一种用于遗留数据自动文本分类的混合学习算法

Dali Wang, Ying Bai, David Hamblin
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引用次数: 0

摘要

这项研究的目标是开发一种算法,从NASA的机载测量数据档案中自动分类测量类型。该产品必须在准确性、稳健性和可用性方面满足特定的指标,因为最初基于决策树的开发由于其资源密集型特点而显示出有限的适用性。我们开发了一种创新的解决方案,它在提供可比性能的同时效率更高。与许多工业应用类似,可用的数据是有噪声的并且是相关的;并且存在与要识别的测量类型相关联的广泛的特征。所提出的算法使用决策树来选择特征并确定其权重。由于存在高度相关的输入,因此使用加权朴素贝叶斯。该开发已在工业规模上成功部署,结果表明,该开发在性能和资源需求方面是平衡的。
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A Hybrid Learning Algorithm in Automated Text Categorization of Legacy Data
The goal of this research is to develop an algorithm to automatically classify measurement types from NASA’s airborne measurement data archive. The product has to meet specific metrics in term of accuracy, robustness and usability, as the initial decision-tree based development has shown limited applicability due to its resource intensive characteristics. We have developed an innovative solution that is much more efficient while offering comparable performance. Similar to many industrial applications, the data available are noisy and correlated; and there is a wide range of features that are associated with the type of measurement to be identified. The proposed algorithm uses a decision tree to select features and determine their weights.A weighted Naive Bayes is used due to the presence of highly correlated inputs. The development has been successfully deployed in an industrial scale, and the results show that the development is well-balanced in term of performance and resource requirements.
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