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Looking for strategies on how to tokenize text for search, and some ideas on how to implement them.

Specifically, we are trying to tokenize user generated business reviews to help with our business search engine. All the code is Python.

I think we need to do at least the following:

  • Convert plural nouns to singulars
    I found a library called inflect that seems to do this well, does anyone have any experience with it?

  • Get rid of all non alpha-numeric characters
    This seems like a job for regex to me, but I'd love to hear any other suggestions

  • Tokenize based on whitespace, converting consecutive whitespace into a single whitespace
    I think this is doable with some custom string manipulation in Python, but there may be a better way.

Does anyone have any other ideas about things I'd need to do to tokenize the text? Also, what are your thoughts on the techniques and tools mentioned for implementing the strategies above?

Background info: (from comments to Dough T's suggestion about Solr or Elastic search)
We are using ElasticSearch, and we use its tools for basic tokenization. We want to do the tokenization described above separately because, after tokenization, we are going to need to apply some pretty involved semantic analysis to extract meaning from the text. We want the flexibility to tokenize exactly how we specify, and the convenience of having the tokens stored in our own format with our own data annotations attached to them.
One thing that we absolutely need is a single (large) database record for each token, accessible and modifiable on the fly, with everything relevant about that token's usage in it. I think that rules out just using ES tokenization to process them as the documents get indexed. We could maybe use the ES's analysis module to analyze the text without indexing it, then process each token individually in order to build/update the token's database record... We seek suggestions about this approach.

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1 Answer 1

up vote 5 down vote accepted

I think you want to look into a full-text search solution that provides the features you describe instead of implementing something your own in python. The two big open-source players in this space are elasticsearch and solr.

With these products you can configure fields that define custom tokenization, removal of punctuation, synonyms to aid in search, tokenization on more than just whitespace, etc etc. You can also easily add plugins to alter this analysis chain.

Here's an example of solr's schema that has some useful stuff:

Define Field Types

<fieldType class="solr.TextField" name="text_en" positionIncrementGap="100">
  <analyzer type="index">
    <tokenizer class="solr.WhitespaceTokenizerFactory"/>
    <filter class="solr.SynonymFilterFactory" synonyms="index_synonyms.txt" ignoreCase="true" expand="false"/>
    <filter class="solr.StopFilterFactory" ignoreCase="true" words="stopwords.txt"/>-->
    <filter catenateAll="0" catenateNumbers="1" catenateWords="1" class="solr.WordDelimiterFilterFactory" generateNumberParts="1" generateWordParts="1" splitOnCaseChange="1"/>
    <filter class="solr.LowerCaseFilterFactory"/>
    <filter class="solr.ASCIIFoldingFilterFactory"/>
  </analyzer>
 </fieldType>

Define a Field

<field indexed="true" name="text_body" stored="false" type="text_en"/>

You can then work with search server via a nice REST API through python or just use Solr/Elasticsearch directly.

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We are in fact using ElasticSearch, and we do use its tools for basic tokenization. We want to do this separately because, after tokenization, we are going to need to apply some pretty involved semantic analysis to get meaning from the text. We want the flexibility to tokenize exactly how we specify, and the convenience of having the tokens stored in our own format with our own data annotations attached to them. Although this logic may be misguided I suppose. –  Clay Wardell Nov 15 '12 at 18:03
    
@ClayWardell I'm mostly a Solr person, which provides you a full analysis chain for defining your own tokenization in Java. For example the tokenization of many languages is very complicated, so they have their own tokenizers in solr. As for the other prob... My colleague says you can attach whats known as a payload to tokens that has arbitrary metadata associated with the tokens. No idea on ES though. –  Doug T. Nov 15 '12 at 18:07
    
One thing that we absolutely need is a single (large) database record for each token, accessible and modifiable on the fly, with everything relevant about that token's usage in it. I think that rules out just using ES tokenization to process them as the documents get indexed. We could maybe use the ES's analysis module to analyze the text without indexing it, then process each token individually in order to build/update the token's database record... does that seem like a good idea to you? –  Clay Wardell Nov 15 '12 at 18:27
    
Could you set up an elastic search instance just to process text into tokens? Can you get the tokens out of Elasticsearch? –  Chris Dutrow Nov 15 '12 at 18:44
    
@ClayWardell elasticsearch sadly doesn't support per-token payloads currently as its based on an older version of lucene. –  Doug T. Nov 15 '12 at 20:25
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