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Statistical feature ordering for neural-based incremental attribute learning

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Figure

Table 3.2: Data Segmentation of Classification Datasets
Figure 3.4: Class Hierarchy in RPROP IAL
Table 4.7: Correlations of Features and Outputs (Glass)
Table 4.12: Classification Results of Correlation-based Feature Ordering (Glass)
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