Using Natural Language Processing to Search for Textual References

Brett Graham
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引用次数: 3

Abstract

In natural languages, as opposed to computer languages like C or Pascal, the words and syntax are not artificially defined; instead, they develop naturally. Typical examples of natural languages are those that are spoken in human communication, such as the English, French, and Japanese languages. However, the term natural language can also refer to written text, such as Facebook postings, emails or even text messages. As well as changing over time, natural languages also vary among different cultures and people groups. So, for example, the words and syntax that a teenager might use to write a text message on their phone are likely to be different to the words and syntax that Shakespeare used to write Othello. Within computer science, the term Natural Language Processing (NLP) refers to way computers are programmed to understand natural languages. At a basic level, NLP involves three steps – lexical analysis, syntax analysis, and semantic analysis. The complexity of each of these steps is perhaps best illustrated through looking at how three well-known programs incorporate NLP; namely, Microsoft Word, the Google search engine, and Apple’s Siri. If you were to type (or copy and paste) the following string – “Can I be worn jeens to church?” – into Microsoft Word then it will perform simple lexical analysis by grouping the characters into tokens (i.e. words) using the whitespace and punctuation as separators. Having done this, the program will then consult its dictionary and recognize that “jeens” is not a valid entry. As a result, it will place this word in red, somewhat like this:
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使用自然语言处理搜索文本引用
在自然语言中,与C或Pascal等计算机语言相反,单词和语法不是人为定义的;相反,它们是自然发展的。自然语言的典型例子是那些在人类交流中使用的语言,如英语、法语和日语。然而,自然语言这个术语也可以指书面文本,比如Facebook上的帖子、电子邮件甚至短信。随着时间的推移,自然语言在不同的文化和人群中也有所不同。例如,青少年在手机上写短信时使用的单词和语法可能与莎士比亚写《奥赛罗》时使用的单词和语法不同。在计算机科学中,自然语言处理(NLP)一词指的是计算机被编程来理解自然语言的方式。在基本层面上,NLP包括三个步骤——词法分析、句法分析和语义分析。每个步骤的复杂性可以通过以下三个著名的程序来最好地说明:即微软的Word、谷歌的搜索引擎和苹果的Siri。如果你要输入(或复制粘贴)下面的字符串——“我可以穿牛仔裤去教堂吗?”-输入Word,然后它将执行简单的词法分析,通过使用空白和标点作为分隔符将字符分组为令牌(即单词)。完成这些操作后,程序将查阅字典并识别“jeens”不是一个有效条目。结果,它会将这个单词显示为红色,有点像这样:
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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