and future reference periods (i.e., smoothing within vintages
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