Ontology Engineering
暫譯: 本體工程

Kendall, Elisa F., McGuinness, Deborah L., Ding, Ying

  • 出版商: Morgan & Claypool
  • 出版日期: 2019-04-26
  • 售價: $1,920
  • 貴賓價: 9.5$1,824
  • 語言: 英文
  • 頁數: 122
  • 裝訂: Quality Paper - also called trade paper
  • ISBN: 1681733080
  • ISBN-13: 9781681733081
  • 海外代購書籍(需單獨結帳)

相關主題

商品描述

Ontologies have become increasingly important as the use of knowledge graphs, machine learning, natural language processing (NLP), and the amount of data generated on a daily basis has exploded.

As of 2014, 90% of the data in the digital universe was generated in the two years prior, and the volume of data was projected to grow from 3.2 zettabytes to 40 zettabytes in the next six years. The very real issues that government, research, and commercial organizations are facing in order to sift through this amount of information to support decision-making alone mandate increasing automation. Yet, the data profiling, NLP, and learning algorithms that are ground-zero for data integration, manipulation, and search provide less than satisfactory results unless they utilize terms with unambiguous semantics, such as those found in ontologies and well-formed rule sets. Ontologies can provide a rich "schema" for the knowledge graphs underlying these technologies as well as the terminological and semantic basis for dramatic improvements in results. Many ontology projects fail, however, due at least in part to a lack of discipline in the development process. This book, motivated by the Ontology 101 tutorial given for many years at what was originally the Sematic Technology Conference (SemTech) and then later from a semester-long university class, is designed to provide the foundations for ontology engineering. The book can serve as a course textbook or a primer for all those interested in ontologies.

商品描述(中文翻譯)

本體論變得越來越重要,因為知識圖譜、機器學習、自然語言處理(NLP)以及每日生成的數據量急劇增加。

截至2014年,數位宇宙中90%的數據是在前兩年生成的,預計在接下來的六年內,數據量將從3.2澤字節增長到40澤字節。政府、研究和商業組織面臨的實際問題是,如何在這麼大量的信息中篩選出有助於決策的信息,這迫使他們必須增加自動化。然而,數據剖析、NLP和學習算法是數據整合、操作和搜索的基礎,除非使用具有明確語義的術語,例如本體論和良好定義的規則集中的術語,否則它們提供的結果往往不盡人意。本體論可以為這些技術背後的知識圖譜提供豐富的「架構」,以及顯著改善結果的術語和語義基礎。然而,許多本體論項目失敗,部分原因是開發過程中缺乏紀律。本書受到多年來在最初的語義技術會議(Sematic Technology Conference,簡稱SemTech)上進行的本體論101教程以及後來一個學期的大学课程的啟發,旨在提供本體工程的基礎。本書可以作為課程教科書或對本體論感興趣的讀者的入門書。