首页> 外国专利> Labeled Knowledge Graph Based Priming Of A Natural Language Model Providing User Access To Programmatic Functionality Through Natural Language Input

Labeled Knowledge Graph Based Priming Of A Natural Language Model Providing User Access To Programmatic Functionality Through Natural Language Input

机译:基于自然语言模型的基于自然语言模型的基于知识图的基于启动,通过自然语言输入提供用户访问程序化功能

摘要

A natural language model can be primed utilizing optimized examples generated from a labeled knowledge graph corresponding to an independently developed application program. Parsing of the labeled knowledge graph can include the identification of triples, comprising a source node, a destination node, and a link between them, each of which can be labeled. One or more natural language input examples can be generated from an individual triple by concatenating the natural language words or phrases utilized to label the source node in the link. Determinations that subsequently received natural language user input is similar to the generated examples can result in an identification of the triple, which can, in turn, trigger the performance of a function associated with the destination node of the triple. Labels can include preferred labels and alternative labels, and various permutations thereof can be concatenated to generate alternative natural language input examples.
机译:可以利用从与独立开发的应用程序对应的标记知识图中生成的优化示例进行自然语言模型。 解析标记的知识图可以包括三元组的识别,包括源节点,目的节点和它们之间的链路,每个都可以标记。 通过连接用于在链路中标记源节点的自然语言单词或短语,可以从单独的三倍生成一个或多个自然语言输入示例。 随后接收的自然语言用户输入的确定类似于所生成的示例,可以导致三重识别,这可以依次触发与三重目的节点相关联的函数的性能。 标签可以包括优选的标签和替代标签,并且可以连接到各种排列以产生替代的自然语言输入示例。

著录项

  • 公开/公告号US2022036001A1

    专利类型

  • 公开/公告日2022-02-03

    原文格式PDF

  • 申请/专利权人 MICROSOFT TECHNOLOGY LICENSING LLC;

    申请/专利号US202117504029

  • 发明设计人 JOHN ANTHONY TAYLOR;

    申请日2021-10-18

  • 分类号G06F40/279;

  • 国家 US

  • 入库时间 2022-08-24 23:36:25

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