Generating neural networks through the induction of threshold logic unit trees

M. Sahami
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引用次数: 7

Abstract

This paper investigates the generation of neural networks through the induction of binary trees of threshold logic units (TLUs). Initially, we describe the framework for our tree construction algorithm and show how it helps to bridge the gap between pure connectionist (neural network) and symbolic (decision tree) paradigms. We also show how the trees of threshold units that we induce can be transformed into an isomorphic neural network topology. Several methods for learning the linear discriminant functions at each node of the tree structure are examined and shown to produce accuracy results that are comparable to classical information theoretic methods for constructing decision trees (which use single feature tests at each node), but produce trees that are smaller and thus easier to understand. Moreover, our results also show that it is possible to simultaneously learn both the topology and weight settings of a neural network simply using the training data set that we are initially given.<>
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通过阈值逻辑单元树的归纳生成神经网络
本文研究了用阈值逻辑单元二叉树归纳法生成神经网络的方法。首先,我们描述了树构造算法的框架,并展示了它如何帮助弥合纯连接主义(神经网络)和符号(决策树)范式之间的差距。我们还展示了如何将我们诱导的阈值单元树转换为同构神经网络拓扑。在树形结构的每个节点上学习线性判别函数的几种方法进行了检查,并显示出与构建决策树的经典信息理论方法(在每个节点上使用单个特征测试)相当的准确性结果,但产生的树更小,因此更容易理解。此外,我们的结果还表明,简单地使用我们最初给出的训练数据集,可以同时学习神经网络的拓扑和权重设置。
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