Operations in many essential industries including finance and banking are often characterized by the need to perform repetitive sequential tasks. Despite their criticality to the business, workflows are rarely fully automated or even formally specified, though there may exist a number of natural language documents describing these procedures for the employees of the company. Plan extraction methods provide us with the possibility of extracting structure plans from such natural language descriptions of the plans/workflows, which could then be leveraged by an automated system. In this paper, we investigate the utility of generalized language models in performing such extractions directly from such texts. Such models have already been shown to be quite effective in multiple translation tasks, and our initial results seem to point to their effectiveness also in the context of plan extractions. Particularly, we show that GPT-3 is able to generate plan extraction results that are comparable to many of the current state of the art plan extraction methods.
翻译:在许多重要行业,包括金融和银行业务,其特点往往是需要执行重复的相继任务,工作流程尽管对业务至关重要,但很少完全自动化,甚至没有正式指定,尽管可能存在一些天然语言文件,说明公司雇员的这些程序。计划提取方法使我们有可能从对计划/工作流程的这种自然语言描述中提取结构计划,然后通过自动化系统加以利用。在本文件中,我们调查通用语言模型在直接从这些文本中提取这类材料时的效用。这些模型在多种翻译工作中已经证明相当有效,我们的初步结果似乎也表明在计划提取过程中的效果。特别是,我们表明GPT-3能够产生与目前艺术计划提取方法的许多相似的提取结果。