特征与分类器融合在预测数据挖掘中的应用——农药分类案例研究

Henrik Boström
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引用次数: 9

摘要

研究了在农药分类领域生成预测模型时融合多源信息的两种策略:1)在构建模型之前融合不同的特征集(分子描述符);2)融合从单个描述符集构建的分类器。实证研究表明,策略选择对预测绩效有显著影响。此外,实验表明,最佳策略取决于所考虑的预测模型的类型。在生成农药分类决策树时,与从融合的分子描述符集生成单个模型相比,从统计上观察到准确度的显著差异。另一方面,当模型由决策树的集成组成时,与从单个来源构建的集成模型相比,从融合的描述符集构建模型在统计上具有显著的准确性差异。
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Feature vs. classifier fusion for predictive data mining a case study in pesticide classification
Two strategies for fusing information from multiple sources when generating predictive models in the domain of pesticide classification are investigated: i) fusing different sets of features (molecular descriptors) before building a model and ii) fusing the classifiers built from the individual descriptor sets. An empirical investigation demonstrates that the choice of strategy can have a significant impact on the predictive performance. Furthermore, the experiment shows that the best strategy is dependent on the type of predictive model considered. When generating a decision tree for pesticide classification, a statistically significant difference in accuracy is observed in favor of combining predictions from the individual models compared to generating a single model from the fused set of molecular descriptors. On the other hand, when the model consists of an ensemble of decision trees, a statistically significant difference in accuracy is observed in favor of building the model from the fused set of descriptors compared to fusing ensemble models built from the individual sources.
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