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ANOMALOUS TEXT DETECTION AND ENTITY IDENTIFICATION USING EXPLORATION-EXPLOITATION AND PRE-TRAINED LANGUAGE MODELS

机译:基于探索开发和预训练语言模型的异常文本检测和实体识别

摘要

There is a need for more effective and efficient anomalous text detection. This need can be addressed by, for example, solutions for anomalous text detection that include the steps of performing a group of exploration-exploitation keyword extraction iterations based at least in part on one or more training corpus data entries until a per-iteration keyword list for an ultimate exploration-exploitation keyword extraction iteration satisfies a keyword list threshold condition; and subsequent to performing the exploration-exploitation keyword extraction iterations: processing one or more input corpus data entries using the language-model-based binary classification model to generate one or more inferred anomaly probabilities, processing the one or more input corpus data entries using the keyword model to generate explanatory metadata for the one or more inferred anomaly probabilities, and performing one or more prediction-based actions based at least in part on the one or more inferred anomaly probabilities and the explanatory metadata.
机译:需要更有效的异常文本检测。这一需求可以通过以下方式解决:,异常文本检测的解决方案,包括至少部分基于一个或多个训练语料库数据条目执行一组探索利用关键词提取迭代,直到最终探索利用关键词提取迭代的每次迭代关键词列表满足关键词列表阈值条件;以及在执行探索利用关键词提取迭代之后:使用基于语言模型的二元分类模型处理一个或多个输入语料库数据条目,以生成一个或多个推断的异常概率,使用关键字模型处理一个或多个输入语料库数据条目,以生成一个或多个推断异常概率的解释性元数据,并至少部分基于一个或多个推断异常概率和解释性元数据执行一个或多个基于预测的动作。

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