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What is semantic analysis?
                issemantic
                   semanticanalysis?
Semantic analysis is the study of semantics, or the structure and meaning of speech. It

is the job of a semantic analyst to discover grammatical patterns, the meanings of

colloquial speech, and to uncover specific meanings to words in foreign languages. In

literature, semantic analysis is used to give the work meaning by looking at it from the

writer’s point of view. The analyst examines how and why the author structured the

language of the piece as he or she did. When using semantic analysis to study dialects

and foreign languages, the analyst compares the grammatical structure and meanings

of different words to those in his or her native language. As the analyst discovers the

differences, it can help him or her understand the unfamiliar grammatical structure.




         Semantic Analysis for SEO
         SemanticAnalysis

Semantic analysis (SA) isn’t really about synonyms and plurals (stemming) as many

folks in the biz seem to believe. If there is anyone misconception we hear the most, it is

that.



Concepts and theme — basically the problem with establishing on-page relevance is

that computers simply don’t understand the language very well (a 6th-grade level last I

heard). So they use SA to try to better understand what a page is about.



I like to use the example of the search jaguar. This could be a car, a big cat, an operating

system, a football team, etc.
To better understand what the page is about, they look for terms/phrases that are on

the page to categorize it. In the case of the car, we’d find terms/phrases such as auto

mechanic, engine and the animal, short hair, hunts prey and so on.



Let’s look at a search for White House. This doesn’t necessarily mean the US capital.

This might be simply to a “white” “house.” So the system would look for things such as

President of the United States. Barack Obama and so on… you get the idea.



For example, using LSA, a search engine would recognize that trips to the zoo often

include viewing wildlife and animals possibly as part of a tour.Now, conduct a search

on Google for~Zoo ~trips(the tilde is a search operator; more on this later in this

chapter). Note that the boldface words that are returned match the terms that are

italicized in the preceding paragraph. Google is setting “related” terms in boldface and

recognizing which terms frequently occur concurrently (together, on the same page, or

in close proximity) in their indexes.

Some forms of LSA are too computationally expensive. For instance, currently the

search engines are not smart enough to “learn” the way some of the newer learning

computers do at MIT. They cannot, for example, learn through their index that zebras
and tigers are examples of striped animals, although they may realize that stripes and

zebras are more semantically connected than stripes and ducks.Latent semantic


indexing (LSI) takes this a step further by utilizing semantic analysis to identify related

web pages. For example, the search engine may notice one page that talks about

doctors and another one that talk about physicians, and determine that there is a

relationship between the pages based on the other words in common between the

pages. As a result, the page referring to doctors may still show up in a search query that

uses the word physician instead. Search engines have been investing in these types of

technologies for many years. For example, in April 2003 Google acquiredApplied

Semantics, a company known for its semantic-text-processing technology. This

technology currently powers Google’s AdSense advertising program, and has most

likely made its way into the core search algorithms as well. For SEO purposes, this

usage opens our eyes to realise how search engines recognize the connections

between words, phrases, and ideas on the Web. As semantic connectivity becomes a


bigger part of search engine algorithms, you can expect a greater emphasis on the

theme of pages, sites, and links. It will be important going into the future to realize the

search engines’ ability to pick up on ideas and themes and recognize content, links,

and pages that doesn’t fit easily into the scheme of a website.

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What is semantic analysis

  • 1. What is semantic analysis? issemantic semanticanalysis? Semantic analysis is the study of semantics, or the structure and meaning of speech. It is the job of a semantic analyst to discover grammatical patterns, the meanings of colloquial speech, and to uncover specific meanings to words in foreign languages. In literature, semantic analysis is used to give the work meaning by looking at it from the writer’s point of view. The analyst examines how and why the author structured the language of the piece as he or she did. When using semantic analysis to study dialects and foreign languages, the analyst compares the grammatical structure and meanings of different words to those in his or her native language. As the analyst discovers the differences, it can help him or her understand the unfamiliar grammatical structure. Semantic Analysis for SEO SemanticAnalysis Semantic analysis (SA) isn’t really about synonyms and plurals (stemming) as many folks in the biz seem to believe. If there is anyone misconception we hear the most, it is that. Concepts and theme — basically the problem with establishing on-page relevance is that computers simply don’t understand the language very well (a 6th-grade level last I heard). So they use SA to try to better understand what a page is about. I like to use the example of the search jaguar. This could be a car, a big cat, an operating system, a football team, etc.
  • 2. To better understand what the page is about, they look for terms/phrases that are on the page to categorize it. In the case of the car, we’d find terms/phrases such as auto mechanic, engine and the animal, short hair, hunts prey and so on. Let’s look at a search for White House. This doesn’t necessarily mean the US capital. This might be simply to a “white” “house.” So the system would look for things such as President of the United States. Barack Obama and so on… you get the idea. For example, using LSA, a search engine would recognize that trips to the zoo often include viewing wildlife and animals possibly as part of a tour.Now, conduct a search on Google for~Zoo ~trips(the tilde is a search operator; more on this later in this chapter). Note that the boldface words that are returned match the terms that are italicized in the preceding paragraph. Google is setting “related” terms in boldface and recognizing which terms frequently occur concurrently (together, on the same page, or in close proximity) in their indexes. Some forms of LSA are too computationally expensive. For instance, currently the search engines are not smart enough to “learn” the way some of the newer learning computers do at MIT. They cannot, for example, learn through their index that zebras
  • 3. and tigers are examples of striped animals, although they may realize that stripes and zebras are more semantically connected than stripes and ducks.Latent semantic indexing (LSI) takes this a step further by utilizing semantic analysis to identify related web pages. For example, the search engine may notice one page that talks about doctors and another one that talk about physicians, and determine that there is a relationship between the pages based on the other words in common between the pages. As a result, the page referring to doctors may still show up in a search query that uses the word physician instead. Search engines have been investing in these types of technologies for many years. For example, in April 2003 Google acquiredApplied Semantics, a company known for its semantic-text-processing technology. This technology currently powers Google’s AdSense advertising program, and has most likely made its way into the core search algorithms as well. For SEO purposes, this usage opens our eyes to realise how search engines recognize the connections between words, phrases, and ideas on the Web. As semantic connectivity becomes a bigger part of search engine algorithms, you can expect a greater emphasis on the theme of pages, sites, and links. It will be important going into the future to realize the search engines’ ability to pick up on ideas and themes and recognize content, links, and pages that doesn’t fit easily into the scheme of a website.