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Method and System for Unlabeled Data Selection Using Failed Case Analysis

机译:使用失败的案例分析的未标记数据选择的方法和系统

摘要

A method, system, and a computer program product automatically select training data for updating a model by applying human-annotated training data to a model to generate results that are evaluated to identify correct case results and false case results that are categorized into error type categories for use in building error models corresponding to the error type categories, where each error model is built from at least failed case results belonging to a corresponding error type, and where unlabeled data samples are applied to each error model to compute an error likelihood for each unlabeled data sample with respect to each error type category, thereby enabling the selection and display of unlabeled data samples for annotation by a subject matter expert based on a computed error likelihood for the one or more unlabeled data samples in a specified error type category meeting or exceeding an error threshold requirement.
机译:一种方法,系统和计算机程序产品自动选择通过将人工注释的训练数据应用于模型来更新模型以生成评估的结果,以识别成错误类型类别的结果 用于建立与错误类型类别相对应的错误模型,其中每个错误模型至少由属于相应的错误类型的情况构建,并且将未标记的数据样本应用于每个错误模型以计算每个错误模型以计算每个错误模型 关于每个错误类型类别的未标记的数据样本,从而能够基于指定错误类型类别会议中的一个或多个未标记的数据样本的计算错误可能性来选择和显示用于由主题专家的注释的解注或 超过错误阈值要求。

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