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Effective Classification Using a Small Training Set Based on Discretization and Statistical Analysis

机译:基于离散化和统计分析的小型训练集有效分类

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摘要

This work deals with the problem of producing a fast and accurate data classification, learning it from a possibly small set of records that are already classified. The proposed approach is based on the framework of the so-called Logical Analysis of Data (LAD), but enriched with information obtained from statistical considerations on the data. A number of discrete optimization problems are solved in the different steps of the procedure, but their computational demand can be controlled. The accuracy of the proposed approach is compared to that of the standard LAD algorithm, of support vector machines and of label propagation algorithm on publicly available datasets of the UCI repository. Encouraging results are obtained and discussed.
机译:这项工作解决了产生快速准确的数据分类的问题,并从可能已经分类的少量记录中学习了它。所提出的方法基于所谓的数据逻辑分析(LAD)的框架,但其中丰富了从对数据的统计考虑中获得的信息。在过程的不同步骤中解决了许多离散的优化问题,但可以控制它们的计算需求。在UCI存储库的公开数据集上,将所提方法的准确性与标准LAD算法,支持向量机和标签传播算法的准确性进行了比较。获得并讨论了令人鼓舞的结果。

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