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Error Prediction with Partial Feedback

机译:带有部分反馈的错误预测

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摘要

In this paper, we propose a probabilistic framework for predicting the root causes of errors in data processing pipelines made up of several components when we only have access to partial feedback; that is, we axe aware when some error has occurred in one or more of the components, but we do not know which one. The proposed error model enables us to direct the user feedback to the correct components in the pipeline to either automatically correct errors as they occur, retrain the component with assimilated training examples, or take other corrective action. We present the model and describe an Expectation Maximization (EM)-based algorithm to learn the model parameters and predict the error configuration. We demonstrate the accuracy and usefulness of our method first on synthetic data, and then on two distinct tasks: error correction in a 2-component opinion summarization system, and phrase error detection in statistical machine translation.
机译:在本文中,我们提出了一个概率框架,用于预测当我们只能访问部分反馈时,由几个组件组成的数据处理管道中错误的根本原因。也就是说,我们知道一个或多个组件何时发生错误,但我们不知道哪个。提出的错误模型使我们能够将用户反馈定向到管道中的正确组件,以在错误发生时自动纠正错误,使用同等的培训示例对组件进行重新培训或采取其他纠正措施。我们介绍该模型并描述基于期望最大化(EM)的算法,以学习模型参数并预测错误配置。我们首先在合成数据上然后在两个不同的任务上证明我们方法的准确性和有用性:两成分意见汇总系统中的错误纠正,以及统计机器翻译中的短语错误检测。

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