Difference between revisions of "Extracting Features from Surnames"

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First many classifiers 'require' a feature matrix of full column rank, so including a variable like the length of the name along with the n-gram frequencies introduces a linear dependence between the columns; coding EGAN as having length 4 along with the 1-grams E, G, A, and N, clearly introduces no new information. The same is true for bigrams EG, GA, and AN, or trigrams EGA and GAN, and so forth. Likewise coding both bigrams and trigrams introduces no new information.
 
First many classifiers 'require' a feature matrix of full column rank, so including a variable like the length of the name along with the n-gram frequencies introduces a linear dependence between the columns; coding EGAN as having length 4 along with the 1-grams E, G, A, and N, clearly introduces no new information. The same is true for bigrams EG, GA, and AN, or trigrams EGA and GAN, and so forth. Likewise coding both bigrams and trigrams introduces no new information.
  
Second the assumption of independence among features means that with an n-gram encoding the sequence information is lost. That is EGA and GAN are assumed to be uncorrelated, though clearly they are not (as they overlap by GA). Thus there is a potential for improvement by including positional features. One way of denoting the start and end of the string is to add a space to the gram set and delimit surname with spaces. Thus EGAN would be coded in trigrams as " EG", "EGA", "GAN", and "AN ". As space characters can be difficult to spot, a hash (#) or underscore (_) is often used in its place.
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Second the assumption of independence among features means that with an n-gram encoding the sequence information is lost. That is EGA and GAN are assumed to be uncorrelated, though clearly they are not (as they overlap by GA). Thus there is a potential for improvement by including positional features. One way of denoting the start and end of the string is to add a space to the gram set and delimit surname with spaces. Thus EGAN would be coded in trigrams as " EG", "EGA", "GAN", and "AN ". As space characters can be difficult to spot and problematic to parse, a hash (#) or underscore (_) is often used in its place.
  
 
==Extracting the Features==
 
==Extracting the Features==
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An example command line to build the two files and do the reference look-ups is:
 
An example command line to build the two files and do the reference look-ups is:
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<tt> perl SurnameFeatures.pl -i=SourceFile.txt -r=Culture-EganClassification.txt -rcol=6 -rkey=0 -rno=2 -ncol=0 -dcol=5 -rsup=1 -sp=1 -gram=2 -minfq=1 -diag=0 -two=1 </tt>
 
<tt> perl SurnameFeatures.pl -i=SourceFile.txt -r=Culture-EganClassification.txt -rcol=6 -rkey=0 -rno=2 -ncol=0 -dcol=5 -rsup=1 -sp=1 -gram=2 -minfq=1 -diag=0 -two=1 </tt>
  
 
Where <tt>-rsup</tt> suppresses records that do not have reference lookups, and the <tt>-rkey</tt> and <tt>-rno</tt> specify the key and class number columns in the reference file (here Culture-EganClassification.txt). For simplicity we recommend that country names are standardized to the UN standard and then used as reference keys.
 
Where <tt>-rsup</tt> suppresses records that do not have reference lookups, and the <tt>-rkey</tt> and <tt>-rno</tt> specify the key and class number columns in the reference file (here Culture-EganClassification.txt). For simplicity we recommend that country names are standardized to the UN standard and then used as reference keys.

Latest revision as of 18:23, 20 July 2009

Extracting features from surnames entails encoding the frequency of n-grams and other features such as the string length. Recall that 1-grams are letters or characters, also called unigrams, 2-grams are called bigrams or digraphs, and 3-grams are called trigrams. In some applications entire words, sentences or other tokens are used as grams.

Assumption of Independence of Features

In many (actually most) classification techniques there is an assumption of independence of features. This has two important bearings on classification using n-grams.

First many classifiers 'require' a feature matrix of full column rank, so including a variable like the length of the name along with the n-gram frequencies introduces a linear dependence between the columns; coding EGAN as having length 4 along with the 1-grams E, G, A, and N, clearly introduces no new information. The same is true for bigrams EG, GA, and AN, or trigrams EGA and GAN, and so forth. Likewise coding both bigrams and trigrams introduces no new information.

Second the assumption of independence among features means that with an n-gram encoding the sequence information is lost. That is EGA and GAN are assumed to be uncorrelated, though clearly they are not (as they overlap by GA). Thus there is a potential for improvement by including positional features. One way of denoting the start and end of the string is to add a space to the gram set and delimit surname with spaces. Thus EGAN would be coded in trigrams as " EG", "EGA", "GAN", and "AN ". As space characters can be difficult to spot and problematic to parse, a hash (#) or underscore (_) is often used in its place.

Extracting the Features

Feature extraction is performed by a dedicated script (SurnameFeatures.pl).

An example command line is: perl SurnameFeatures.pl -i=sourcefile.txt -ncol=0 -dcol=5 -sp=1 -gram=2 -minfq=1 -diag=0

Where sp=1 forces the inclusion of spaces in the character set (which is otherwise a-z), as well as before and after the string, minfq sets to minimum global frequency of occurance of an n-gram for it to be included in the output, and diag=1 produces an additional frequency of occurance diagnostic file.

The script has several other useful options, including -two which generates two files, one of the index, the class (if specified through -refcol and a reference file is specified with -r) and the gram variables, and another containing the index and all other variables.

An example command line to build the two files and do the reference look-ups is:

perl SurnameFeatures.pl -i=SourceFile.txt -r=Culture-EganClassification.txt -rcol=6 -rkey=0 -rno=2 -ncol=0 -dcol=5 -rsup=1 -sp=1 -gram=2 -minfq=1 -diag=0 -two=1

Where -rsup suppresses records that do not have reference lookups, and the -rkey and -rno specify the key and class number columns in the reference file (here Culture-EganClassification.txt). For simplicity we recommend that country names are standardized to the UN standard and then used as reference keys.