Precisiated Natural Language (PNL)
نویسنده
چکیده
74 AI MAGAZINE ■ This article is a sequel to an article titled “A New Direction in AI—Toward a Computational Theory of Perceptions,” which appeared in the Spring 2001 issue of AI Magazine (volume 22, No. 1, 73–84). The concept of precisiated natural language (PNL) was briefly introduced in that article, and PNL was employed as a basis for computation with perceptions. In what follows, the conceptual structure of PNL is described in greater detail, and PNL’s role in knowledge representation, deduction, and concept definition is outlined and illustrated by examples. What should be understood is that PNL is in its initial stages of development and that the exposition that follows is an outline of the basic ideas that underlie PNL rather than a definitive theory. A natural language is basically a system for describing perceptions. Perceptions, such as perceptions of distance, height, weight, color, temperature, similarity, likelihood, relevance, and most other attributes of physical and mental objects are intrinsically imprecise, reflecting the bounded ability of sensory organs, and ultimately the brain, to resolve detail and store information. In this perspective, the imprecision of natural languages is a direct consequence of the imprecision of perceptions (Zadeh 1999, 2000). How can a natural language be precisiated—precisiated in the sense of making it possible to treat propositions drawn from a natural language as objects of computation? This is what PNL attempts to do. In PNL, precisiation is accomplished through translation into what is termed a precisiation language. In the case of PNL, the precisiation language is the generalized-constraint language (GCL), a language whose elements are so-called generalized constraints and their combinations. What distinguishes GCL from languages such as Prolog, LISP, SQL, and, more generally, languages associated with various logical systems, for example, predicate logic, modal logic, and so on, is its much higher expressive power. The conceptual structure of PNL mirrors two fundamental facets of human cognition: (a) partiality and (b) granularity (Zadeh 1997). Partiality relates to the fact that most human concepts are not bivalent, that is, are a matter of degree. Thus, we have partial understanding, partial truth, partial possibility, partial certainty, partial similarity, and partial relevance, to cite a few examples. Similarly, granularity and granulation relate to clumping of values of attributes, forming granules with words as labels, for example, young, middle-aged, and old as labels of granules of age. Existing approaches to natural language processing are based on bivalent logic—a logic in which shading of truth is not allowed. PNL abandons bivalence. By so doing, PNL frees itself from limitations imposed by bivalence and categoricity, and opens the door to new approaches for dealing with long-standing problems in AI and related fields (Novak 1991). At this juncture, PNL is in its initial stages of development. As it matures, PNL is likely to find a variety of applications, especially in the realms of world knowledge representation, concept definition, deduction, decision, search, and question answering.
منابع مشابه
Deduction Engine Design for PNL-Based Question Answering System
In this paper, we present a methodology for designing a Precisiated Natural Language (PNL) based deduction engine for automated Question Answering (QA) systems. QA is one type of information retrieval system, and is regarded as the next advancement beyond keyword-based search engines, as it requires deductive reasoning and use of domain/background knowledge. PNL, as discussed by Zadeh, is one r...
متن کاملPNL: Precisiated natural language and its impact on scientific theories
It is a deep-seated tradition in science to view the use of natural languages in scientific theories as a manifestation of mathematical immaturity. The rationale for this tradition is that natural languages are lacking in precision. However, what is not widely recognized is that adherence to this tradition canies a steep price-the inability to exploit the richness of natural languages in a way ...
متن کاملPrecisiating Natural Language for a Question Answering System
We report on an application of Precisiated Natural Language (PNL) concepts and protoformal deduction, which are integral to Computational Theory of Perception, and Computing with Words, as developed by Lotfi Zadeh. A semi-automated precisiation process is part of an information extraction module for a question answering system. Simplified natural language statements (containing a single verb ph...
متن کاملGeneralizing Precisiated Natural Language: A Formal Logic as a Precisiation Language
We generalize precisiated natrual language by establishing a formal logic as a generalized precisiation language. In this formal logic, each proposition has a form that reflects a syntactic structure observed in natural language. Various syntactic structures are incorporated in the formal logic so that it precisiates not only perceptual propositions but also action-related propositions. The syn...
متن کاملGene Ontology-based Similarity Measures for Gene Clustering and Knowledge Discovery
Computing with words and perceptions, or CWP for short, is a mode of computing in which the objects of computation are words, propositions and perceptions described in a natural language. Perceptions play a key role in human cognition. Humans-but not machines-have a remarkable capability to perform a wide variety of physical and mental tasks without any measurements and any computations. Everyd...
متن کاملذخیره در منابع من
با ذخیره ی این منبع در منابع من، دسترسی به آن را برای استفاده های بعدی آسان تر کنید
عنوان ژورنال:
- AI Magazine
دوره 25 شماره
صفحات -
تاریخ انتشار 2004