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首页> 外文期刊>Genetic programming and evolvable machines >Evolutionary model building under streaming data for classification tasks: opportunities and challenges
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Evolutionary model building under streaming data for classification tasks: opportunities and challenges

机译:在流数据下进行分类任务的演化模型构建:机遇与挑战

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摘要

Streaming data analysis potentially represents a significant shift in emphasis from schemes historically pursued for offline (batch) approaches to the classification task. In particular, a streaming data application implies that: (1) the data itself has no formal 'start' or 'end'; (2) the properties of the process generating the data are non-stationary, thus models that function correctly for some part(s) of a stream may be ineffective elsewhere; (3) constraints on the time to produce a response, potentially implying an anytime operational requirement; and (4) given the prohibitive cost of employing an oracle to label a stream, a finite labelling budget is necessary. The scope of this article is to provide a survey of developments for model building under streaming environments from the perspective of both evolutionary and non-evolutionary frameworks. In doing so, we bring attention to the challenges and opportunities that developing solutions to streaming data classification tasks are likely to face using evolutionary approaches.
机译:流数据分析可能表示重点已从以往针对脱机(批处理)方法实施的方案转移到分类任务的重大转变。特别地,流数据应用程序意味着:(1)数据本身没有正式的“开始”或“结束”; (2)生成数据的过程的属性是不稳定的,因此对于流的某些部分正确运行的模型在其他地方可能无效; (3)产生回应的时间受到限制,可能暗示着随时都有操作要求; (4)鉴于采用甲骨文来标记流的成本高昂,因此有限的标记预算是必要的。本文的范围是从演化和非演化框架的角度对流环境下模型构建的发展进行概述。在此过程中,我们提请注意使用进化方法开发流数据分类任务解决方案可能面临的挑战和机遇。

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