Background Image for Strict and Permissive Analyzers

Permissive and Strict Analyzers to Filter and Boost Results in ElasticSearch

01/09/2023

ElasticSearch, a powerful and versatile search and analytics engine, has emerged as a cornerstone technology for managing and querying large-scale data with unprecedented speed and precision. However, as the size and complexity of data repositories continue to grow, so do the challenges associated with retrieving the most relevant results.

How to deal with it? You can easily optimize search outcomes by using permissive and strict analyzers to fine-tune result filtering and boosting.

The Difference Between Permissive and Strict Analyzers

Using a boolean query we can take different occurrence types. Some of them are:

  • must – The clause (query) must appear in matching documents and will contribute to the score.
  • should – The clause (query) should appear in the matching document.

Permissive query rules used in “must” can be treated like a filter that will be responsible for picking matched documents from index. It aims to broaden the scope of search results by accommodating variations in spelling, stemming, and synonyms, ensuring that users encounter a comprehensive array of relevant documents.

Strict query rules used in “should” can be treated like some kind of booster that will push documents higher in the relevancy position because matching documents will get a higher score.

How to Use it?

Let’s start from preparing permissive and strict analyzers:

“permissive": {
   "char_filter": [
       "html_strip"
   ],
   "tokenizer": "icu_tokenizer",
   "filter": [
       "english_possessive_stemmer",
       "english_stemmer",
       "custom_length"
   ]
}

And now strict analyzer:

"strict": {
   "char_filter": [
       "html_strip"
   ],
   "tokenizer": "icu_tokenizer",
   "filter": [
       "english_possessive_stemmer",
       "custom_length"
   ]
}

To keep examples as small as possible please note only one difference between permissive and strict analyzer is one additional filter “english_stemmer”.

Now let’s continue to index structure definition. In order to keep different analyzed contents inside the index we will use “fields” feature.

"name": {
   "type": "text",
   "analyzer": "permissive",
   "fields": {
       "strict": {
           "type": "text",
           "analyzer": "strict"
       }
   }
},
"description": {
   "type": "text",
   "analyzer": "permissive",
   "fields": {
       "strict": {
           "type": "text",
           "analyzer": "strict"
       }
   }
},

And finally let’s go build our query that will use “must”, “should” and different analyzers to filter out and boost results.

"query": {
 "bool": {
   "must": [
     {
       "multi_match": {
         "query": "swimming",
         "fields": [
           "name",
           "description"
         ],
         "analyzer": "permissive",
     }
   ],
   "should": [
     {
       "multi_match": {
         "query": "swimming",
         "fields": [
           "name.strict",
           "description.strict"
         ],
         "analyzer": "strict",
       }
     }
   ]
 }
}

In the example all documents that contain any kind of “swim” form of verb like “swimming”, “swim”, “swam” will be picked up by “must” rules because of permissive analyzer keep “english_stemmer” filter that will reduce english verbs to their root form. Using the same analyzer in query time will always reduce input term to root form.

On the other hand, a strict analyzer that does not have an “english_stemmer” filter will search documents that have exactly the same form as the customer is trying to search. But as a strict analyzer is used in the “should” part of the query it will not filter out products that do not match. It will give higher scores to products that match terms in the same form.

To give more ideas how to use permissive and strict methods please keep in mind that any of the available filters can be used to build different analyzers.

Good to Remember

  • Synonyms for example is also a good filter that works very well with permissive and strict analyzers.
  • On top of that please remember “should” can have multiple query rules. Each of the query rules can use a different strict analyzer.
  • Method is very flexible and very efficient in order to provide better search experience and better results to the customer.

Permissive and Strict Analyzers to Filter and Boost Results in ElasticSearch

Permissive and Strict Analyzers

ElasticSearch

The Difference Between Permissive and Strict Analyzers

What is ElasticSearch

Ja
Portrait of Jakub Wachol, back-end developer and article author, smiling and wearing glasses, with a professional and friendly appearance, against a white background.
Jakub Wachol
Back-end Developer

Latest articles

Abstract visual of staff augmentation and IT body leasing workflow represented with icons for collaboration, vision, and goals on a light blue background.

Business | 31/01/2025

Can Staff Augmentation Service Be Affordable?

Agata Pater

The evolution of the global talent market and modern recruitment processes has made it possible to access top tech talent without breaking the bank. Staff augmentation services can be remarkably cost-effective when compared to traditional hiring methods, especially when considering the hidden costs of maintaining an in-house team.

Read more
Illustrative preview of DeepSeek AI logo featuring a stylized whale icon on a turquoise background with abstract design elements.

Innovations | 29/01/2025

DeepSeek AI: The Chinese AI App That’s Challenging OpenAI

Bernhard Huber

At its core, DeepSeek differentiates itself through its commitment to open-source development, making its technology more accessible to developers and researchers worldwide, much like OpenAI's approach. This approach stands in contrast to the more closed systems of some competitors, creating a collaborative environment for AI advancement, similar to the open source movement. 

Read more
Illustrative design featuring arrows, charts, and a collaborative icon on a blue background, symbolizing growth and success in staff augmentation solutions.

Business | 23/01/2025

How to Find the Right Staff Augmentation Partner?

Agata Pater

According to recent industry research, approximately 78% of global companies utilize staff augmentation services to accelerate their development projects and meet tight deadlines. Staff augmentation offers a strategic advantage by providing access to a managed service that can adapt to your changing needs. This growing trend reflects the challenging reality many businesses face: finding and retaining in-house tech talent has become increasingly competitive and costly.

Read more