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Learning to Predict Rare Events in Categorical Time-Series Data

机译:学习预测分类时间序列数据中的罕见事件

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Learning to predict rare events from time-series data with non-numerical features is an important real-world problem. An example of such a problem is the task of predicting telecommunication equipment failures from network alarm data. For a variety of reasons, existing statistical and machine learning methods are not well suited to solving this class of problems. This paper describes timeweaver, a genetic algorithm based machine learning system that predicts rare events by identifying predictive temporal and sequential patterns within time-series data. Timeweaver is applied to two problems and is shown to produce results which are superior to existing learning methods.
机译:学习预测与非数字特征的时间序列数据中的罕见事件是一个重要的真实问题。这种问题的一个例子是从网络报警数据预测电信设备故障的任务。出于各种原因,现有的统计和机器学习方法并不适合解决这类问题。本文描述了基于遗传算法的基于遗传算法,通过识别时间序列数据内的预测时间和顺序模式来预测罕见事件。 TimeWeaver应用于两个问题,并显示出产生优于现有学习方法的结果。

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