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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >Learner excellence biased by data set selection: A case for data characterisation and artificial data sets
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Learner excellence biased by data set selection: A case for data characterisation and artificial data sets

机译:数据集选择偏向学习者卓越:数据表征和人工数据集的案例

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摘要

The excellence of a given learner is usually claimed through a performance comparison with other learners over a collection of data sets. Too often, researchers are not aware of the impact of their data selection on the results. Their test beds are small, and the selection of the data sets is not supported by any previous data analysis. Conclusions drawn on such test beds cannot be generalised, because particular data characteristics may favour certain learners unnoticeably. This work raises these issues and proposes the characterisation of data sets using complexity measures, which can be helpful for both guiding experimental design and explaining the behaviour of learners.
机译:通常通过与其他学习者在一组数据集上进行性能比较来声称其具有卓越的学习能力。研究人员常常没有意识到他们的数据选择对结果的影响。他们的测试床很小,以前的任何数据分析都不支持选择数据集。在这种测试床上得出的结论不能一概而论,因为特定的数据特征可能会明显地吸引某些学习者。这项工作提出了这些问题,并提出了使用复杂性度量来表征数据集的方法,这对于指导实验设计和解释学习者的行为都将有所帮助。

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