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引用次数: 13

摘要

许多人工和自然系统通常使用数据结构(如图、树)进行更充分的建模。例如,使用数据结构表示图像通常比使用像素表示图像更方便。该数据结构可以作为场景分析、图像检索等的前奏。一般来说,有两种处理数据结构的方法。一种方法是认为它是由底层语法生成的,具有已定义的语法;另一种方法是把它看作一个输入输出系统,可以用神经网络来建模。在这次演讲中,我们将讨论这两种方法。我们将首先讨论如何使用属性语法对数据结构进行建模。然后,我们将讨论使用神经网络对数据结构进行建模。结果表明,这两种方法密切相关。然后,我们将推导神经网络模型的训练算法,并讨论这些模型的普遍近似性质。我们将通过一些综合的和实际的例子来演示神经网络方法。
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Adaptive processing of data structures
Many artificial and natural systems are often more adequately modelled using data structures, e.g., graphs, trees. For example, it is often more convenient to represent an image using data structures than by representing it using pixels. The data structure can serve as a prelude to scene analysis, image retrieval, etc. There are, broadly speaking, two ways in which data structures can be processed. One way is to consider it as generated by an underlying grammar, with defined syntax; and the other way is to consider it as an input output system, which may be modelled using neural networks. In this talk, we will discuss both approaches. We will first discuss how data structures can be modelled using an attributed grammar. Then, we will discuss the modelling of a data structure using neural networks. It is shown that both approaches are closely related. We will then derive training algorithms for the neural network models, and discuss the universal approximation properties of such models. We will demonstrate the neural network approach on a number of synthesized and practical examples.
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