首页> 外文期刊>Ecological informatics: an international journal on ecoinformatics and computational ecology >Importance of feature selection in decision-tree and artificial-neural-network ecological applications. Alburnus alburnus alborella: A practical example
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Importance of feature selection in decision-tree and artificial-neural-network ecological applications. Alburnus alburnus alborella: A practical example

机译:特征选择在决策树和人工神经网络生态应用中的重要性。 Alburnus alburnus alborella:一个实际的例子

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摘要

Recent advances in computing technology have increased interest in applying data mining to ecology. Machine learning is one of the methods used in most of these data mining applications. As is well known, approximately 80% of the resources in most data mining applications are devoted to cleaning and preprocessing the data. However, there are few studies on preprocessing the ecological data used as the input in these data mining systems. In this study, we use four different feature selection methods (-~2, Information Gain, Gain Ratio, and Symmetrical Uncertainty) and evaluate their effectiveness in preprocessing the input data to be used for inducing artificial neural networks (ANNs) and decision trees (DTs). The presence/absence of fish is the data item used to illustrate our models. Feature selection is fundamental in order to increase the performances of the models obtained. Accuracy of classification improves when a small set of optimally selected features is used. DTs and ANNs are very useful tools when applied to modeling presence/absence of Alburnus alburnus alborella. ANNs generally performed better than DT models.
机译:计算技术的最新进展增加了将数据挖掘应用于生态学的兴趣。机器学习是大多数这些数据挖掘应用程序中使用的方法之一。众所周知,在大多数数据挖掘应用程序中,大约80%的资源专用于清理和预处理数据。但是,很少有研究对这些数据挖掘系统中用作输入的生态数据进行预处理。在这项研究中,我们使用四种不同的特征选择方法(-〜2,信息增益,增益比和对称不确定性)并评估了它们在预处理用于诱导人工神经网络(ANN)和决策树的输入数据时的有效性( DTs)。有无鱼是用于说明我们的模型的数据项。特征选择对于提高获得的模型的性能至关重要。当使用一小组最佳选择的特征时,分类的准确性会提高。当将DTs和ANN用于建模Alburnus alburnus alborella的存在与否时,它们是非常有用的工具。人工神经网络通常比DT模型表现更好。

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