[[["易于理解","easyToUnderstand","thumb-up"],["解决了我的问题","solvedMyProblem","thumb-up"],["其他","otherUp","thumb-up"]],[["很难理解","hardToUnderstand","thumb-down"],["信息或示例代码不正确","incorrectInformationOrSampleCode","thumb-down"],["没有我需要的信息/示例","missingTheInformationSamplesINeed","thumb-down"],["翻译问题","translationIssue","thumb-down"],["其他","otherDown","thumb-down"]],["最后更新时间 (UTC):2025-04-02。"],[[["Template-based extraction allows for training a high-performing model with a minimum of three training and three test documents, ideal for fixed-layout documents like W9s and questionnaires."],["A document dataset, comprising documents with ground-truth data, is essential for training, up-training, and evaluating a processor version, as the processor learns from these examples."],["For template mode labeling, it is recommended to draw bounding boxes around the entire expected data area within a document, even if the field is empty in the training document, unlike model-based training."],["When building a custom extractor, auto-labeling can be enabled during document import, and it is advised to focus on accurately labeling a small set of documents rather than adding more documents during template-based training."],["The foundation model allows for auto-labeling, which can be improved in accuracy and performance with the addition of training data with descriptive label names, while ensuring that all fields are accurate."]]],[]]