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Fractal Analysis Illuminates the Form of Connectionist Structural Gradualness

机译:分形分析阐明了连接主义结构渐进性的形式

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We examine two connectionist networks-a fractal learning neural network (FLNN) and a Simple Recurrent Network (SRN)-that are trained to process center-embedded symbol sequences. Previous work provides evidence that connectionist networks trained on infinite-state languages tend to form fractal encodings. Most such work focuses on simple counting recursion cases (e.g., a~nb~n), which are not comparable to the complex recursive patterns seen in natural language syntax. Here, we consider exponential state growth cases (including mirror recursion), describe a new training scheme that seems to facilitate learning, and note that the connectionist learning of these cases has a continuous metamorphosis property that looks very different from what is achievable with symbolic encodings. We identify a property-ragged progressive generalization-which helps make this difference clearer. We suggest two conclusions. First, the fractal analysis of these more complex learning cases reveals the possibility of comparing connectionist networks and symbolic models of grammatical structure in a principled way-this helps remove the black box character of connectionist networks and indicates how the theory they support is different from symbolic approaches. Second, the findings indicate the value of future, linked mathematical and empirical work on these models-something that is more possible now than it was 10 years ago.
机译:我们研究了两个连接器网络-分形学习神经网络(FLNN)和简单递归网络(SRN)-经过训练以处理嵌入在中心的符号序列。先前的工作提供了证据,证明接受无限状态语言训练的连接主义网络倾向于形成分形编码。大多数此类工作着重于简单地计算递归案例(例如a〜nb_n),这与自然语言语法中看到的复杂递归模式不相上下。在这里,我们考虑指数状态增长情况(包括镜像递归),描述了一种似乎有助于学习的新训练方案,并注意到这些情况下的连接主义学习具有连续的变态性质,该性质看起来与使用符号编码可以实现的性质非常不同。我们确定了一个属性agged杂的渐进泛化-这有助于使这种区别更加清晰。我们提出两个结论。首先,对这些更复杂的学习案例的分形分析揭示了以一种有原则的方式比较连接论网络和语法结构的符号模型的可能性-这有助于消除连接论网络的黑匣子特征,并表明它们所支持的理论与符号学有何不同方法。其次,研究结果表明,在这些模型上进行未来的数学和实证研究相结合的价值-现在比十年前更有可能。

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