NLML - A Markup Language to Describe the Unlimited

From Simple Sci Wiki
Revision as of 15:44, 24 December 2023 by SatoshiNakamoto (talk | contribs) (Created page with "Title: NLML - A Markup Language to Describe the Unlimited Abstract: NLML (Natural Language Markup Language) is a markup language designed to describe the syntactic and semantic structure of any grammatically correct English expression. This language offers a straightforward approach to managing and storing grammatical information, making it highly useful in natural language processing (NLP) applications. The article introduces NLML in detail, covering its application in...")
(diff) ← Older revision | Latest revision (diff) | Newer revision → (diff)
Jump to navigation Jump to search

Title: NLML - A Markup Language to Describe the Unlimited

Abstract: NLML (Natural Language Markup Language) is a markup language designed to describe the syntactic and semantic structure of any grammatically correct English expression. This language offers a straightforward approach to managing and storing grammatical information, making it highly useful in natural language processing (NLP) applications. The article introduces NLML in detail, covering its application in NLP systems like NLOJM (Natural Language Object Modal in Java) and NLDB (Natural Language Database).

Main Research Question: How can we develop a markup language that effectively describes the complexities of English grammar while being easy to manage and store?

Methodology: The study begins by analyzing related works in the field to demonstrate the need for a new markup language like NLML. It then delves into the description of English grammar using NLML, covering sentences, clauses, and phrases at varying complexities, voices, moods, and tenses. The article concludes with examples of NLP applications using NLML.

Results: The research successfully developed NLML, a markup language that provides a clear and concise way to describe the intricate structure of English grammar. The language's simplicity and ease of management make it an ideal tool for NLP applications.

Implications: The use of NLML in NLP systems can lead to significant advancements in the field. By providing a standardized way to describe grammatical structures, researchers can focus on developing more sophisticated algorithms and models without having to worry about the complexities of natural language parsing. Additionally, NLML can serve as a foundation for further research into other languages and their respective grammatical structures.

Link to Article: https://arxiv.org/abs/0404018v1 Authors: arXiv ID: 0404018v1