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Searching for Patterns in Imbalanced Data: Methods and Alternatives with Case Studies in Life Sciences

机译:在不平衡数据中搜索模式:生命科学案例研究的方法和替代方法

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The prime motivation for pattern discovery and machine learning research has been the collection and warehousing of large amounts of data, in many domains such as life sciences and industrial processes. Examples of unique problems arisen are situations where the data is imbalanced. The class imbalance problem corresponds to situations where majority of cases belong to one class and a small minority belongs to the other, which in many cases is equally or even more important. To deal with this problem a number of approaches have been studied in the past. In this talk we provide an overview of some existing methods and present novel applications that are based on identifying the inherent characteristics of one class vs the other. We present the results of a number of studies focusing on real data from life science applications.
机译:模式发现和机器学习研究的主要动机是在生命科学和工业过程等许多领域中收集和存储大量数据。出现独特问题的例子是数据不平衡的情况。阶级失衡问题对应于多数案件属于一类而少数少数案件属于另一类的情况,在许多情况下,这是同等甚至更为重要的。为了解决这个问题,过去已经研究了许多方法。在本次演讲中,我们提供了一些现有方法的概述,并介绍了基于识别一类相对于另一类的固有特性的新颖应用程序。我们介绍了许多研究的结果,这些研究的重点是来自生命科学应用程序的真实数据。

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