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引用次数: 0

摘要

只提供摘要形式。语言学家已经提出了几十种语法形式,现在vision正在根据自己的需要推出不同的版本。Ulf Grenander提出了通用模式理论,并以人工智能的方式使用类似语法的图形化“思想”解析。人们需要一种自然的,简单的形式主义来处理所有这些情况。我想把它作为智能建模的一个核心问题。模式理论始于70年代,由Ulf Grenander和他在布朗大学的学派提出。其目的是从统计学的角度分析世界产生的所有“信号”的模式,无论这些信号是图像、声音、书面文本、DNA或蛋白质串、神经元的尖峰序列、价格或天气的时间序列等等。模式理论提出,在一类信号中发现的模式类型——以及描述这些模式所需的隐藏变量——通常会在其他信号中发现,并且它们的特征可变性将是相似的。潜在的想法是找到能够捕获我们在自然界中看到的所有模式的随机模型类别,因此这些模型中的随机样本与来自世界本身的样本具有相同的“外观和感觉”。然后利用贝叶斯规则实现对噪声和模糊样本的模式检测,这种方法可以被描述为“综合分析”。
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Is there a general structure for grammars?
Summary form only given. Linguists have proposed dozens of formalisms for grammars and now vision is weighing in with its versions based on its needs. Ulf Grenander has proposed general pattern theory, and has used grammar-like graphical parses of "thoughts" in the style of AI. One wants a natural, simple formalism treating all these cases. I want to pose this as a central problem in modeling intelligence. Pattern theory started in the 70's with the ideas of Ulf Grenander and his school at Brown. The aim is to analyze from a statistical point of view the patterns in all "signals" generated by the world, whether they be images, sounds, written text, DNA or protein strings, spike trains in neurons, time series of prices or weather, etc. Pattern theory proposes that the types of patterns-and the hidden variables needed to describe these patterns - found in one class of signals will often be found in the others and that their characteristic variability will be similar. The underlying idea is to find classes of stochastic models which can capture all the patterns that we see in nature, so that random samples from these models have the same "look and feel" as the samples from the world itself. Then the detection of patterns in noisy and ambiguous samples can be achieved by the use of Bayes' rule, a method that can be described as "analysis by synthesis".
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