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Neural Rule Ensembles: Encoding Sparse Feature Interactions into Neural Networks

机译:神经规则集成:将稀疏特征交互编码为神经网络

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Artificial Neural Networks form the basis of very powerful learning methods. It has been observed that a naive application of fully connected neural networks to data with many irrelevant variables often leads to overfitting. In an attempt to circumvent this issue, a prior knowledge pertaining to what features are relevant and their possible feature interactions can be encoded into these networks. In this work, we use decision trees to capture such relevant features and their interactions and define a mapping to encode extracted relationships into a neural network. This addresses the initialization related concerns of fully connected neural networks. At the same time through feature selection it enables learning of compact representations compared to state of the art tree-based approaches. Empirical evaluations and simulation studies show the superiority of such an approach over fully connected neural networks and tree-based approaches.
机译:人工神经网络构成了非常强大的学习方法的基础。已经观察到,将完全连接的神经网络天真的应用到具有许多不相关变量的数据上通常会导致过度拟合。为了规避此问题,可以将与哪些功能相关以及它们可能的功能交互相关的先验知识编码到这些网络中。在这项工作中,我们使用决策树捕获此类相关特征及其相互作用,并定义映射以将提取的关系编码为神经网络。这解决了与完全连接的神经网络有关的初始化问题。同时,通过特征选择,与基于树的现有技术相比,它可以学习紧凑表示。经验评估和模拟研究表明,这种方法优于完全连接的神经网络和基于树的方法。

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