首页> 外文会议>Fourth International Conference on Computing Anticipatory Systems (CASYS 2000), Aug 7-12, 2000, Liege, Belgium >From Computing with Numbers to Computing with Words ― From Manipulation of Measurements to Manipulation of Perceptions
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From Computing with Numbers to Computing with Words ― From Manipulation of Measurements to Manipulation of Perceptions

机译:从数字计算到单词计算-从度量的运算到感知的运算

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Computing, in its usual sense, is centered on manipulation of numbers and symbols. In contrast, computing with words, or CW for short, is a methodology in which the objects of computation are words and propositions drawn from a natural language, e.g., small, large, far, heavy, not very likely, the price of gas is low and declining, Berkeley is near San Francisco, it is very unlikely that there will be a significant increase in the price of oil in the near future, etc. Computing with words is inspired by the remarkable human capability to perform a wide variety of physical and mental tasks without any measurements and any computations. Familiar examples of such tasks are parking a car, driving in heavy traffic, playing golf, riding a bicycle, understanding speech and summarizing a story. Underlying this remarkable capability is the brain's crucial ability to manipulate perceptions ― perceptions of distance, size, weight, color, speed, time, direction, force, number, truth, likelihood and other characteristics of physical and mental objects. Manipulation of perceptions plays a key role in human recognition, decision and execution processes. As a methodology, computing with words provides a foundation for a computational theory of perceptions ― a theory which may have an important bearing on how humans make ― and machines might make ― perception-based rational decisions in an environment of imprecision, uncertainty and partial truth. A basic difference between perceptions and measurements is that, in general, measurements are crisp whereas perceptions are fuzzy. One of the fundamental aims of science has been and continues to be that of progressing from perceptions to measurements. Pursuit of this aim has led to brilliant successes. We have sent men to the moon; we can build computers that are capable of performing billions of computations per second; we have constructed telescopes that can explore the far reaches of the universe; and we can date the age of rocks that are millions of years old. But alongside the brilliant successes stand conspicuous underachievements and outright failures. We cannot build robots which can move with the agility of animals or humans; we cannot automate driving in heavy traffic; we cannot translate from one language to another at the level of a human interpreter; we cannot create programs which can summarize non-trivial stories; our ability to model the behavior of economic systems leaves much to be desired; and we cannot build machines that can compete with children in the performance of a wide variety of physical and cognitive tasks. It may be argued that underlying the underachievements and failures is the unavailability of a methodology for reasoning and computing with perceptions rather than measurements. An outline of such a methodology ― referred to as a computational theory of perceptions ― is presented in this paper. The computational theory of perceptions, or CTP for short, is based on the methodology of computing with words (CW). In CTP, words play the role of labels of perceptions and, more generally, perceptions are expressed as propositions in a natural language. CW-based techniques are employed to translate propositions expressed in a natural language into what is called the Generalized Constraint Language (GCL). In this language, the meaning of a proposition is expressed as a generalized constraint, X isr R, where X is the constrained variable, R is the constraining relation and isr is a variable copula in which r is a variable whose value defines the way in which R constrains X. Among the basic types of constraints are: possibilistic, veristic, probabilistic, random set, Pawlak set, fuzzy graph and usuality. The wide variety of constraints in GCL makes GCL a much more expressive language than the language of predicate logic. In CW, the initial and terminal data sets, IDS and TDS, are assumed to consist of propositions expressed in a natural language. These propositions are transla
机译:在通常意义上,计算集中在对数字和符号的操纵上。相反,用词或简称CW进行计算是一种方法,其中计算的对象是从自然语言(例如,小,大,远,重,不太可能)中提取的单词和命题,天然气价格是伯克利(Berkeley)处于低位并不断下降,它位于旧金山附近,在不久的将来油价不太可能大幅上涨,等等。用文字进行计算是受人类出色的执行各种物理任务能力的启发和精神任务,无需任何测量和任何计算。此类任务的常见示例是停放汽车,交通拥挤,打高尔夫球,骑自行车,理解语音并总结故事。这种非凡能力的基础是大脑操纵感知的关键能力,即感知距离,大小,重量,颜色,速度,时间,方向,力,数量,真相,可能性和其他生理和心理对象的特征。感知的操纵在人类的识别,决策和执行过程中起着关键作用。作为一种方法,用词进行计算为感知的计算理论提供了基础,该理论可能对人的行为产生重大影响,而机器可能在不精确,不确定和部分真实的环境中做出基于感知的理性决策。 。感知和测量之间的基本区别在于,通常来说,测量是清晰的,而感知是模糊的。科学的基本目标之一一直是并且继续是从感知到测量的发展。对这一目标的追求导致了辉煌的成功。我们派人上了月球。我们可以构建能够每秒执行数十亿次计算的计算机;我们建造了望远镜,可以探索宇宙的远处;我们可以估算出几百万年的岩石年龄。但是,除了辉煌的成就之外,还有显着的成就不足和彻底的失败。我们不能制造能够随着动物或人类敏捷而运动的机器人。我们无法在交通繁忙时自动驾驶;我们无法在人工翻译的水平上将一种语言翻译成另一种语言;我们不能创建可以总结非平凡故事的程序;我们对经济系统行为进行建模的能力亟待完善;而且我们无法制造出可以与儿童竞争的机器,以执行各种身体和认知任务。可能会争辩说,成就不佳和失败的根本原因是无法使用基于感知而非测量的方法进行推理和计算。本文介绍了这种方法的概述,即所谓的感知计算理论。感知的计算理论(简称CTP)基于单词计算(CW)的方法。在CTP中,单词扮演感知的标签角色,更广泛地说,感知以自然语言中的命题表达。基于CW的技术被用来将以自然语言表达的命题翻译成所谓的广义约束语言(GCL)。用这种语言,命题的含义表示为广义约束X isr R,其中X是约束变量,R是约束关系,isr是变量copula,其中r是变量,其值定义了其中R约束X。约束的基本类型包括:可能的,真实的,概率的,随机集,Pawlak集,模糊图和常性。 GCL中的各种约束使GCL成为比谓词逻辑语言更具表现力的语言。在CW中,假定初始和最终数据集IDS和TDS由以自然语言表达的命题组成。这些命题是翻译

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